Geomembrane (GM) liners anchored in the trenches of municipal solid waste (MSW) landfills undergo pull-out failure when the applied tensile stresses exceed the ultimate strength of the liner. The present study estimates the tensile strength of GM liner against pull-out failure from anchorage with the help of machine-learning (ML) techniques. Five ML models, namely multilayer perceptron (MLP), extreme gradient boosting (XGB), support vector regression (SVR), random forest (RF) and locally weighted regression (LWR) were employed in this work. The effect of anchorage geometry, soil density and interface friction were studied with regards to the tensile strength of the GM. In this study, 1520 samples of soil–GM interface friction were used. The ML models were trained and tested with 90% and 10% of data, respectively. The performance of ML models was statistically examined using the coefficients of determination (R2, R2adj) and mean square errors (MSE, RMSE). In addition, an external validation model and K-fold cross-validation techniques were used to check the models’ performance and accuracy. Among the chosen ML models, MLP was found to be superior in accurately predicting the tensile strength of GM liner. The developed methodology is useful for tensile strength estimation and can be beneficially employed in landfill design.
Article navigation
August 2024
Research Article|
April 04 2023
Machine-learning modelling of tensile force in anchored geomembrane liners Available to Purchase
K. V. N. S. Raviteja;
K. V. N. S. Raviteja
1SIRE Research Fellow, Department of Civil, Materials, and Environmental Engineering, University of Illinois, Chicago, IL, USA
2Assistant Professor, Department of Civil Engineering, SRM University AP, Amaravati, Guntur, India, E-mail: raviteja.k@srmap.edu.in
Search for other works by this author on:
K. V. B. S. Kavya;
K. V. B. S. Kavya
3Research Scholar, Department of Civil Engineering, SRM University AP, Amaravati, Guntur, India, E-mail: kvbskavya@gmail.com
Search for other works by this author on:
R. Senapati;
R. Senapati
4Assistant Professor, Department of Computer Science and Engineering, SRM University AP, Amaravati, Guntur, India, E-mail: rajiv.s@srmap.edu.in
Search for other works by this author on:
K. R. Reddy
K. R. Reddy
5Professor, Department of Civil, Materials, and Environmental Engineering, University of Illinois, Chicago, IL, USA, E-mail: kreddy@uic.edu (corresponding author)
Search for other works by this author on:
Publisher: Emerald Publishing
Received:
October 28 2022
Accepted:
February 26 2023
Online ISSN: 1751-7613
Print ISSN: 1072-6349
© 2024 Emerald Publishing Limited
2024
Geosynthetics International (2024) 31 (4): 398–414.
Article history
Received:
October 28 2022
Accepted:
February 26 2023
Citation
Raviteja KVNS, Kavya KVBS, Senapati R, Reddy KR (2024), "Machine-learning modelling of tensile force in anchored geomembrane liners". Geosynthetics International, Vol. 31 No. 4 pp. 398–414, doi: https://doi.org/10.1680/jgein.22.00377
Download citation file:
Suggested Reading
Estimation of fluorotelomer alcohol emissions from landfill cover systems
Environmental Geotechnics (September,2021)
Hydraulic and environmental compatibility of RCA with filters and subgrades in highways
Environmental Geotechnics (October,2020)
Interface Shear Behavior of Landfill Composite Liner Systems: A Finite Element Analysis
Geosynthetics International (January,1996)
Diffusion of multiwall carbon nanotubes through a high-density polyethylene geomembrane
Geosynthetics International (September,2016)
Factors affecting multicomponent GCL-geomembrane interface transmissivity for landfills
Geosynthetics International (October,2022)
Related Chapters
Landfills and barriers for contaminant migration
ICE Handbook of Geosynthetic Engineering: Geosynthetics and their applications
ANCHORING OF EXTERNALLY BONDED CFRP REINFORCMENT
Extending Performance of Concrete Structures: Proceedings of the International Seminar held at the University of Dundee, Scotland, UK on 7 September 1999
Waste disposal by landfill
Environmental Geotechnics, 2nd edition
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
