Skip to Main Content
Purpose

Off-site construction (OSC) methods are proposed as a viable improvement to traditional construction with the potential to deliver higher quality products, faster construction times, and reduced project costs. This study aims to provide an insight into the precast concrete manufacturing process (PMP) and the possibility to improve productivity and increase viability of its adoption through realizing its potential benefits.

Design/methodology/approach

We collected empirical data from a medium sized Australian precast concrete company and analysed using a system dynamics (SD) modelling approach. The labour productivity and profitability were simulated for different sensitivity scenarios across five (5) main PMP activities: reinforcement, formwork, concreting, finishing, and crane operation.

Findings

The results revealed the main bottleneck activity hindering the productivity of PMP as reinforcement. Overtime allocation was identified as the most economical solution compared to increasing the crew size, for a potential fast-tracking scenario. Higher profitability can be achieved by significantly increasing the production throughput by at least 40% as sunk costs are better distributed.

Originality/value

Limited research exists quantifying actual data from industry for labour productivity measurement, and cost investigations, especially for the PMP for concrete products. This paper fulfils this gap through the proposed flexible and robust SD models tested using empirical data.

Traditional construction is highly labour intensive where 20–35% of the total project budget is generally due to labour costs (Jarkas and Bitar, 2012; Jayathilaaka et al., 2022). Complexity and uncertainties associated with weather and unknown or differing site conditions, material price inflation, supplier and subcontractor issues, and design and contractual complications can significantly influence the labour productivity (Arja et al., 2009; Kimiagari and Keivanpour, 2019). Construction projects also frequently suffer from schedule and cost overruns. On average, schedule delays were encountered in 74% of projects (Rivera et al., 2016) and cost overruns in almost 80–90% of construction projects (Flyvbjerg et al., 2004; Mao et al., 2016). Hamza et al. (2022) and Johansen and Wilson (2006) argued the main reason for these issues as the low levels of productivity corresponding to construction activities. The industry also suffers from sluggish growth in labour productivity in the last few decades (Assaad et al., 2023). For example, the global annual average growth in construction labour productivity (CLP) estimated over the last two decades was only 1%, whereas in manufacturing sector, productivity increased by 3.6% (Barbosa et al., 2017). Investigations of US construction industry (Sveikauskas et al., 2016) confirmed these results with long-term productivity growth estimations of 1.1%–1.6% for residential housing, 0.5% for highways, and 2.7% for industrial construction.

Off-site construction (OSC) is arguably the most common and feasible alternative construction method that can improve productivity issues and deliver quality products cheaper and faster (Assaad et al., 2020). OSC is comprised of several processes from fabrication of individual components, sections, or entire modules in a controlled environment at an off-site manufacturing facility to on-site assembly of these produced elements (Murray-Parkes et al., 2017). It should be noted that there are different terms used to describe OSC – modular construction, industrialized construction, volumetric construction, panelized construction, prefabrication etc. We will use the term OSC as the overarching term for the rest of this paper. OSC methods moved from more traditional prefabrication to more advanced manufacturing methods to encompass manufacturing of standardized and repeatable elements with additional potential for automation, digitalization and robotization, and continuous improvement (Attouri et al., 2022). OSC methods have the potential to considerably minimize schedule and cost uncertainties of a construction project. They provide the opportunity to construct sustainable building structures with standardized elements with higher quality with improved productivity and reduced costs (Hanafi et al., 2015). This productivity improvement was argued to be possible due to the less complicated nature and reduced labour dependency during manufacturing and on-site assembly processes (Blismas et al., 2006). Precast concrete was identified as the most extensively used material for OSC due to its wide applicability for different building elements, higher efficiency, and durability (Smith, 2010). Smith (2016) discussed the potential of OSC using precast concrete to improve productivity by 30% when compared to traditional on-site construction methods.

Productivity of OSC differs from construction labour productivity (CLP), but the topic of schedule and productivity and the associated costs for traditional in situ construction has been subjected to extensive research (Rathnayake and Middleton, 2023; Wang et al., 2023). Chen and Samarasinghe (2020) and Durdyev and Ismail (2019) argued that there are major differences between OSC and traditional construction methods across areas such as design, manufacturing, supply chain, and on-site assembly. Therefore, the main factors influencing CLP and measurement techniques for traditional construction must be modified for successful adoption in OSC. Previous literature identified the manufacturing process as the main bottleneck for OSC (Wang et al., 2018) with high potential to improve overall productivity as 75–90% of total work done for precast projects during this stage (Cameron and Di Carlo, 2007; Joshi, 2021). In terms of total project costs, 70–75% of costs incur during manufacturing phase (including transportation) whereas design and planning and on-site assembly accounts for the remaining expenses (Mao et al., 2016). Therefore, it is critical to investigate the productivity for different activities in manufacturing stage and improve the process such that all aspects of cost, schedule, and quality are managed optimally (Mao et al., 2015; Wuni et al., 2022). Limited studies have been carried out quantifying empirical industry data for OSC and it is even scarcer for the precast concrete manufacturing process (PMP). This study focused on productivity and cost investigations for the manufacturing stage of OSC process using a system dynamic (SD) modelling approach. We chose this approach as it is a widely used and accepted method to measure productivity for construction processes (Khanzadi et al., 2018; Al-Kofahi et al., 2022). The validity of the proposed model was tested using actual industry data from a medium-scale precast manufacturing factory in Australia.

This paper addresses a gap in labour productivity related studies in precast manufacturing process using actual industry data and provides insights into its main bottlenecks, process improvement, and profit maximization. The main research question of the study is: How can System Dynamics (SD) modelling be utilized to identify constraints affecting labour productivity in precast concrete manufacturing, simulate productivity under different scenarios, and optimize overall profitability? The three main objectives of the research study are:

  1. Identify and analyse the key constraints affecting labour productivity in precast concrete manufacturing, including operational, logistical, and workforce-related factors.

  2. Develop a System Dynamics (SD) model for the precast manufacturing process, and to simulate labour productivity under various scenarios to evaluate potential improvements.

  3. Design a SD cost model for the overall precast concrete manufacturing process, and to identify and evaluate optimal scenarios for maximizing profitability through simulation.

Construction activities are complex, and each individual activity is unique from project to project (Song and Abourizk, 2008; Chapman et al., 2010). Hence, the interpretation of labour productivity in construction industry is ambiguous in nature, and it’s difficult to provide a standard definition due to the variation of productivity trends in the field (Allmon et al., 2000) although there exists certain industry accepted benchmarking standards such as RSmeans used in United States. In general, construction productivity is defined as the ratio between total input of resources, and total output of units and is measured at varying levels of detail for different processes (Song and Abourizk, 2008). Industry professionals also define CLP as a ratio between earned worker-hours and expended worker-hours, where worker-hours is a unit of measure that represents the amount of work performed by one worker in one hour (Hanna et al., 2005). In this study, we defined labour productivity as the units of work produced per man-hour as a measure of physical production throughput. The main units of measurement used in this study are output per labour hour (Units/Worker-hrs) and output per total production cost (AUD/Units) for PMP.

The controlled manufacturing environment provided by PMP can potentially increase productivity when compared to in situ methods (Chen et al., 2016). In a factory setting, production operations can be rescheduled or re-sequenced, and workstation can be reconfigured according to different requirements. It is more likely that there is a relatively stable workforce with better training and predictable productivity. The PMP provides the possibility of using standardized components which allows manufacturers to hire semi-skilled workers who can perform well-defined task at an assigned workstation efficiently in comparison to skilled labour requirement for traditional methods (Smith, 2010). On the other hand, worker productivity fluctuations and machinery or equipment downtime can have a negative impact on PMP resulting in lower labour productivity (Azhar et al., 2013). Arashpour et al. (2018) and Nasirian et al. (2019) argued inefficient use of available resources, and inability to reallocate workforce dynamically from one production stage to another has also led to significant losses in overall productivity.

We framed the PMP under five main manufacturing activities reinforcement, formwork, concreting, finishing, and crane operation, using literature (Chen et al., 2020b; Reichenbach and Kromoser, 2021), feedback from industry professionals and field observations. This study integrates SD modelling to simulate and analyse the impact of various productivity constraints and cost factors unique to precast concrete manufacturing. The study’s scenario-based sensitivity analysis provides practical insights into how varying factors (such as crew size and overtime allocation) affect productivity and cost. Further, it provides a deeper understanding of the specific bottlenecks within the precast manufacturing process. These specialized applications have not been extensively explored in the literature, making it a novel contribution. The originality of this study is further enhanced by the use of actual industry data from a medium-scale precast manufacturing company to test the SD model.

Studies exist on different factors and their negative impact on labour productivity in the construction, mostly for traditional methods (Nasirzadeh and Nojedehi, 2013; Hamza et al., 2022). As PMP processes are similar to traditional construction, we relied on a semi-systematic literature review of construction productivity research and interviews of precast industry experts to accommodate for potential differences with PMP to create a list of factors affecting labour productivity (Table 1). Thirty-two (32) factors were extracted factors and categorized into five main themes: technical, workforce, supply chain and logistics, management and planning, and external factors based on content analysis process and were validated by precast industry experts. These factors identified from literature were ranked according to its impact on the productivity based on the perception of six precast industry experts to ensure that they accurately reflected the practical setting.

Table 1

Factors influencing labour productivity in PMP

CategoryCodeFactors affecting labour productivityImpact rankingReferences
TechnicalT1Delays in receiving engineering drawings1Navon (2005), Alinaitwe et al. (2007), Dai et al. (2009a), Nasirzadeh and Nojedehi (2013), Chigara and Moyo (2014), El-Gohary and Aziz (2014), Hickson and Ellis (2014), Jarkas (2015), Porntepkasemsant and Charoenpornpattana (2015), Lee and Ham (2018), Reichenbach and Kromoser (2021), Assaad et al. (2023) 
T2Design complexity2
T3Insufficient co-ordination between manufacturer and designer3
T4Low level of standardization4
T5Design errors or revisions5
T6Ambiguous client specificiations6
T7Manufacturing errors and reworks7
T8Low level of automation8
WorkforceW1Worker Fatigue1Gomar et al. (2002), Jarkas and Bitar (2012), O’Neill and Panuwatwanich (2013), El-Gohary and Aziz (2014), Halwatura (2015), Durdyev et al. (2018), Nasirian et al. (2019), Parody et al. (2020), Assaad et al. (2023), Rathnayake and Middleton (2023) 
W2Unsatisfactory worker skill level2
W3Low level of experience3
W4Insufficient training4
W5Unsatisfactory salary5
W6Low job security6
W7Delay in payment7
Supplychain and LogisticsS1Work area congestion1Moselhi et al. (2005), Jarkas and Bitar (2012), Yi and Chan (2014), Zeb et al. (2015), Hiyassat et al. (2016), Arashpour et al. (2017), Ibbs et al. (2017), Durdyev et al. (2018), Hasan et al. (2018), Choi et al. (2020), Hamza et al. (2022) 
S2Poor factory logistics2
S3Machinery and worker idle times3
S4Material shortage4
S5Supplier delivery delays5
S6Material procurement delays6
Management and PlanningM1Increase in crew size1Mahamid et al. (2013), El-Gohary and Aziz (2014), Robles et al. (2014), Halwatura (2015), Jarkas (2015), Hiyassat et al. (2016), Gurmu and Aibinu (2017), Kisi et al. (2017), Ghodrati et al. (2018), Wang et al. (2018), Assaad et al. (2023), Dabirian et al. (2023) 
M2Insufficient labour supervision level2
M3Overtime allocation3
M4Inefficient planning and schedule pressure4
M5Top management incompetency5
M6Production delays6
M7Fast tracking7
ExternalE1Adverse temperatures1Liberda et al. (2003), Arja et al. (2009), Chigara and Moyo (2014), El-Gohary and Aziz (2014), Hickson and Ellis (2014), Jarkas (2015), Gupta et al. (2018), Hasan et al. (2018) 
E2Worker absenteeism2
E3Factory safety issues3
E4Worker injuries4

Source(s): Authors’ own creation

In most scenarios, more than one factor contributes towards the loss in construction productivity. For example, previous studies identified that factors such as worker fatigue, overtime allocation and work area congestion may adversely influence overall productivity simultaneously (Assaad et al., 2023). The improved understanding of these factors and their impact on productivity, provides management with opportunity to efficiently allocate their limited resources, better support workers, and increase their commitment to productivity improvement (Dai et al., 2009b).

The sample selection for the interviews was performed by firstly identifying 17 medium or large-scale precast companies in Australia through the prefabrication Australia website (Prefabaus, 2023) and by manual google search. These companies were then contacted using email or LinkedIn profiles. Eight (8) companies responded, and six (6) interviewees were selected from these and two (2) were excluded based on two main criteria: managerial level designation, with a minimum of 10 years’ experience in precast industry (Table 2). For field observations the sample was limited due to limited precast companies in Australia and location constraints for the researcher. We identified four potential companies from the directory and conducted on-site factory visits and meetings to determine their suitability and willingness for participation. From this sample we selected a fully operational medium-scale precast company which was willing to provide data for the SD model. The sampling adequacy was established as there were no new factors identified after 4 interviews from industry experts reaching saturation.

Table 2

Demographics of the interviewees

TitleExperienceLocationCapacity (/day)Activity area
1Business Manager30 yearsMelbourne150–175Residential, Commercial, Road, Rail
2CEO22 yearsBrisbane15–20Residential
3General Manager18 yearsBrisbane25–35Residential, Commercial
4QA/QC Manager17 yearsSydney30–35Residential, Commercial
5General Manager15 yearsMelbourne40–50Residential, Commercial
6Production Manager11 yearsMelbourne25–30Residential

Source(s): Authors’ own creation

For field observation we considered each key activity or task within the production process as a sampling unit (e.g. the reinforcement of a panel, or the setting up of formwork). We used a time-interval sampling technique to observe production between 10–15 panels/day for a week to account for variability in worker performance, shifts, and other external factors (e.g. material availability, delay in drawings). A structured observation checklists was used to record the time taken for each task, interruptions, workforce distribution, and resource usage and the findings were verified with production data from factory.

We adopted a system dynamics (SD) modelling approach to simulate the labour productivity in the precast concrete manufacturing process. SD was first introduced by Forrester (1997) and incorporates a dynamic system which can effectively simulate the interactions of different variables changes over time (Mawdesley and Al-Jibouri, 2009). SD provides a comprehensive approach by modelling feedback loops, delays, and accumulations in a system (Sterman, 2002). This is crucial in precast manufacturing where processes are interdependent and changes in one part of the system can have cascading effects (Ogunlana et al., 2003; Lim et al., 2020). SD modelling uses different diagramming tools such as causal loop diagrams (CLD) and stock and flow diagrams (SFD) to capture the structure of the respective systems (Sterman, 2002). Other simulation methods may not inherently model feedback loops or causal relations. For instance, Genetic Algorithms (GA), Particle-Swarm Optimization (PSO), and Machine Learning models like Artificial-Neural Networks (ANN) focus more on optimization rather than understanding system behaviour. This objective-oriented simulation method of SD enables modelling complex precast manufacturing activities and associated factors (Khanzadi et al., 2018). Further SD is designed to handle time delays and stocks/flows, which are important in manufacturing systems where changes take time to propagate through the system. Whereas as in many techniques, such as GA and ANN, operate more statically or in discrete steps, which might not effectively capture the time-dependent nature of precast manufacturing processes. Most of these optimization methods have inherent limitations due to assumptions made, high sensitivity to initial parameters and premature convergence. The summary of construction labour productivity simulation and modelling methods used in previous research is presented through Table 3.

Table 3

Construction labour productivity simulation methods

LiteratureLabour productivity simulation method/s used
SDDESGAABMANNFuzzy modelRegressionDematelPSO
Abourizk (2010)         
Afifi et al. (2022)          
Al-Bazi and Dawood (2012)         
Alrefaie et al. (2023)         
Alvanchi et al. (2012)         
Bhilwade et al. (2023)         
Chen et al. (2019)         
Dabirian et al. (2023)         
Ebrahimi et al. (2020)        
Ebrahimi (2021)        
Fayek and Tsehayae (2012)         
Golnaraghi et al. (2020)         
Khanzadi et al. (2018)        
Lee et al. (2014)         
Mawdesley and Al-Jibouri (2009)         
Nasirzadeh and Nojedehi (2013)         
Nasirzadeh et al. (2020)         
Palikhe et al. (2019)        
Parchami Jalal and Shoar (2019)        
Tsehayae and Fayek (2016)        
Yuan et al. (2020)         

Source(s): Authors’ own creation

SD has been successfully used across previous research studies to model productivity for traditional construction projects (Mawdesley and Al-Jibouri, 2009; Khanzadi et al., 2018). Additionally, it was used to study specific aspects of precast manufacturing such as the impact of change orders (Al-Kofahi et al., 2022), and impact of yard stock and inventory management on productivity (Lim and Kim, 2023). In this study CLD was used to identify and qualitatively model the relationships of different factors on productivity and construct the SD productivity model. SFD was used for the SD cost model as it can identify and differentiate between stock and flow variables flows whereas causal loops do not (Sterman, 2002). Modelling and simulation were conducted in Stella Professional version 2.1.3 software (ISEE Systems, 2021).

We constructed a preliminary checklist using a semi-systematic literature review and open-ended interviews from industry experts. The literature review was carried out across established databases and academic libraries relevant to the construction field (SCOPUS, ASCE library and Google Scholar) using key word search. The inclusion criteria for literature for the research study were (1) Only studies directly related to labour productivity in precast concrete manufacturing or closely related fields were included (2) it is published in a peer-reviewed journal (3) Only publications after year 2000 were considered. The articles were screened for relevance and a manual snowballing was carried out to include articles missed during initial screening. Content analysis was incorporated for the collected qualitative data from the literature review and expert feedback from open-ended interviews to identify the different themes and factors. The data was coded, and the frequency or relevance of each factor was analysed using NVivo software. A preliminary checklist was constructed using the content analysis process under five (5) themes and was verified by the experts for accuracy. A preliminary checklist of factors was created for different themes which was verified by the experts and then ranked by them based on their perception of the level of impact on productivity (Figure 1). The means of the rankings were used for the final impact ranking of the factors. These rankings were cross-checked with literature for accuracy. The causal relationships between the different factors were also identified through content analysis process. Based on this analysed data, we constructed the CLD and mapped out the links of productivity factors for PMP. The initial CLD was reviewed by industry experts and their feedback was incorporated to refine the diagram, ensuring that it accurately represented the complex interactions within the PMP.

Figure 1
A vertical flowchart showing seven stages of P M P productivity modeling and analysis.The flow begins from the top box labeled “Stage 1: Identifying factors for productivity loss in P M P.” To the right of this box, another box labeled “Literature” and “Interviews of precast professionals” is shown with a leftward arrow pointing to “Stage 1.” A downward-pointing arrow extends from “Stage 1” to the second box below, labeled “Stage 2: Develop Causal Loop Diagram for productivity in P M P.” From “Stage 2,” a downward arrow connects to the next box labeled “Stage 3: Identifying main precast activities or processes.” To the right of “Stage 3,” a box labeled “Literature,” “Interviews,” and “Field observations” is shown with a leftward arrow pointing to “Stage 3.” A downward arrow from “Stage 3” leads to the next box labeled “Stage 4: Develop S D Model for Labour Productivity of P M P.” From this box, the flow continues downward to “Stage 5: Investigation of cost and revenue associated with P M P.” To the right of “Stage 5,” a box labeled “Literature,” “Interviews,” and “Field observations” is shown with a leftward arrow pointing to “Stage 5.” A downward-pointing arrow connects “Stage 5” to “Stage 6: Develop S D cost and profitability model for P M P.” From “Stage 6,” a downward arrow points to “Stage 7: Application of models for actual case-study data.” To the right of “Stage 7,” a text box labeled “Medium-scale precast manufacturer (Australia)” is shown with a leftward arrow pointing to “Stage 7.” A dashed arrow arises from “Stage 2: Develop Causal Loop Diagram for productivity in P M P” and points to “Stage 6: Develop S D cost and profitability model for P M P.” A dashed arrow also arises from “Stage 3: Identifying main precast activities or processes” and points to “Stage 5: Investigation of cost and revenue associated with P M P.” A solid arrow arises from “Stage 3: Identifying main precast activities or processes” and points to “Stage 7: Application of models for actual case-study data.”

Labour productivity and cost modelling stages using SD approach. Source: Authors’ own creation

Figure 1
A vertical flowchart showing seven stages of P M P productivity modeling and analysis.The flow begins from the top box labeled “Stage 1: Identifying factors for productivity loss in P M P.” To the right of this box, another box labeled “Literature” and “Interviews of precast professionals” is shown with a leftward arrow pointing to “Stage 1.” A downward-pointing arrow extends from “Stage 1” to the second box below, labeled “Stage 2: Develop Causal Loop Diagram for productivity in P M P.” From “Stage 2,” a downward arrow connects to the next box labeled “Stage 3: Identifying main precast activities or processes.” To the right of “Stage 3,” a box labeled “Literature,” “Interviews,” and “Field observations” is shown with a leftward arrow pointing to “Stage 3.” A downward arrow from “Stage 3” leads to the next box labeled “Stage 4: Develop S D Model for Labour Productivity of P M P.” From this box, the flow continues downward to “Stage 5: Investigation of cost and revenue associated with P M P.” To the right of “Stage 5,” a box labeled “Literature,” “Interviews,” and “Field observations” is shown with a leftward arrow pointing to “Stage 5.” A downward-pointing arrow connects “Stage 5” to “Stage 6: Develop S D cost and profitability model for P M P.” From “Stage 6,” a downward arrow points to “Stage 7: Application of models for actual case-study data.” To the right of “Stage 7,” a text box labeled “Medium-scale precast manufacturer (Australia)” is shown with a leftward arrow pointing to “Stage 7.” A dashed arrow arises from “Stage 2: Develop Causal Loop Diagram for productivity in P M P” and points to “Stage 6: Develop S D cost and profitability model for P M P.” A dashed arrow also arises from “Stage 3: Identifying main precast activities or processes” and points to “Stage 5: Investigation of cost and revenue associated with P M P.” A solid arrow arises from “Stage 3: Identifying main precast activities or processes” and points to “Stage 7: Application of models for actual case-study data.”

Labour productivity and cost modelling stages using SD approach. Source: Authors’ own creation

Close modal

The main activities or processes of PMP were investigated through literature and field observations and were verified by interviews from precast professionals in Australia. Using the CLD and findings from investigations, a detailed SD model was developed incorporating the five main PMP activities. A comprehensive SD stock and flow cost model was constructed to investigate on the costs (direct and indirect) and revenue for the overall PMP. Using these models, productivity and cost simulations were carried out and analysed for different sensitivity scenarios using actual industry data from a medium scale precast manufacturing company case-study.

The verification of the CLD framework and SD model structures were performed through interviews of precast concrete industry professionals in Australia. The input variables used for SD models were extracted from empirical data of a medium scale precast concrete manufacturer in Australia (Table 4).

Table 4

Input variables used in the SD models

Variable nameValueUnit
Daily normal working hours8Hours
Baseline production throughput175Units/week
Total production crew size22Worker
Total worker-hrs (reinforcement) : Baseline448Worker-hrs/week
Total worker-hrs (formwork)364Worker-hrs/week
Total worker-hrs (concreting)154Worker-hrs/week
Total worker-hrs (finishing)56Worker-hrs/week
Total worker-hrs (crane operator)56Worker-hrs/week
Average normal labour rate (reinforcement)80AUD/hour
Average normal labour rate (formwork)85AUD/hour
Average normal labour rate (concreting)80AUD/hour
Average normal labour rate (finishing)75AUD/hour
Average normal labour rate (crane operator)120AUD/hour
Average overtime labour rate (r/f, formwork, concreting)120AUD/hour
Average overtime labour rate (crane operator)180AUD/hour
Average overtime labour rate (finishing)110AUD/hour
Reinforcement material cost: Baseline108,500AUD/week
Formwork material cost7,875AUD/week
Concreting material cost82,824AUD/week
Finishing material cost13,125AUD/week
Other material cost (grout tubes, inserts etc.)5,250AUD/week
Factory overheads5,700AUD/week
Management team salaries and O/H30,000AUD/week
Transport cost to sites9,460AUD/week
Material delivery cost to factory750AUD/week
Labour cost (loading)2,240AUD/week
Price per unit2,500AUD

Source(s): Authors’ own creation

We derived the SD model equations from investigation of previously established and verified definitions of productivity and cost for construction and manufacturing industries (Equations (1)-(5)). The total worker hours (TWHn) is the sum of normal work hours (NWH) for reinforcement (rf), formwork (fw), concreting (co), crane (cr), and finishing (fi) activities. (TWHo) is the sum of overtime work hours (OWH) for these activities. The labour productivity (LP) is presented as a function of total production throughput (TPT), TWHn, TWHo, and productivity loss (PL). Where, the PL is the sum of losses from fatigue (F), crew size increase (CS), and work area congestion (WC). The total production cost is derived using the sum of direct and indirect production costs. Potential profit or loss is calculated using the difference of total revenue generated for the unit price (P) and TPC ( Appendix: Table A1).

(1)
(2)
(3)

Where,  PL=(Floss+CSloss+WCloss)

(4)
(5)

The model testing and verification were carried out to identify errors in the proposed model, understand the limitations, fix these errors, and develop the best available model to be applied for the research problem scenario. Five tests suggested by Sterman (2002): dimensional consistency, boundary adequacy, parameter verification, structure verification, and extreme condition were performed to verify the SD simulation model.

Dimensional consistency: The consistency of units was checked for the developed models using the software and the dimensions were confirmed. For further verification, we individually checked the accuracy of dimensions of variables and constants used in the mathematical functions to formulate the SD models.

Boundary adequacy: The adequacy test was performed to identify whether the fundamental ideas for solving the problem are endogenous to the model. The significant variables used in the two models (productivity and cost) such as total normal worker-hrs, total overtime worker-hrs, labour cost, material cost, transportation cost were all generated endogenously. Few variables like average selling price and factory overhead costs are exogenous variables. These variables incorporated in the models have been conceptualized and established for construction as well as precast industry. In this model the change in behaviour is consistent with the expected outcome from boundary relaxation.

Parameter verification: The parameter values used in the model building are consistent with body of knowledge of the precast construction industry. The values provided for the model were based on an actual case-study from a medium scale precast factory in Australia and were confirmed through expert interviews. The parameters such as crew size, overtime, production throughput and different cost parameters were all verified from case-study data and interviews. The critical production loss factors: fatigue, increase in crew size, work area congestion values were extracted from previous literature and applied to the model.

Structure verification: This test determines the consistency of the model when compared to the real system in question. For example, in this model once the crew size or the overtime is changed the productivity of the activities, and the labour cost is changed accordingly (Table 6). This change is also affected to the final stock and flow cost model where the total cost to produce a unit and final profit/loss of the company is adjusted subsequently (Table 7). As discussed in parameter verification all the variables used in the model has its real-life counterparts and thus further verifying the model structure.

Table 6

SD simulation results for labour productivity for precast manufacturing process

ThroughputTotal normal Worker-hrsTotal overtime Worker-hrsReinforcement ProdFormwork ProdConcreting
Prod
Finishing ProdCrane ProdProd.
Loss
Overall
Prod
Percent (Baseline)Labour cost (AUD)
Baseline scenario
Production throughput (lowest labour cost at 100% capacity)1751,07800.3910.4801.1363.1253.12500.162100%90,020
Scenario 1
10% Increase in Throughput (Overtime Allocation)1931,0781500.3780.4641.1013.0543.0540.10.15595.6%107,530
Scenario 2
10% Increase in Throughput (Increase Crew Size)1931,55400.3060.3380.7511.3961.3960.10.12476.5%122,150
Scenario 3
10% Decrease in Throughput1581,07800.3500.4341.0192.8032.80300.14690.1%90,020
Scenario 4
20% Increase in Throughput (Overtime Allocation)2101,0783000.3630.4481.0852.9912.9910.10.14891.3%125,040
Scenario 5
20% Increase in Throughput (Increase Crew Size)2101,55400.3210.3650.7521.5511.5510.10.13583.3%129,710
Scenario 6
20% Decrease in Throughput1401,07800.3150.3840.9092.5002.50000.13080.2%90,020
Scenario 7
40% Increase in Throughput (Increase Crew and Overtime)2451,5543820.3210.3890.8332.1872.1870.20.12073.6%149,910
Scenario 8
40% Decrease in Throughput1051,07800.2340.2880.6821.8751.87500.09759.8%90,020

Source(s): Authors’ own creation

Table 7

SD simulations results for production cost and profitability model

Cost CategoryCost breakdown and Profit/Loss (AUD)
BaselineScen 1Scen 2Scen 3Scen 4Scen 5Scen 6Scen 7Scen 8
Labour costs90,020107,530122,15090,020125,040129,71090,020149,91090,020
Material costs217,574239,331239,331195,816261,088261,088174,059304,603136,544
Total direct costs307,594346,861361,481285,836386,128390,798264,079454,513226,564
Total indirect costs51,65056,81556,81549,60761,98061,98046,48567,14542,320
Average cost2,0522,0912,1672,1232,1342,1562,2182,1302,561
Profit/Loss44840933337736634428237061
Weekly Profit/Loss78,40078,93764,26959,56676,86072,24039,48090,6506,405

Source(s): Authors’ own creation

Extreme condition test: The developed models were tested under extreme conditions for the robustness. Extreme values were input into the model parameters and behaviour of the model was tested under these conditions and compared with real-life system. The simulations revealed the models behaved similar to these actual conditions of precast factories. The impact of critical variables such as overtime, crew size and production throughput on labour productivity and profitability of the company were analysed during the sensitivity scenario analysis of the model.

The manufacturing process was argued as the main bottleneck for OSC having the most significant impact on overall productivity across cost, schedule, and quality aspects (Wang et al., 2018). Typically, manufacturing constitutes of 75–90% of total work done and 75–80% of total budget allocation for a precast project (Mao et al., 2016; Joshi, 2021). We presented a detailed 18-step manufacturing process for precast concrete units through data gathered from previous literature, and interviews from precast professionals (Figure 2). The basic flow of activities is the same for all scenarios considered in the study.

Figure 2
A flowchart showing the sequential process of precast concrete production from shop drawings to site transport.The flow begins from the top box labeled “Reference of Shop Drawings.” A downward-pointing arrow leads to the next box labeled “Issued for Construction (I F C Drawings).” From “Issued for Construction (I F C Drawings),” two arrows extend downward. The first arrow leads to the box labeled “1. Production Planning and Bed Optimization,” while the second arrow leads to the box labeled “2. Ordering of Reinforcement Cages.” From “1. Production Planning and Bed Optimization,” a downward-pointing arrow leads to the box labeled “3. Manufacturing of Formwork (F and W).” From “3. Manufacturing of Formwork (F and W),” a downward arrow points to the box labeled “4. Formwork Marking and Assembly.” From “4. Formwork Marking and Assembly,” a downward arrow leads to the box labeled “6. Marking for Embedded Components.” From “6. Marking for Embedded Components,” a downward arrow leads to a diamond-shaped box labeled “7. Q A and Q C Inspection (F and W and Markings).” From “7. Q A and Q C Inspection (F and W and Markings),” a downward arrow labeled “Satisfactory” leads to the box labeled “8. Placing of Reinforcement Cages,” and a leftward arrow labeled “Unsatisfactory” points back to the box labeled “4. Formwork Marking and Assembly.” From “2. Ordering of Reinforcement Cages,” a downward-pointing arrow leads to the box labeled “5. Cutting and Fabrication for Specifications.” From “5. Cutting and Fabrication for Specifications,” a downward arrow arises and leads to “8. Placing of Reinforcement Cages.” From “8. Placing of Reinforcement Cages,” a downward arrow leads to the box labeled “9. Placing of Embedded Components.” From “9. Placing of Embedded Components,” a downward arrow leads to a diamond-shaped box labeled “10. Final Q A and Q C Inspection before Pouring.” From “10. Final Q A and Q C Inspection before Pouring,” a downward arrow labeled “Satisfactory” leads to the box labeled “11. Concrete Pouring and Compaction,” and a leftward arrow labeled “Unsatisfactory” points back to the box labeled “8. Placing of Reinforcement Cages.” From “11. Concrete Pouring and Compaction,” a downward arrow leads to the box labeled “12. Removal of Formwork (After 5 hours).” From “12. Removal of Formwork (After 5 hours),” a downward arrow leads to the box labeled “14. Curing of Panels on Beds (12 to 18 hours).” From “14. Curing of Panels on Beds (12–18 hours),” a rightward arrow points to the box labeled “15. Panels Moved to Temporary Storage Area.” From “15. Panels Moved to Temporary Storage Area,” an upward arrow leads to the box labeled “16. Repair and Finishing Work.” From “16. Repair and Finishing Work,” an upward arrow leads to the box labeled “17. Labelled and Moved to Main Storage Area.” From “17. Labelled and Moved to Main Storage Area,” an upward arrow leads to the box labeled “18. Transport to Project Sites.” A leftward arrow extends from “12. Removal of Formwork (After 5 hours)” and leads to the box labeled “13. Cleaning of Formwork and Beds.” From “13. Cleaning of Formwork and Beds,” an upward arrow arises and points to the box labeled “Formwork Storage Area.” From “Formwork Storage Area,” an upward arrow arises and points to the box labeled “Formwork Fabrication Area.” From “Formwork Storage Area,” a right-pointing arrow arises and points to “4. Formwork Marking and Assembly.” From “3. Manufacturing of Formwork (F and W),” a left-pointing arrow arises and points to “Formwork Fabrication Area.”

Process flow diagram for a typical precast manufacturing factory. Source: Authors’ own creation

Figure 2
A flowchart showing the sequential process of precast concrete production from shop drawings to site transport.The flow begins from the top box labeled “Reference of Shop Drawings.” A downward-pointing arrow leads to the next box labeled “Issued for Construction (I F C Drawings).” From “Issued for Construction (I F C Drawings),” two arrows extend downward. The first arrow leads to the box labeled “1. Production Planning and Bed Optimization,” while the second arrow leads to the box labeled “2. Ordering of Reinforcement Cages.” From “1. Production Planning and Bed Optimization,” a downward-pointing arrow leads to the box labeled “3. Manufacturing of Formwork (F and W).” From “3. Manufacturing of Formwork (F and W),” a downward arrow points to the box labeled “4. Formwork Marking and Assembly.” From “4. Formwork Marking and Assembly,” a downward arrow leads to the box labeled “6. Marking for Embedded Components.” From “6. Marking for Embedded Components,” a downward arrow leads to a diamond-shaped box labeled “7. Q A and Q C Inspection (F and W and Markings).” From “7. Q A and Q C Inspection (F and W and Markings),” a downward arrow labeled “Satisfactory” leads to the box labeled “8. Placing of Reinforcement Cages,” and a leftward arrow labeled “Unsatisfactory” points back to the box labeled “4. Formwork Marking and Assembly.” From “2. Ordering of Reinforcement Cages,” a downward-pointing arrow leads to the box labeled “5. Cutting and Fabrication for Specifications.” From “5. Cutting and Fabrication for Specifications,” a downward arrow arises and leads to “8. Placing of Reinforcement Cages.” From “8. Placing of Reinforcement Cages,” a downward arrow leads to the box labeled “9. Placing of Embedded Components.” From “9. Placing of Embedded Components,” a downward arrow leads to a diamond-shaped box labeled “10. Final Q A and Q C Inspection before Pouring.” From “10. Final Q A and Q C Inspection before Pouring,” a downward arrow labeled “Satisfactory” leads to the box labeled “11. Concrete Pouring and Compaction,” and a leftward arrow labeled “Unsatisfactory” points back to the box labeled “8. Placing of Reinforcement Cages.” From “11. Concrete Pouring and Compaction,” a downward arrow leads to the box labeled “12. Removal of Formwork (After 5 hours).” From “12. Removal of Formwork (After 5 hours),” a downward arrow leads to the box labeled “14. Curing of Panels on Beds (12 to 18 hours).” From “14. Curing of Panels on Beds (12–18 hours),” a rightward arrow points to the box labeled “15. Panels Moved to Temporary Storage Area.” From “15. Panels Moved to Temporary Storage Area,” an upward arrow leads to the box labeled “16. Repair and Finishing Work.” From “16. Repair and Finishing Work,” an upward arrow leads to the box labeled “17. Labelled and Moved to Main Storage Area.” From “17. Labelled and Moved to Main Storage Area,” an upward arrow leads to the box labeled “18. Transport to Project Sites.” A leftward arrow extends from “12. Removal of Formwork (After 5 hours)” and leads to the box labeled “13. Cleaning of Formwork and Beds.” From “13. Cleaning of Formwork and Beds,” an upward arrow arises and points to the box labeled “Formwork Storage Area.” From “Formwork Storage Area,” an upward arrow arises and points to the box labeled “Formwork Fabrication Area.” From “Formwork Storage Area,” a right-pointing arrow arises and points to “4. Formwork Marking and Assembly.” From “3. Manufacturing of Formwork (F and W),” a left-pointing arrow arises and points to “Formwork Fabrication Area.”

Process flow diagram for a typical precast manufacturing factory. Source: Authors’ own creation

Close modal

The most critical bottleneck activities for precast manufacturing process impacting the labour productivity identified by industry professionals were reinforcement cutting and fabrication (Step 5) (Kim et al., 2020, 2021; Gusmao Brissi et al., 2022) and concrete curing (Step 14) (Ramezanianpour et al., 2013; Alghazali et al., 2020). The reinforcement requirements vary for different projects and within the project itself and further need arises to custom tie and pre-tie for most of units. Considerable reinforcement tying work and additional bars must be added even after the reinforcement cages are placed inside moulds. Minimum curing requirement of 12 hrs is also a limiting factor for labour productivity at the factory as units cannot be shifted from beds to storage area before specific strength parameters are achieved. Additionally, formwork and concreting pouring and finishing activities have been identified as having a significant bearing on the overall manufacturing labour productivity (Lee and Ham, 2018; Reichenbach and Kromoser, 2021). In this study the authors investigated five (5) manufacturing processes: reinforcement, formwork, concreting, crane operation, and finishing using SD modelling approach. These activities were selected due to their high impact on labour productivity and the potential to control and improve when compared to activities such as curing.

We carried out a preliminary investigation for the labour productivity and cost for these main activities using the empirical data gathered from a medium scale precast manufacturing factory in Australia (Table 5). The average daily production throughput of the factory was taken as 25 Units with a total crew size of 22 workers. For these preliminary calculations overtime allocation and the productivity losses during the process were not considered. The cycle time for the factory was estimated as 3.0 Units/hr considering an 8.0-hour daily work schedule and an average volume of 2.75 m3/Unit. The preliminary investigation identified reinforcement as the most labour-intensive activity with the lowest productivity and highest labour cost. The most expensive activity can be assumed as concreting work as a significant portion of cost is allocated for one worker although the work hours is only 35% compared to reinforcement. For an accurate interpretation of these findings, simulations have to be carried out for different sensitivity scenarios for dynamic precast manufacturing system.

Table 5

Preliminary investigation of labour productivity and cost for PMP

ActivityCrew sizeTotal daily worker-hrsProductivity (Units/Worker)Total labour cost ($/day)Cost/Worker ($/day)
Reinforcement8643.135,120640
Formwork7523.574,420631
Concreting5225.001,760352
Crane operation1825.00960960
Finishing1825.00600600

Source(s): Authors’ own creation

We investigated various productivity constraints through an extensive literature review and series of expert interviews conducted with industry professionals in the precast concrete manufacturing industry. The 32 most significant factors were grouped under five main areas and ranked according to level of influence on labour productivity (Table 1). A causal-loop diagram (CLD) was constructed incorporating these literature and expert interview findings to further analyse the inter-relationships of these main constraints identified (Figure 3).

Figure 3
A loop diagram linking factors such as technical, workforce, logistics, and management to productivity loss.The center of the figure shows the text “Productivity Loss” and “Labour Productivity.” From “Productivity Loss,” an arrow labeled with a minus sign points toward “Labour Productivity.” At the top left, the text “Technical” is shown in bold. Around “Technical,” the texts labeled “Drawing Acquiring Delays,” “Design Errors or Revisions,” “Manufacturing Errors and Rework,” “Insufficient Manufacturer and Designer Coordination,” “Low Automation Level,” “Low Standardization Level,” “Ambiguous Client Specifications,” and “Design Complexity” are arranged in a circular pattern. All these texts are interconnected with curved arrows pointing toward the central term “Technical,” and each arrow is labeled with a plus sign. From “Technical,” curved arrows labeled with plus signs extend toward “Productivity Loss.” At the top right, the text “Work Area Congestion” is shown in red. Above “Work Area Congestion,” the bold text “Supply Chain and Logistics” is displayed. Around “Supply Chain and Logistics,” the texts labeled “Material Procurement Delays,” “Supplier Delivery Delays,” “Machinery and Worker Idle Time,” “Material Shortage,” and “Poor Factory Logistics” are arranged. Curved arrows interconnect these, forming a loop directed toward “Supply Chain and Logistics,” with each arrow labeled with a plus sign. From “Supply Chain and Logistics,” an arrow labeled with a plus sign points toward “Work Area Congestion.” Another arrow from “Work Area Congestion,” also labeled with a plus sign, points toward “Productivity Loss.” Below “Work Area Congestion,” a group labeled “External” is shown. Around “External,” several texts are displayed, labeled “Adverse Temperatures,” “Factory Safety Issues,” “Worker Absenteeism,” and “Injuries.” Curved arrows labeled with plus signs connect these to “External,” and an arrow from “External” points toward “Productivity Loss.” All these texts are interconnected with curved arrows pointing toward the central term “External,” and each of these arrows is labeled with a plus sign. On the right side, a group labeled “Management and Planning” is shown. Around “Management and Planning,” texts are arranged and labeled “Schedule Pressure,” “Inefficient Scheduling,” “Production Delay,” “Overtime Allocation,” “Fast Tracking,” and “Insufficient Labour Supervision.” These are linked to “Management and Planning” through curved arrows labeled with plus signs. Above “Management and Planning,” a text labeled “Increase in Crew Size” is shown in red, pointing toward both “Management and Planning” and “Work Area Congestion.” From “Management and Planning,” arrows labeled with plus signs connect to both “Overtime Allocation” and “Production Delay.” At the bottom left, a group labeled “Workforce” is shown. Around “Workforce,” texts labeled “Low Job Security,” “Low Experience,” “Insufficient Training,” “Unsatisfactory Skill Level,” “Unsatisfactory Salary,” and “Payment Delays” are arranged. All these texts are interconnected with curved arrows pointing toward the central term “Workforce,” and each of these arrows is labeled with a plus sign. Above the text “Workforce,” the text “Fatigue” is present in red. From “Fatigue,” a curved arrow labeled with a plus sign connects to “Workforce.” Below “Labour Productivity,” arrows extend toward “Production Throughput,” “Crew Size,” “Total Overtime Worker-hours,” “Total Normal Worker-hours,” “Normal Daily Worker-hours,” “Daily Overtime Worker-hours,” “Normal Labour Rate,” and “Overtime Labour Rate,” which all point toward the bold text at the bottom labeled “Production Cost.” From “Total Overtime Worker-hours” and “Total Normal Worker-hours,” an upward arrow labeled with a minus sign points to “Labour Productivity.” All these texts are interconnected with curved arrows pointing toward each other, most of which are labeled with plus signs.

Causal-loop diagram for labour productivity in PMP. Source: Authors’ own creation

Figure 3
A loop diagram linking factors such as technical, workforce, logistics, and management to productivity loss.The center of the figure shows the text “Productivity Loss” and “Labour Productivity.” From “Productivity Loss,” an arrow labeled with a minus sign points toward “Labour Productivity.” At the top left, the text “Technical” is shown in bold. Around “Technical,” the texts labeled “Drawing Acquiring Delays,” “Design Errors or Revisions,” “Manufacturing Errors and Rework,” “Insufficient Manufacturer and Designer Coordination,” “Low Automation Level,” “Low Standardization Level,” “Ambiguous Client Specifications,” and “Design Complexity” are arranged in a circular pattern. All these texts are interconnected with curved arrows pointing toward the central term “Technical,” and each arrow is labeled with a plus sign. From “Technical,” curved arrows labeled with plus signs extend toward “Productivity Loss.” At the top right, the text “Work Area Congestion” is shown in red. Above “Work Area Congestion,” the bold text “Supply Chain and Logistics” is displayed. Around “Supply Chain and Logistics,” the texts labeled “Material Procurement Delays,” “Supplier Delivery Delays,” “Machinery and Worker Idle Time,” “Material Shortage,” and “Poor Factory Logistics” are arranged. Curved arrows interconnect these, forming a loop directed toward “Supply Chain and Logistics,” with each arrow labeled with a plus sign. From “Supply Chain and Logistics,” an arrow labeled with a plus sign points toward “Work Area Congestion.” Another arrow from “Work Area Congestion,” also labeled with a plus sign, points toward “Productivity Loss.” Below “Work Area Congestion,” a group labeled “External” is shown. Around “External,” several texts are displayed, labeled “Adverse Temperatures,” “Factory Safety Issues,” “Worker Absenteeism,” and “Injuries.” Curved arrows labeled with plus signs connect these to “External,” and an arrow from “External” points toward “Productivity Loss.” All these texts are interconnected with curved arrows pointing toward the central term “External,” and each of these arrows is labeled with a plus sign. On the right side, a group labeled “Management and Planning” is shown. Around “Management and Planning,” texts are arranged and labeled “Schedule Pressure,” “Inefficient Scheduling,” “Production Delay,” “Overtime Allocation,” “Fast Tracking,” and “Insufficient Labour Supervision.” These are linked to “Management and Planning” through curved arrows labeled with plus signs. Above “Management and Planning,” a text labeled “Increase in Crew Size” is shown in red, pointing toward both “Management and Planning” and “Work Area Congestion.” From “Management and Planning,” arrows labeled with plus signs connect to both “Overtime Allocation” and “Production Delay.” At the bottom left, a group labeled “Workforce” is shown. Around “Workforce,” texts labeled “Low Job Security,” “Low Experience,” “Insufficient Training,” “Unsatisfactory Skill Level,” “Unsatisfactory Salary,” and “Payment Delays” are arranged. All these texts are interconnected with curved arrows pointing toward the central term “Workforce,” and each of these arrows is labeled with a plus sign. Above the text “Workforce,” the text “Fatigue” is present in red. From “Fatigue,” a curved arrow labeled with a plus sign connects to “Workforce.” Below “Labour Productivity,” arrows extend toward “Production Throughput,” “Crew Size,” “Total Overtime Worker-hours,” “Total Normal Worker-hours,” “Normal Daily Worker-hours,” “Daily Overtime Worker-hours,” “Normal Labour Rate,” and “Overtime Labour Rate,” which all point toward the bold text at the bottom labeled “Production Cost.” From “Total Overtime Worker-hours” and “Total Normal Worker-hours,” an upward arrow labeled with a minus sign points to “Labour Productivity.” All these texts are interconnected with curved arrows pointing toward each other, most of which are labeled with plus signs.

Causal-loop diagram for labour productivity in PMP. Source: Authors’ own creation

Close modal

The qualitative analysis of the labour productivity constraint model revealed the critical factors having the highest impact on productivity to be worker fatigue (W1), increase in crew size (M1), work area congestion (S1), delays in receiving drawing (T1) and adverse temperatures (E1). From these five factors, delays in receiving drawings and effect of adverse temperatures were difficult to accurately estimate and incorporate in the model. Hence, we used fatigue, crew size increase, and work area congestion as the three main productivity loss factors in the SD labour productivity model. From the above factors, the literature identified worker fatigue to have the highest impact on labour productivity for construction industry. O’Neill and Panuwatwanich (2013) argued the negative effect of fatigue on productivity for construction could vary between 5–15%. This was further verified by interviews with precast managers in Australia who estimated an approximately 10% loss in productivity during overtime work. These loss percentages due to fatigue were also consistent across studies carried out by Parody et al. (2020) for manufacturing companies. For the case of crew size increase, Mattila et al. (2007) discussed the productivity loss could vary from 5% up to 18% depending on the percentage by which crew size was increased for construction industry. As the increase in crew size is capped to 20% of baseline for the case-study, only 5% productivity loss was 5% productivity loss was assumed for the SD model. Dabirian et al. (2023) argued the loss in productivity from work area congestion to be 10–30% for traditional construction sites. The expert interviews revealed that this loss is relatively lower for precast factories compared to in situ construction, and this value was estimated to be around 5%, which was used for the proposed model.

A quantitative SD model was constructed for overall PMP (Figure 4). The model simulated five main activities for PMP: reinforcement, formwork, concreting, finishing and repair, and crane operation under eight different sensitivity scenarios (Table 6). The sensitivity scenarios were selected based on industry professional feedback and from actual case study data from the precast factory. The baseline scenario is the current levels of workforce, productivity rates, resource allocation, and cost structures used assuming there’s no productivity loss from external factors. Further it is assumed that there are no changes or improvements made to the current system, such as no increase in overtime (OT), no changes in crew size, and no implementation of new technologies or processes. The different scenarios (1, 2, 4, 5 and 7) were simulated to investigate the productivity variations when production was increased by 10%, 20% and 40% from baseline scenario. The 10% and 20% increases were accommodated by increasing the overtime allocation or crew size whereas for a 40% surge in production both overtime and the crew size had to be increased. Similarly, simulations were carried out for decrease in productivity by 10%, 20% and 40% where the same baseline crew size had to be employed. Where, 40% is the theoretical maximum throughput of the system with the given constraints on space, labour and equipment availability for the considered case study. This value may vary based on the size and facilities available within from factory to factory.

Figure 4
A detailed flow diagram linking productivity loss, worker-hours, and labour cost components to overall productivity and production cost.The flow begins from the text at the bottom labeled “Productivity Loss.” Below “Productivity Loss,” the texts “Fatigue,” “Crew Size Increase,” and “Work Area Congestion” are shown, each with an upward-pointing arrow leading toward “Productivity Loss.” Above “Productivity Loss,” the text “Production Throughput (Units or Week)” is present. From both “Productivity Loss” and “Production Throughput (Units or Week),” upward-pointing arrows arise and connect to five boxes labeled “Productivity (Reinforcement),” “Productivity (Formwork),” “Productivity (Concreting),” “Productivity (Finishing),” and “Productivity (Crane).” Above “Productivity (Reinforcement),” the text “Crew Size (Reinforcement)” is present. From “Crew Size (Reinforcement),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Reinforcement)” and “Total Overtime Worker-hours (Reinforcement).” From “Total Normal Worker-hours (Reinforcement)” and “Total Overtime Worker-hours (Reinforcement),” downward arrows arise and point back to “Productivity (Reinforcement).” Above “Crew Size (Reinforcement),” two additional texts are shown. On the left, the text “Average Normal Daily Worker-hours (Reinforcement)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Reinforcement).” On the right, the text “Average Daily Overtime Worker-hours (Reinforcement)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Reinforcement).” Above “Productivity (Formwork),” the text “Crew Size (Formwork)” is present. From “Crew Size (Formwork),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Formwork)” and “Total Overtime Worker-hours (Formwork).” From both “Total Normal Worker-hours (Formwork)” and “Total Overtime Worker-hours (Formwork),” downward arrows arise and point back to “Productivity (Formwork).” Above “Crew Size (Formwork),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Formwork)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Formwork).” On the right, the text “Daily Overtime Worker-hours (Formwork)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Formwork).” Above “Productivity (Concreting),” the text “Crew Size (Concreting)” is present. From “Crew Size (Concreting),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Concreting)” and “Total Overtime Worker-hours (Concreting).” From both “Total Normal Worker-hours (Concreting)” and “Total Overtime Worker-hours (Concreting),” downward arrows arise and point back to “Productivity (Concreting).” Above “Crew Size (Concreting),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Concreting)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Concreting).” On the right, the text “Daily Overtime Worker-hours (Concreting)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Concreting).” Above “Productivity (Finishing),” the text “Crew Size (Finishing)” is present. From “Crew Size (Finishing),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Finishing)” and “Total Overtime Worker-hours (Finishing).” From both “Total Normal Worker-hours (Finishing)” and “Total Overtime Worker-hours (Finishing),” downward arrows arise and point back to “Productivity (Finishing).” Above “Crew Size (Finishing),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Finishing)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Finishing).” On the right, the text “Daily Overtime Worker-hours (Finishing)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Finishing).” Above “Productivity (Crane),” the text “Crew Size (Crane)” is present. From “Crew Size (Crane),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Crane)” and “Total Overtime Worker-hours (Crane).” From both “Total Normal Worker-hours (Crane)” and “Total Overtime Worker-hours (Crane),” downward arrows arise and point back to “Productivity (Crane).” Above “Crew Size (Crane),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Crane)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Crane).” On the right, the text “Daily Overtime Worker-hours (Crane)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Crane).” From “Productivity Loss” and “Production Throughput (Units or Week),” pink upward arrows arise from each and point to the text at the top labeled “Overall Productivity.” To the left of “Overall Productivity,” the text “Total Normal Labour Hours” is present with a pink arrow pointing to “Overall Productivity.” Likewise, on the right of “Overall Productivity,” the text “Total Overtime Labour Hours” is present with a pink arrow pointing to “Overall Productivity.” At the top, a right-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Total Production Labour Cost.” The value at the middle of the arrow is labeled “Production Cost Rate.” The texts “Average Normal Labour Rate” and “Average Overtime Labour Rate” are positioned to the left and right of “Production Cost Rate.” From “Average Normal Labour Rate,” “Average Overtime Labour Rate,” “Total Normal Labour Hours,” and “Total Overtime Labour Hours,” pink arrows arise and point to “Production Cost Rate.”

SD model for labour productivity and cost for precast manufacturing process. Source: Authors’ own creation

Figure 4
A detailed flow diagram linking productivity loss, worker-hours, and labour cost components to overall productivity and production cost.The flow begins from the text at the bottom labeled “Productivity Loss.” Below “Productivity Loss,” the texts “Fatigue,” “Crew Size Increase,” and “Work Area Congestion” are shown, each with an upward-pointing arrow leading toward “Productivity Loss.” Above “Productivity Loss,” the text “Production Throughput (Units or Week)” is present. From both “Productivity Loss” and “Production Throughput (Units or Week),” upward-pointing arrows arise and connect to five boxes labeled “Productivity (Reinforcement),” “Productivity (Formwork),” “Productivity (Concreting),” “Productivity (Finishing),” and “Productivity (Crane).” Above “Productivity (Reinforcement),” the text “Crew Size (Reinforcement)” is present. From “Crew Size (Reinforcement),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Reinforcement)” and “Total Overtime Worker-hours (Reinforcement).” From “Total Normal Worker-hours (Reinforcement)” and “Total Overtime Worker-hours (Reinforcement),” downward arrows arise and point back to “Productivity (Reinforcement).” Above “Crew Size (Reinforcement),” two additional texts are shown. On the left, the text “Average Normal Daily Worker-hours (Reinforcement)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Reinforcement).” On the right, the text “Average Daily Overtime Worker-hours (Reinforcement)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Reinforcement).” Above “Productivity (Formwork),” the text “Crew Size (Formwork)” is present. From “Crew Size (Formwork),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Formwork)” and “Total Overtime Worker-hours (Formwork).” From both “Total Normal Worker-hours (Formwork)” and “Total Overtime Worker-hours (Formwork),” downward arrows arise and point back to “Productivity (Formwork).” Above “Crew Size (Formwork),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Formwork)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Formwork).” On the right, the text “Daily Overtime Worker-hours (Formwork)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Formwork).” Above “Productivity (Concreting),” the text “Crew Size (Concreting)” is present. From “Crew Size (Concreting),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Concreting)” and “Total Overtime Worker-hours (Concreting).” From both “Total Normal Worker-hours (Concreting)” and “Total Overtime Worker-hours (Concreting),” downward arrows arise and point back to “Productivity (Concreting).” Above “Crew Size (Concreting),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Concreting)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Concreting).” On the right, the text “Daily Overtime Worker-hours (Concreting)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Concreting).” Above “Productivity (Finishing),” the text “Crew Size (Finishing)” is present. From “Crew Size (Finishing),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Finishing)” and “Total Overtime Worker-hours (Finishing).” From both “Total Normal Worker-hours (Finishing)” and “Total Overtime Worker-hours (Finishing),” downward arrows arise and point back to “Productivity (Finishing).” Above “Crew Size (Finishing),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Finishing)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Finishing).” On the right, the text “Daily Overtime Worker-hours (Finishing)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Finishing).” Above “Productivity (Crane),” the text “Crew Size (Crane)” is present. From “Crew Size (Crane),” two upward-pointing arrows arise and lead to “Total Normal Worker-hours (Crane)” and “Total Overtime Worker-hours (Crane).” From both “Total Normal Worker-hours (Crane)” and “Total Overtime Worker-hours (Crane),” downward arrows arise and point back to “Productivity (Crane).” Above “Crew Size (Crane),” two additional texts are shown. On the left, the text “Normal Daily Worker-hours (Crane)” is present with an upward-pointing arrow leading to “Total Normal Worker-hours (Crane).” On the right, the text “Daily Overtime Worker-hours (Crane)” is shown with an upward-pointing arrow leading to “Total Overtime Worker-hours (Crane).” From “Productivity Loss” and “Production Throughput (Units or Week),” pink upward arrows arise from each and point to the text at the top labeled “Overall Productivity.” To the left of “Overall Productivity,” the text “Total Normal Labour Hours” is present with a pink arrow pointing to “Overall Productivity.” Likewise, on the right of “Overall Productivity,” the text “Total Overtime Labour Hours” is present with a pink arrow pointing to “Overall Productivity.” At the top, a right-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Total Production Labour Cost.” The value at the middle of the arrow is labeled “Production Cost Rate.” The texts “Average Normal Labour Rate” and “Average Overtime Labour Rate” are positioned to the left and right of “Production Cost Rate.” From “Average Normal Labour Rate,” “Average Overtime Labour Rate,” “Total Normal Labour Hours,” and “Total Overtime Labour Hours,” pink arrows arise and point to “Production Cost Rate.”

SD model for labour productivity and cost for precast manufacturing process. Source: Authors’ own creation

Close modal

The model considered three main productivity loss factors: fatigue (10% applied only for overtime), crew size increase (5%), and work area congestion (5%) for the overall productivity calculations. These were used due to their high impact on productivity and are quantifiable compared to other factors of the qualitative model. The authors identified several factors such as delay in receiving drawings, material delivery delays, machinery breakdown and poor factory logistics which may have a significant impact on the productivity. Most of these factors are difficult to forecast and generalize as their impact vary from factory to factory and quantifying these factors accurately for the precast industry is not practical. Hence for this study only the above three parameters were used.

The proposed system dynamic model was employed for a case-study at a medium scale precast concrete manufacturing facility in Australia. The maximum weekly production throughput for baseline scenario of the facility was 175 Units and total production crew size was 22 workers. The complete set of input variables used in the model are presented in Table 4. It was assumed that the baseline scenario was for 100% production capacity of normal workforce with no productivity loss from any factors.

The results for the baseline scenario calculated the productivity of overall PMP as 0.162 Units/Worker-hr which was the maximum productivity across all scenarios (Table 6). For individual activities the highest productivity was simulated for finishing and crane operation (3.125) followed by concreting process (1.125). The lowest productivity values were obtained for reinforcement (0.391) followed by formwork (0.480). These results suggest the critical bottlenecks in PMP to be reinforcement which equates to only 35% of the concreting productivity. The results of this study are consistent with previous research carried out by Chen et al. (2016, 2020a) and Reichenbach and Kromoser (2021).

The comparison of Scenarios 1 and 2 where throughput was increased by 10%, produced 4% loss in productivity when overtime was allocated whereas for increase in crew size the value was significantly higher (23%). This loss increased to 9% when throughput was increased to 20% (Scenario 4) under the overtime scenario, while the loss from crew size increase reduced to 17% as the same crew for 10% throughput increase was able to deliver the new output (Scenario 5). These results highlight overtime allocation maybe the best solution when increase in throughput is relatively low. For Scenario 7 both overtime and crew size were required to be increased to achieve 40% increment of production throughput which also led to 26% loss in overall productivity. In scenarios 3, 6, and 8 where production throughput had to be reduced, productivity values decreased significantly by 10%–40% from the baseline as the same permanent crew had to be allocated even though throughput decreased due to other factors.

We developed an SD stock and flow model to analyse the profitability of PMP incorporating all costs and revenue of the process. This model was also tested using industrial data from the case-study and provides an insight into the PMP and its cost breakdown which lacks previous practical case-study investigations. The structure of the model consists of five main stocks: direct production cost (labour cost, and material cost), indirect cost (transport and logistics cost, and factory overhead cost), and total profit/loss (Figure 5). The total profit/loss was determined by considering the total revenue flow and total cost flow of the precast production facility. The complete set of input variable used in the model is presented through Table 4.

Figure 5
A figure illustrating the cost flow, which links labor, materials, overhead, and logistics to total and direct production costs.The center of the figure shows a right-pointing arrow originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Direct Production Cost”. The value at the middle of the arrow is labeled “Direct Production Cost (Rate)”. Surrounding this central arrow, six arrows are shown. At the top right, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Material Cost”. The value at the middle of the arrow is labeled “Material Cost (Rate)”. Surrounding this arrow, five circular nodes are present, with arrows pointing toward this value. These nodes are labeled “Reinforcement”, “Formwork”, “Concreting”, “Miscellaneous”, and “Finishing”. At the center right, a right-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Total Profit or Loss”, accompanied by a plus or minus sign. The value at the middle of the arrow is labeled “Profit or Loss Rate”. At the bottom right, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Factory Overhead Cost”. The value at the middle of the arrow is labeled “Factory Overhead Cost (Rate)”. Surrounding this arrow, three circular nodes are present, with arrows pointing toward this value. These nodes are labeled “Management Team (Salary)”, “Fixed Factory Overhead”, and “Drawing and Certificates”. At the bottom center, a right-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Indirect Cost”. The value at the middle of the arrow is labeled “Indirect Cost (Rate)”. At the bottom left, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Transport and Logistics Cost”. The value at the middle of the arrow is labeled “Transportation and Logistics Cost (Rate)”. Surrounding this arrow, three circular nodes are present, with arrows pointing toward this value. These nodes are labeled “Loading Cost”, “Transportation (Components)”, and “Material Procurement and Delivery”. At the top center left, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Labour Cost”. The value at the middle of the arrow is labeled “Labour Cost (Rate)”. Surrounding this arrow, five circular nodes are present, with arrows pointing toward this value. Two circular nodes labeled “Formwork (Normal Cost)” and “Formwork (Overtime)” are shown at the left. From both these circular nodes, an arrow arises and points toward “Total Formwork Labour Cost”. Two circular nodes labeled “Reinforcement (Normal Cost)” and “Reinforcement (Overtime)” are shown, and arrows arise and point toward “Total Reinforcement Labour Cost”. Two circular nodes labeled “Finishing (Normal Cost)” and “Finishing (Overtime)” are shown with arrows pointing toward “Total Finishing Labour Cost”. Two circular nodes labeled “Concreting (Normal Cost)” and “Concreting (Overtime)” are shown with arrows pointing toward “Total Concreting Labour Cost”. Two circular nodes labeled “Crane Operator (Normal Cost)” and “Crane Operator (Overtime)” are shown with arrows pointing toward “Total Crane Operator Labour Cost”. From “Labour Cost (Rate)” and “Material Cost (Rate)”, a pink arrow arises and points toward “Direct Production Cost (Rate)”. From “Direct Production Cost (Rate)”, a downward arrow extends and points toward a circular node labeled “Total Cost (Per Panel)”. From “Indirect Cost (Rate)”, a pink arrow arises and points toward “Total Cost (Per Panel)”. From “Total Cost (Per Panel)”, an upward arrow arises and points toward the text labeled “Profit or Loss (Per Panel)”. A circular node labeled “Average Selling Price” is present with a pink arrow pointing toward “Profit or Loss (Per Panel)”. From “Profit or Loss (Per Panel)”, an arrow arises and points toward “Profit or Loss Rate”. From “Profit or Loss Rate”, an arrow arises and points toward a circular node labeled “Weekly Production Throughput”. From “Weekly Production Throughput”, a pink arrow arises and points toward “Total Cost (Per Panel)”. A pink arrow from “Transport and Logistics Cost (Rate)” and “Factory Overhead Cost (Rate)” points toward “Indirect Cost (Rate)”.

SD stock and flow model for overall production cost and profitability for PMP. Source: Authors’ own creation

Figure 5
A figure illustrating the cost flow, which links labor, materials, overhead, and logistics to total and direct production costs.The center of the figure shows a right-pointing arrow originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Direct Production Cost”. The value at the middle of the arrow is labeled “Direct Production Cost (Rate)”. Surrounding this central arrow, six arrows are shown. At the top right, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Material Cost”. The value at the middle of the arrow is labeled “Material Cost (Rate)”. Surrounding this arrow, five circular nodes are present, with arrows pointing toward this value. These nodes are labeled “Reinforcement”, “Formwork”, “Concreting”, “Miscellaneous”, and “Finishing”. At the center right, a right-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Total Profit or Loss”, accompanied by a plus or minus sign. The value at the middle of the arrow is labeled “Profit or Loss Rate”. At the bottom right, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Factory Overhead Cost”. The value at the middle of the arrow is labeled “Factory Overhead Cost (Rate)”. Surrounding this arrow, three circular nodes are present, with arrows pointing toward this value. These nodes are labeled “Management Team (Salary)”, “Fixed Factory Overhead”, and “Drawing and Certificates”. At the bottom center, a right-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Indirect Cost”. The value at the middle of the arrow is labeled “Indirect Cost (Rate)”. At the bottom left, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Transport and Logistics Cost”. The value at the middle of the arrow is labeled “Transportation and Logistics Cost (Rate)”. Surrounding this arrow, three circular nodes are present, with arrows pointing toward this value. These nodes are labeled “Loading Cost”, “Transportation (Components)”, and “Material Procurement and Delivery”. At the top center left, a left-pointing arrow is shown originating from a small cloud-shaped icon containing a value in the middle, leading to a box labeled “Labour Cost”. The value at the middle of the arrow is labeled “Labour Cost (Rate)”. Surrounding this arrow, five circular nodes are present, with arrows pointing toward this value. Two circular nodes labeled “Formwork (Normal Cost)” and “Formwork (Overtime)” are shown at the left. From both these circular nodes, an arrow arises and points toward “Total Formwork Labour Cost”. Two circular nodes labeled “Reinforcement (Normal Cost)” and “Reinforcement (Overtime)” are shown, and arrows arise and point toward “Total Reinforcement Labour Cost”. Two circular nodes labeled “Finishing (Normal Cost)” and “Finishing (Overtime)” are shown with arrows pointing toward “Total Finishing Labour Cost”. Two circular nodes labeled “Concreting (Normal Cost)” and “Concreting (Overtime)” are shown with arrows pointing toward “Total Concreting Labour Cost”. Two circular nodes labeled “Crane Operator (Normal Cost)” and “Crane Operator (Overtime)” are shown with arrows pointing toward “Total Crane Operator Labour Cost”. From “Labour Cost (Rate)” and “Material Cost (Rate)”, a pink arrow arises and points toward “Direct Production Cost (Rate)”. From “Direct Production Cost (Rate)”, a downward arrow extends and points toward a circular node labeled “Total Cost (Per Panel)”. From “Indirect Cost (Rate)”, a pink arrow arises and points toward “Total Cost (Per Panel)”. From “Total Cost (Per Panel)”, an upward arrow arises and points toward the text labeled “Profit or Loss (Per Panel)”. A circular node labeled “Average Selling Price” is present with a pink arrow pointing toward “Profit or Loss (Per Panel)”. From “Profit or Loss (Per Panel)”, an arrow arises and points toward “Profit or Loss Rate”. From “Profit or Loss Rate”, an arrow arises and points toward a circular node labeled “Weekly Production Throughput”. From “Weekly Production Throughput”, a pink arrow arises and points toward “Total Cost (Per Panel)”. A pink arrow from “Transport and Logistics Cost (Rate)” and “Factory Overhead Cost (Rate)” points toward “Indirect Cost (Rate)”.

SD stock and flow model for overall production cost and profitability for PMP. Source: Authors’ own creation

Close modal

Cost breakdown highlighted the main direct cost source as material cost which accounted for more than twice the labour cost whereas main indirect cost was from the factory overheads (Table 7). The baseline simulation results for weekly analysis period provided the average cost to produce one unit as $2,052 while the profit was calculated as 448 $/Unit. The results show that the material and other indirect costs are less controllable compared to labour cost which can be potentially reduced by achieving a higher labour productivity. These results align with the findings of (Mao et al., 2015, 2016) carried out for traditional construction.

For Scenarios 1 and 4 where the throughput was increased by 10% and 20% using allocation of overtime the profit per panel decreased by 9% and 18% respectively. The impact on total profitability was minimal due to the increased revenue for above scenarios (Table 7). Whereas for Scenarios 2 and 5 when the throughput was increased using additional work force the total profit simulated 18% and 8% reduction respectively confirming the simulation results of SD productivity model. The highest profitability of $90,650 was simulated for scenario 7 where the throughput was increased by 40% by allocating overtime and increasing crew size simultaneously. When the throughput is reduced by 40% the results simulated a potential loss of $6,405, highlighting the importance of achieving the maximum production capacity.

This study presented a SD modelling approach for the prediction and improvement of labour productivity and investigation of costs associated with the PMP. Previous research often relied on static models or focused on isolated aspects of the manufacturing process, whereas our approach integrates multiple activities and their interactions, offering a dynamic and holistic view of the productivity and costs in PMP. A key contribution of this research is the application of the SD model to actual industry data from a medium-scale precast manufacturing company, allowing for the testing of different sensitivity scenarios. This real-world validation of the model provides robust, actionable insights that are directly relevant to industry practitioners, setting this study apart from more theoretical works. The findings of the study indicate that among the manufacturing activities considered, reinforcement is the least productive followed by formwork indicating that there may be inefficiencies or challenges associated with these PMP activities. This targeted identification of bottlenecks contributes to the literature by providing empirical evidence of where and how productivity gains can be achieved within the PMP. Exploration of alternative techniques or systems, efficient resource allocations, technologies or process optimizations that can streamline and expedite the process are recommended to improve the productivity of these bottleneck activities.

For the OSC to be a viable option the production throughput has to be increased considerably to counter the subsequent escalation of costs from increased workforce and to better distribute the sunk costs. Integration of novel OSC principles such as repeatability of units, standardization, automation, and digitalization into the PMP has the potential to significantly improve productivity of the process. The results further highlighted, overtime allocation as the best solution compared to increasing crew size, for a potential fast-tracking scenario where a relatively low throughput increase is expected (10–20%).

In conclusion, this study provides insights into the PMP and the potential to improve productivity and increase viability of its adoption through realizing its potential benefits. The authors believe this research extends the current body of knowledge by offering a flexible and robust simulation tool for productivity and profitability analysis in precast manufacturing, grounded in real-world data and focused on practical improvements. The limitation of the study is that it only concentrates on SD simulation method, and we recommend further research using other approaches such as mathematical modelling and discrete event simulation (DES) to extend these findings. Other critical productivity constraints such as delays in receiving engineering drawings, worker skill level, and adverse temperatures which were not used in this study can be quantified and incorporated for future models. Further, only the factory overheads were considered in addition to direct and indirect costs directly associated with precast production for this profit/loss calculation. Overheads such as head-office expenses, and taxes were not considered for these calculations. Future research incorporating precast logistics is recommended as an efficient logistics process optimizing transport, storage, and on-site installation, maximizes labour and equipment utilization, leading to faster project completion and lower costs.

The authors would like to acknowledge the contributions from various industry professionals that provided input to this article.

Disclosure statement: No potential conflict of interest was reported by the authors.

Ethics statement: This research has been reviewed and approved (LR, 2023–6,693–12998) by the University Human Research Ethics Committee (UHREC) of Queensland University of Technology (QUT) or delegated review body as meeting the requirements of the National Statement on Ethical Conduct in Human Research (2007, updated 2018).

Data availability statement: Some or all data, models, or code generated or used during the study were provided by a third party and are confidential in nature and may only be provided with restrictions (e.g. anonymized data from precast companies). Some of the data, models, and codes supporting this study’s findings are available from the corresponding author upon reasonable request.

AbouRizk
,
S.
(
2010
), “
Role of simulation in construction engineering and management
”,
Journal of Construction Engineering and Management
, Vol. 
136
No. 
10
, pp. 
1140
-
1153
, doi: .
Afifi
,
M.
,
Fotouh
,
A.
,
Al-Hussein
,
M.
and
Abourizk
,
S.
(
2022
), “
Integrated lean concepts and continuous/discrete-event simulation to examine productivity improvement in door assembly-line for residential buildings
”,
International Journal of Construction Management
, Vol. 
22
No. 
13
, pp. 
2423
-
2434
, doi: .
Al-Bazi
,
A.
and
Dawood
,
N.
(
2012
), “
Simulation-based genetic algorithms for construction supply chain management: off-site precast concrete production as a case study
”,
OR insight
, Vol. 
25
No. 
3
, pp. 
165
-
184
, doi: .
Al-Kofahi
,
Z.G.
,
Mahdavian
,
A.
and
Oloufa
,
A.
(
2022
), “
System dynamics modeling approach to quantify change orders impact on labor productivity 1: principles and model development comparative study
”,
International journal of construction management
, Vol. 
22
No. 
7
, pp. 
1355
-
1366
, doi: .
Alghazali
,
H.H.
,
Aljazaeri
,
Z.R.
and
Myers
,
J.J.
(
2020
), “
Effect of accelerated curing regimes on high volume fly ash mixtures in precast manufacturing plants
”,
Cement and Concrete Research
, Vol. 
131
, 105913, doi: .
Alinaitwe
,
H.M.
,
Mwakali
,
J.A.
and
Hansson
,
B.
(
2007
), “
Factors affecting the productivity of building craftsmen-studies of Uganda
”,
Journal of Civil Engineering and Management
, Vol. 
13
No. 
3
, pp. 
169
-
176
, doi: .
Allmon
,
E.
,
Haas
,
C.T.
,
Borcherding
,
J.D.
and
Goodrum
,
P.M.
(
2000
), “
US construction labor productivity trends, 1970-1998
”,
Journal of Construction Engineering and Management
, Vol. 
126
No. 
2
, pp. 
97
-
104
, doi: .
Alrefaie
,
A.M.
,
Abdul-Samad
,
Z.
,
Salleh
,
H.
,
Alashwal
,
A.M.
and
Amos
,
D.
(
2023
), “
Modelling labour productivity of reinforcement bar using polynomial regression: a study on a tropical country’s weather
”,
International Journal of Construction Management
, Vol. 
23
No. 
10
, pp. 
1633
-
1641
, doi: .
Alvanchi
,
A.
,
Azimi
,
R.
,
Lee
,
S.
,
Abourizk
,
S.M.
and
Zubick
,
P.
(
2012
), “
Off-site construction planning using discrete event simulation
”,
Journal of Architectural Engineering
, Vol. 
18
No. 
2
, pp. 
114
-
122
, doi: .
Arashpour
,
M.
,
Bai
,
Y.
,
Aranda-Mena
,
G.
,
Bab-Hadiashar
,
A.
,
Hosseini
,
R.
and
Kalutara
,
P.
(
2017
), “
Optimizing decisions in advanced manufacturing of prefabricated products: theorizing supply chain configurations in off-site construction
”,
Automation in Construction
, Vol. 
84
, pp. 
146
-
153
, doi: .
Arashpour
,
M.
,
Kamat
,
V.
,
Bai
,
Y.
,
Wakefield
,
R.
and
Abbasi
,
B.
(
2018
), “
Optimization modeling of multi-skilled resources in prefabrication: theorizing cost analysis of process integration in off-site construction
”,
Automation in Construction
, Vol. 
95
, pp. 
1
-
9
, doi: .
Arja
,
M.
,
Sauce
,
G.
and
Souyri
,
B.
(
2009
), “
External uncertainty factors and LCC: a case study
”,
Building Research and Information
, Vol. 
37
No. 
3
, pp. 
325
-
334
, doi: .
Assaad
,
R.
,
El-Adaway
,
I.H.
,
Hastak
,
M.
and
Needy
,
K.L.
(
2020
), “
Commercial and legal considerations of offsite construction projects and their hybrid transactions
”,
Journal of Construction Engineering and Management
, Vol. 
146
No. 
12
, 05020019, doi: .
Assaad
,
R.H.
,
El-Adaway
,
I.H.
,
Hastak
,
M.
and
Lascola Needy
,
K.
(
2023
), “
Key factors affecting labor productivity in offsite construction projects
”,
Journal of Construction Engineering and Management
, Vol. 
149
No. 
1
, 04022158, doi: .
Attouri
,
E.
,
Lafhaj
,
Z.
,
Ducoulombier
,
L.
and
Linéatte
,
B.
(
2022
), “
The current use of industrialized construction techniques in France: benefits, limits and future expectations
”,
Cleaner Engineering and Technology
, Vol. 
7
, 100436, doi: .
Azhar
,
S.
,
Lukkad
,
M.Y.
and
Ahmad
,
I.
(
2013
), “
An investigation of critical factors and constraints for selecting modular construction over conventional stick-built technique
”,
International Journal of Construction Education and Research
, Vol. 
9
No. 
3
, pp. 
203
-
225
, doi: .
Barbosa
,
F.
,
Woetzel
,
J.
and
Mischke
,
J.
(
2017
),
Reinventing construction: a route of higher productivity
.
Bhilwade
,
V.
,
Delhi
,
V.S.K.
,
Nanthagopalan
,
P.
,
Das
,
A.K.
and
Modi
,
K.
(
2023
), “
Predicting labour productivity for formwork activities in high-rise building construction: a case study
”,
Asian Journal of Civil Engineering
, Vol. 
24
No. 
4
, pp. 
959
-
968
, doi: .
Blismas
,
N.
,
Pasquire
,
C.
and
Gibb
,
A.
(
2006
), “
Benefit evaluation for off-site production in construction
”,
Construction Management and Economics
, Vol. 
24
No. 
2
, pp. 
121
-
130
, doi: .
Cameron
,
P.J.
and
Di Carlo
,
N.G.
(
2007
),
Piecing together modular: understanding the benefits and limitations of modular construction methods for multifamily development
.
Massachusetts Institute of Technology
.
Chapman
,
R.E.
,
Butry
,
D.T.
and
Huang
,
A.L.
(
2010
), “
Measuring and improving US construction productivity
”,
ed.ˆeds
,
Proceedings of TG65 and W065-Special Track. 18th CIB World Building Congress
.
Chen
,
H.
and
Samarasinghe
,
D.a.S.
(
2020
), “
The factors constraining the adoption of prefabrication in the New Zealand residential construction sector: contractors’ perspective
”,
ed.ˆeds
,
6th New Zealand built environment research Symposium (NZBERS 2020)
, pp. 
172
-
180
.
Chen
,
J.-H.
,
Yang
,
L.-R.
and
Tai
,
H.-W.
(
2016
), “
Process reengineering and improvement for building precast production
”,
Automation in Construction
, Vol. 
68
, pp. 
249
-
258
, doi: .
Chen
,
S.
,
Feng
,
K.
,
Lu
,
W.
,
Wang
,
Y.
,
Chen
,
X.
and
Wang
,
S.
(
2019
), “
A discrete event simulation-based analysis of precast concrete supply chain strategies considering suppliers’ production and transportation capabilities
”,
International Conference on Construction and Real Estate Management 2019
,
American Society of Civil Engineers Reston
,
VA
, pp. 
12
-
24
.
Chen
,
J.-H.
,
Hsu
,
S.-C.
,
Chen
,
C.-L.
,
Tai
,
H.-W.
and
Wu
,
T.-H.
(
2020a
), “
Exploring the association rules of work activities for producing precast components
”,
Automation in Construction
, Vol. 
111
, 103059, doi: .
Chen
,
W.
,
Zhao
,
Y.
,
Yu
,
Y.
,
Chen
,
K.
and
Arashpour
,
M.
(
2020b
), “
Collaborative scheduling of on-site and off-site operations in prefabrication
”,
Sustainability
, Vol. 
12
No. 
21
, p.
9266
, doi: .
Chigara
,
B.
and
Moyo
,
T.
(
2014
), “
Factors affecting labor productivity on building projects in Zimbabwe
”,
International Journal of Architecture, Engineering and Construction
, Vol. 
3
, pp. 
57
-
65
.
Choi
,
J.O.
,
Shrestha
,
B.K.
,
Kwak
,
Y.H.
and
Shane
,
J.S.
(
2020
), “
Innovative technologies and management approaches for facility design standardization and modularization of capital projects
”,
Journal of Management in Engineering
, Vol. 
36
No. 
5
, 04020042, doi: .
Dabirian
,
S.
,
Moussazadeh
,
M.
,
Khanzadi
,
M.
and
Abbaspour
,
S.
(
2023
), “
Predicting the effects of congestion on labour productivity in construction projects using agent-based modelling
”,
International Journal of Construction Management
, Vol. 
23
No. 
4
, pp. 
606
-
618
, doi: .
Dai
,
J.
,
Goodrum
,
P.M.
and
Maloney
,
W.F.
(
2009a
), “
Construction craft workers’ perceptions of the factors affecting their productivity
”,
Journal of Construction Engineering and Management
, Vol. 
135
No. 
3
, pp. 
217
-
226
, doi: .
Dai
,
J.
,
Goodrum
,
P.M.
,
Maloney
,
W.F.
and
Srinivasan
,
C.
(
2009b
), “
Latent structures of the factors affecting construction labor productivity
”,
Journal of Construction Engineering and Management
, Vol. 
135
No. 
5
, pp. 
397
-
406
, doi: .
Durdyev
,
S.
and
Ismail
,
S.
(
2019
), “
Offsite manufacturing in the construction industry for productivity improvement
”,
Engineering Management Journal
, Vol. 
31
No. 
1
, pp. 
35
-
46
, doi: .
Durdyev
,
S.
,
Ismail
,
S.
and
Kandymov
,
N.
(
2018
), “
Structural equation model of the factors affecting construction labor productivity
”,
Journal of Construction Engineering and Management
, Vol. 
144
No. 
4
, 04018007, doi: .
Ebrahimi
,
S.
(
2021
),
Developing hybrid artificial intelligence model for construction labour productivity prediction and optimization
.
Ebrahimi
,
S.
,
Raoufi
,
M.
and
Fayek
,
A.R.
(
2020
), “
Framework for integrating an artificial neural network and a genetic algorithm to develop a predictive model for construction labor productivity
”,
ed.ˆeds
,
Construction Research Congress 2020
,
American Society of Civil Engineers Reston
,
VA
, pp. 
58
-
66
.
El-Gohary
,
K.M.
and
Aziz
,
R.F.
(
2014
), “
Factors influencing construction labor productivity in Egypt
”,
Journal of Management in Engineering
, Vol. 
30
, pp. 
1
-
9
, doi: .
Fayek
,
A.R.
and
Tsehayae
,
A.A.
(
2012
), “
Modeling construction labour productivity using fuzzy logic and exploring the use of fuzzy hybrid techniques
”,
ed.ˆeds
,
2012 Annual Meeting of the North American Fuzzy Information Processing Society (NAFIPS)
,
IEEE
, pp. 
1
-
6
.
Flyvbjerg
,
B.
,
Skamris Holm
,
M.K.
and
Buhl
,
S.L.
(
2004
), “
What causes cost overrun in transport infrastructure projects?
”,
Transport Reviews
, Vol. 
24
No. 
1
, pp. 
3
-
18
, doi: .
Forrester
,
J.W.
(
1997
), “
Industrial dynamics
”,
Journal of the Operational Research Society
, Vol. 
48
No. 
10
, pp. 
1037
-
1041
, doi: .
Ghodrati
,
N.
,
Wing Yiu
,
T.
,
Wilkinson
,
S.
and
Shahbazpour
,
M.
(
2018
), “
Role of management strategies in improving labor productivity in general construction projects in New Zealand: managerial perspective
”,
Journal of Management in Engineering
, Vol. 
34
No. 
6
, 04018035, doi: .
Golnaraghi
,
S.
,
Moselhi
,
O.
,
Alkass
,
S.
and
Zangenehmadar
,
Z.
(
2020
), “
Modelling construction labour productivity using evolutionary polynomial regression
”,
International Journal of Productivity and Quality Management
, Vol. 
31
No. 
2
, pp. 
207
-
226
, doi: .
Gomar
,
J.E.
,
Haas
,
C.T.
and
Morton
,
D.P.
(
2002
), “
Assignment and allocation optimization of partially multiskilled workforce
”,
Journal of Construction Engineering and Management
, Vol. 
128
No. 
2
, pp. 
103
-
109
, doi: .
Gupta
,
M.
,
Hasan
,
A.
,
Jain
,
A.K.
and
Jha
,
K.N.
(
2018
), “
Site amenities and workers’ welfare factors affecting workforce productivity in Indian construction projects
”,
Journal of Construction Engineering and Management
, Vol. 
144
No. 
11
, 04018101, doi: .
Gurmu
,
A.T.
and
Aibinu
,
A.A.
(
2017
), “
Construction equipment management practices for improving labor productivity in multistory building construction projects
”,
Journal of Construction Engineering and Management
, Vol. 
143
No. 
10
, 04017081, doi: .
Gusmao Brissi
,
S.
,
Wong Chong
,
O.
,
Debs
,
L.
and
Zhang
,
J.
(
2022
), “
A review on the interactions of robotic systems and lean principles in offsite construction
”,
Engineering Construction and Architectural Management
, Vol. 
29
No. 
1
, pp. 
383
-
406
, doi: .
Halwatura
,
R.
(
2015
), “
Critical factors which govern labour productivity in building construction industry in Sri Lanka
”,
PM World Journal
, Vol. 
4
, pp. 
1
-
13
.
Hamza
,
M.
,
Shahid
,
S.
,
Bin Hainin
,
M.R.
and
Nashwan
,
M.S.
(
2022
), “
Construction labour productivity: review of factors identified
”,
International Journal of Construction Management
, Vol. 
22
No. 
3
, pp. 
413
-
425
, doi: .
Hanafi
,
M.H.
,
Abdullah
,
S.
and
Razak
,
A.A.
(
2015
), “
Contractors’ perspective on the benefits of implementing industrialized building system (IBS)
”,
International Journal of Sustainable Construction Engineering and Technology
, Vol. 
6
, pp. 
44
-
51
.
Hanna
,
A.S.
,
Taylor
,
C.S.
and
Sullivan
,
K.T.
(
2005
), “
Impact of extended overtime on construction labor productivity
”,
Journal of Construction Engineering and Management
, Vol. 
131
No. 
6
, pp. 
734
-
739
, doi: .
Hasan
,
A.
,
Baroudi
,
B.
,
Elmualim
,
A.
and
Rameezdeen
,
R.
(
2018
), “
Factors affecting construction productivity: a 30 year systematic review
”,
Engineering Construction and Architectural Management
, Vol. 
25
No. 
7
, pp. 
916
-
937
, doi: .
Hickson
,
B.G.
and
Ellis
,
L.A.
(
2014
), “
Factors affecting construction labour productivity in Trinidad and Tobago
”,
The Journal of the Association of Professional engineers of Trinidad and Tobago
, Vol. 
42
, pp. 
4
-
11
.
Hiyassat
,
M.A.
,
Hiyari
,
M.A.
and
Sweis
,
G.J.
(
2016
), “
Factors affecting construction labour productivity: a case study of Jordan
”,
International Journal of Construction Management
, Vol. 
16
No. 
2
, pp. 
138
-
149
, doi: .
Ibbs
,
W.
,
Berry
,
M.
and
Sun
,
X.
(
2017
), “
Visualizing skipped and out-of-sequence work
”,
Journal of Legal Affairs and Dispute Resolution in Engineering and Construction
, Vol. 
9
No. 
4
, 05017006, doi: .
ISEE Systems
(
2021
), “
Stella professional software version 2.1.3
”,
available at:
 http://www.iseesytems.com
Jarkas
,
A.M.
(
2015
), “
Factors influencing labour productivity in Bahrain’s construction industry
”,
International Journal of Construction Management
, Vol. 
15
No. 
1
, pp. 
94
-
108
, doi: .
Jarkas
,
A.M.
and
Bitar
,
C.G.
(
2012
), “
Factors affecting construction labor productivity in Kuwait
”,
Journal of Construction Engineering and Management
, Vol. 
138
No. 
7
, pp. 
811
-
820
, doi: .
Jayathilaaka
,
R.D.
,
Waidyasekara
,
K.G.
and
Sirimewan
,
D.C.
(
2022
),
The impact of material and labour cost variables on contractors budgeted cost
, in
Proceedings The 10th World Construction Symposium
, Vol. 
10
No. 
1
, pp. 
884
-
895
.
Johansen
,
E.
and
Wilson
,
B.
(
2006
), “
Investigating first planning in construction
”,
Construction Management and Economics
, Vol. 
24
No. 
12
, pp. 
1305
-
1314
, doi: .
Joshi
,
S.G.
(
2021
),
Safety Risk Assessment and Improvement Method for Precast/Prestressed Concrete Industry Plant
,
Mississippi State University
,
Mississippi State, MS
.
Khanzadi
,
M.
,
Nasirzadeh
,
F.
,
Mir
,
M.
and
Nojedehi
,
P.
(
2018
), “
Prediction and improvement of labor productivity using hybrid system dynamics and agent-based modeling approach
”,
Construction Innovation
, Vol. 
18
No. 
1
, pp. 
2
-
19
, doi: .
Kim
,
T.
,
Kim
,
Y.-W.
and
Cho
,
H.
(
2020
), “
Dynamic production scheduling model under due date uncertainty in precast concrete construction
”,
Journal of Cleaner Production
, Vol. 
257
, 120527, doi: .
Kim
,
M.-K.
,
Thedja
,
J.P.P.
,
Chi
,
H.-L.
and
Lee
,
D.-E.
(
2021
), “
Automated rebar diameter classification using point cloud data based machine learning
”,
Automation in Construction
, Vol. 
122
, 103476, doi: .
Kimiagari
,
S.
and
Keivanpour
,
S.
(
2019
), “
An interactive risk visualisation tool for large-scale and complex engineering and construction projects under uncertainty and interdependence
”,
International Journal of Production Research
, Vol. 
57
No. 
21
, pp. 
6827
-
6855
, doi: .
Kisi
,
K.P.
,
Mani
,
N.
,
Rojas
,
E.M.
and
Foster
,
E.T.
(
2017
), “
Optimal productivity in labor-intensive construction operations: pilot study
”,
Journal of Construction Engineering and Management
, Vol. 
143
No. 
3
, 04016107, doi: .
Lee
,
C.
and
Ham
,
S.
(
2018
), “
Automated system for form layout to increase the proportion of standard forms and improve work efficiency
”,
Automation in Construction
, Vol. 
87
, pp. 
273
-
286
, doi: .
Lee
,
D.
,
Lim
,
H.
,
Kim
,
T.
,
Cho
,
H.
,
Kang
,
K.
,
Kim
,
W.Y.
and
Han
,
C.
(
2014
),
A formwork layout model based on genetic algorithm
,
ISARC. Proceedings of the International Symposium on Automation and Robotics in Construction
,
IAARC Publications
.
Liberda
,
M.
,
Ruwanpura
,
J.
and
Jergeas
,
G.
(
2003
), “
Construction productivity improvement: a study of human, management and external issues
”,
ed.ˆeds
,
Construction Research Congress: Wind of Change: Integration and Innovation
, pp. 
1
-
8
.
Lim
,
J.
and
Kim
,
D.Y.
(
2023
), “
Integrated management model of production and yard stock for in-situ precast concrete production
”,
Journal of Asian Architecture and Building Engineering
, Vol. 
22
No. 
1
, pp. 
286
-
302
, doi: .
Lim
,
J.
,
Kim
,
S.
and
Kim
,
J.J.
(
2020
), “
Dynamic simulation model for estimating in-situ production quantity of PC members
”,
International Journal of Civil Engineering
, Vol. 
18
No. 
8
, pp. 
935
-
950
, doi: .
Mahamid
,
I.
,
Al-Ghonamy
,
A.
and
Aichouni
,
M.
(
2013
), “
Major factors influencing employee productivity in the KSA public construction projects
”,
International Journal of Civil and Environmental Engineering IJCEE-IJENS
, Vol. 
14
, pp. 
16
-
20
.
Mao
,
C.
,
Shen
,
Q.
,
Pan
,
W.
and
Ye
,
K.
(
2015
), “
Major barriers to off-site construction: the developer’s perspective in China
”,
Journal of Management in Engineering
, Vol. 
31
No. 
3
, 04014043, doi: .
Mao
,
C.
,
Xie
,
F.
,
Hou
,
L.
,
Wu
,
P.
,
Wang
,
J.
and
Wang
,
X.
(
2016
), “
Cost analysis for sustainable off-site construction based on a multiple-case study in China
”,
Habitat International
, Vol. 
57
, pp. 
215
-
222
, doi: .
Mattila
,
K.
,
Li
,
K.
and
Pocock
,
J.
, “
Demonstrating construction productivity
”,
ed.ˆeds
,
2007 Annual Conference and Exposition
,
12.444. 1-12.444. 12
.
Mawdesley
,
M.J.
and
Al-Jibouri
,
S.
(
2009
), “
Modelling construction project productivity using systems dynamics approach
”,
International Journal of Productivity and Performance Management
, Vol. 
59
No. 
1
, pp. 
18
-
36
, doi: .
Moselhi
,
O.
,
Assem
,
I.
and
El-Rayes
,
K.
(
2005
), “
Change orders impact on labor productivity
”,
Journal of Construction Engineering and Management
, Vol. 
131
No. 
3
, pp. 
354
-
359
, doi: .
Murray-Parkes
,
J.
,
Bai
,
Y.
,
Styles
,
A.
and
Wang
,
A.
(
2017
),
Handbook for the Design of Modular Structures
,
Monash University
,
Melbourne, Australia
.
Nasirian
,
A.
,
Arashpour
,
M.
,
Abbasi
,
B.
,
Zavadskas
,
E.K.
and
Akbarnezhad
,
A.
(
2019
), “
Skill set configuration in prefabricated construction: hybrid optimization and multicriteria decision-making approach
”,
Journal of Construction Engineering and Management
, Vol. 
145
No. 
9
, 04019050, doi: .
Nasirzadeh
,
F.
and
Nojedehi
,
P.
(
2013
), “
Dynamic modeling of labor productivity in construction projects
”,
International Journal of Project Management
, Vol. 
31
No. 
6
, pp. 
903
-
911
, doi: .
Nasirzadeh
,
F.
,
Kabir
,
H.D.
,
Akbari
,
M.
,
Khosravi
,
A.
,
Nahavandi
,
S.
and
Carmichael
,
D.G.
(
2020
), “
ANN-Based prediction intervals to forecast labour productivity
”,
Engineering Construction and Architectural Management
, Vol. 
27
No. 
9
, pp. 
2335
-
2351
, doi: .
Navon
,
R.
(
2005
), “
Automated project performance control of construction projects
”,
Automation in Construction
, Vol. 
14
No. 
4
, pp. 
467
-
476
, doi: .
Ogunlana
,
S.O.
,
Li
,
H.
and
Sukhera
,
F.A.
(
2003
), “
System dynamics approach to exploring performance enhancement in a construction organization
”,
Journal of Construction Engineering and Management
, Vol. 
129
No. 
5
, pp. 
528
-
536
, doi: .
O’neill
,
C.
and
Panuwatwanich
,
K.
(
2013
), “
The impact of fatigue on labour productivity: case study of dam construction project in Queensland
”,
Proceedings of the 2013 (4th) International Conference on Engineering, Project, and Production Management
, pp. 
993
-
1005
. .
Palikhe
,
S.
,
Kim
,
S.
and
Kim
,
J.J.
(
2019
), “
Critical success factors and dynamic modeling of construction labour productivity
”,
International Journal of Civil Engineering
, Vol. 
17
No. 
3
, pp. 
427
-
442
, doi: .
Parchami Jalal
,
M.
and
Shoar
,
S.
(
2019
), “
A hybrid framework to model factors affecting construction labour productivity: case study of Iran
”,
Journal of Financial Management of Property and Construction
, Vol. 
24
No. 
3
, pp. 
630
-
654
, doi: .
Parody
,
A.
,
Viloria
,
A.
,
Hernández
,
M.
,
Niño
,
A.
and
Cervera
,
J.
(
2020
), “Integration of statistical techniques to evaluate the fatigue of operators on the productivity of a company”,
ed.ˆeds
, in
Intelligent Computing, Information and Control Systems: ICICCS 2019
,
Springer
, pp. 
53
-
62
.
Porntepkasemsant
,
P.
and
Charoenpornpattana
,
S.
(
2015
), “
Factor affecting construction labor productivity in Thailand
”,
ˆeds
,
2015 International Conference on Industrial Engineering and Operations Management (IEOM)
,
IEEE
, pp. 
1
-
6
.
Prefabaus
(
2023
), “
Member directory, prefabAUS
”,
available at:
 https://www.prefabaus.org.au/member-directory (
accessed
 14 February 2023).
Ramezanianpour
,
A.
,
Khazali
,
M.
and
Vosoughi
,
P.
(
2013
), “
Effect of steam curing cycles on strength and durability of SCC: a case study in precast concrete
”,
Construction and Building Materials
, Vol. 
49
, pp. 
807
-
813
, doi: .
Rathnayake
,
A.
and
Middleton
,
C.
(
2023
), “
Systematic review of the literature on construction productivity
”,
Journal of Construction Engineering and Management
, Vol. 
149
No. 
6
, 03123005, doi: .
Reichenbach
,
S.
and
Kromoser
,
B.
(
2021
), “
State of practice of automation in precast concrete production
”,
Journal of Building Engineering
, Vol. 
43
, 102527, doi: .
Rivera
,
A.
,
Le
,
N.
,
Kashiwagi
,
J.
and
Kashiwagi
,
D.
(
2016
), “
Identifying the global performance of the construction industry
”,
Journal for the Advancement of Performance Information and Value
, Vol. 
8
No. 
2
, pp. 
7
-
19
, doi: .
Robles
,
G.
,
Stifi
,
A.
,
Ponz-Tienda
,
J.L.
and
Gentes
,
S.
(
2014
), “
Labor productivity in the construction industry-factors influencing the Spanish construction labor productivity
”,
International Journal of Civil and Environmental Engineering
, Vol. 
8
, pp. 
1061
-
1070
.
Smith
,
R.E.
(
2010
),
Prefab Architecture: A Guide to Modular Design and Construction
,
John Wiley and Sons
,
Hoboken, NJ
.
Smith
,
R.E.
(
2016
), “
Connect homes: modular housing patent and architect led business model: Jared Levy and Gordon Stott, architects, USP: patented module to module connection system, 2011
”,
Journal of Architectural Education
, Vol. 
70
No. 
1
, pp. 
168
-
171
, doi: .
Song
,
L.
and
Abourizk
,
S.M.
(
2008
), “
Measuring and modeling labor productivity using historical data
”,
Journal of Construction Engineering and Management
, Vol. 
134
No. 
10
, pp. 
786
-
794
, doi: .
Sterman
,
J.
(
2002
),
System dynamics: systems thinking and modeling for a complex world
.
Sveikauskas
,
L.
,
Rowe
,
S.
,
Mildenberger
,
J.
,
Price
,
J.
and
Young
,
A.
(
2016
), “
Productivity growth in construction
”,
Journal of Construction Engineering and Management
, Vol. 
142
No. 
10
, 04016045, doi: .
Tsehayae
,
A.A.
and
Fayek
,
A.R.
(
2016
), “
System model for analysing construction labour productivity
”,
Construction Innovation
, Vol. 
16
No. 
2
, pp. 
203
-
228
, doi: .
Wang
,
Z.
,
Hu
,
H.
and
Gong
,
J.
(
2018
), “
Framework for modeling operational uncertainty to optimize offsite production scheduling of precast components
”,
Automation in Construction
, Vol. 
86
, pp. 
69
-
80
, doi: .
Wang
,
L.
,
Zhao
,
Y.
and
Yin
,
X.
(
2023
), “
Precast production scheduling in off-site construction: mainstream contents and optimization perspective
”,
Journal of Cleaner Production
, Vol. 
405
, 137054, doi: .
Wuni
,
I.Y.
,
Shen
,
G.Q.
and
Darko
,
A.
(
2022
), “
Best practices for implementing industrialized construction projects: lessons from nine case studies
”,
Construction Innovation
, Vol. 
22
No. 
4
, pp. 
915
-
938
, doi: .
Yi
,
W.
and
Chan
,
A.P.
(
2014
), “
Critical review of labor productivity research in construction journals
”,
Journal of Management in Engineering
, Vol. 
30
No. 
2
, pp. 
214
-
225
, doi: .
Yuan
,
Z.
,
Qiao
,
Y.
,
Guo
,
Y.
,
Wang
,
Y.
,
Chen
,
C.
and
Wang
,
W.
(
2020
), “
Research on lean planning and optimization for precast component production based on discrete event simulation
”,
Advances in Civil Engineering
, Vol. 
2020
No. 
1
, 8814914, doi: .
Zeb
,
A.
,
Malik
,
S.
,
Nauman
,
S.
,
Hanif
,
H.
and
Amin
,
O.
(
2015
), “
Factors affecting material procurement, supply and management in building projects of Pakistan: a contractor’s perspective
”,
ed.ˆeds
,
Proceedings of 2015 international conference on innovations in civil and structural engineering (ICICSE’15)
, pp. 
170
-
175
.
Table A1

List of abbreviations and terms used

Abbreviation/TermExplanation
CdirectDirect cost
CindirectIndirect cost
CLDCausal-loop diagram
CLPConstruction labour productivity
CSlossProductivity loss from crew size increase
CunitCost of one unit
FlossProductivity loss from fatigue
LPLabour productivity
NWHcoConcreting normal worker-hrs
NWHcrCrane normal worker-hrs
NWHfiFinishing normal worker-hrs
NWHfwFormwork normal worker-hrs
NWHrfReinforcement normal worker-hrs
OSCOff-site construction
OWHcoConcreting overtime worker-hrs
OWHcrCrane overtime worker-hrs
OWHfiFinishing overtime worker-hrs
OWHfwFormwork overtime worker-hrs
OWHrfReinforcement overtime worker-hrs
PLProductivity loss
PMPPrecast manufacturing process
PunitPrice of one unit
SDSystem dynamic
SFDStock and flow diagram
TPCTotal production cost
TPTTotal production throughput
TWHnTotal normal worker-hrs
TWHoTotal overtime worker-hrs
WClossProductivity loss from work area congestion

Source(s): Authors’ own creation

Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence may be seen at http://creativecommons.org/licences/by/4.0/legalcode

or Create an Account

Close Modal
Close Modal