In this study, an interval stochastic quadratic programming method (ISQP) is developed through incorporating techniques of chance-constrained programming (CCP) and inexact quadratic programming (IQP) within a general framework. This method improves upon the conventional IQP approaches in uncertainty reflection and risk analysis. Interval stochastic quadratic programming can handle dual uncertainties expressed as interval values and probability distributions, and can deal with nonlinearities in objective function to reflect economies-of-scale effects on the system cost. It can also support the assessment of the risk of violating various constraints, for accomplishing a minimizing system cost. The developed ISQP is applied to a municipal solid waste (MSW) management system with multiple disposal facilities and multiple cities within multiple time periods. Results of the case study indicate that useful solutions for planning MSW management practices have been generated under different probability levels of violating constraints, which are informative and flexible for decision makers. A high system cost is associated with a low risk level of violating constraints, and a low system costs will run into a high probability of violating constraints. There is a tradeoff between the system cost and the constraint-violation risk.
Article navigation
November 2008
Research Article|
September 16 2008
Interval stochastic quadratic programming approach for municipal solid waste management Available to Purchase
P. Guo;
P. Guo
aEnvironmental Systems Engineering Program, University of Regina, Regina, SK S4S 0A2, Canada.
Search for other works by this author on:
G.H. Huang;
bChinese Research Academy of Environmental Science, North China Electric Power University, Beijing 100012-102206, China.
Corresponding author (email: gordon.huang@uregina.ca)
Search for other works by this author on:
Y.P. Li
Y.P. Li
cCollege of Urban and Environmental Sciences, Peking University, Beijing 100871, China.
Search for other works by this author on:
Corresponding author (email: gordon.huang@uregina.ca)
*
Present address: Environmental Systems Engineering Program, University of Regina, Regina, SK S4S 0A2, Canada.
Publisher: Emerald Publishing
Received:
November 06 2007
Accepted:
July 14 2008
Online ISSN: 1496-256X
Print ISSN: 1496-2551
2008
Journal of Environmental Engineering and Science (2008) 7 (6): 569–579.
Article history
Received:
November 06 2007
Accepted:
July 14 2008
Citation
Guo P, Huang G, Li Y (2008), "Interval stochastic quadratic programming approach for municipal solid waste management". Journal of Environmental Engineering and Science, Vol. 7 No. 6 pp. 569–579, doi: https://doi.org/10.1139/S08-029
Download citation file:
Suggested Reading
Efficient solution of the fuzzy eigenvalue problem in structural dynamics
Engineering Computations (July,2014)
Escalation of commitment in entrepreneurship-minded groups
International Journal of Entrepreneurial Behavior & Research (May,2014)
Bayesian Decision Making with Previous Probabilistic Uncertainty and Actual Fuzzy Imprecision
Kybernetes (March,1988)
Entrepreneurs’ decision making under different levels of uncertainty: the role of emotions
International Journal of Entrepreneurial Behavior & Research (September,2013)
Robust optimization of EMU brake module based on interval analysis
Multidiscipline Modeling in Materials and Structures (October,2021)
Related Chapters
A Conversation on Uncertainty in Managerial and Organizational Cognition
Uncertainty and Strategic Decision Making
The reuse of municipal solid waste incineration aggregates in manufacturing usual concrete
Geoenvironmental Engineering: Geoenvironmental Impact Management: Proceedings of the third conference organized by the British Geotechnical Association and Cardiff School of Engineering, Cardiff University, and held in Edinburgh on 17–19 September 2001
A Multicriteria Location Model for a Solid Waste Disposal Center in Valle Del Cauca, Colombia
Supply Chain Management and Logistics in Latin America: A Multi-Country Perspective
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
