A chance-constrained model for regional air quality management

Regional air pollution has been a major global problem due to its health-associated risks together with its economic and environmental impacts. Though there have been significant advances in air pollution control technologies, the implementation of these control strategies are costly. It is thus des...

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Main Author: Tan, Michele Mei Wen.
Other Authors: School of Civil and Environmental Engineering
Format: Final Year Project
Language:English
Published: 2011
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Online Access:http://hdl.handle.net/10356/46270
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-462702023-03-03T16:51:38Z A chance-constrained model for regional air quality management Tan, Michele Mei Wen. School of Civil and Environmental Engineering Qin Xiaosheng Xu Ye DRNTU::Engineering::Environmental engineering::Environmental pollution Regional air pollution has been a major global problem due to its health-associated risks together with its economic and environmental impacts. Though there have been significant advances in air pollution control technologies, the implementation of these control strategies are costly. It is thus desirable for effective air quality planning and management to be undertaken to identify and implement cost-effective strategies, ensuring local air quality at safe levels. In this study, an inexact chance-constrained optimization model (ICCLP) was developed for air quality management under uncertainty. The ICCLP was formulated by integrating the inexact linear programming (ILP) and the chance-constrained programming model (CCP). The ICCLP allows the left-hand side (LHS) random variables to be expressed as interval numbers while letting the right-hand side (RHS) constraints to be expressed as probabilistic functions. In this way, the highly random RHS constraints will be satisfied at predetermined confidence levels, providing a more flexible and in-depth tradeoff analysis when applied to air quality management. To determine the applicability of the proposed ICCLP to regional air quality management, it was applied to a hypothetical case study, where the results were analyzed and compared with those from the ILP and CCP models. It was observed that the ICCLP could incorporate more uncertain information within its modeling framework. In addition, the method provides not only decision variable solutions presented as intervals but also the associated risk levels in violating the system constraints. It can therefore support an elaborate analysis of the tradeoff between system cost and system-failure risk. Hence, it is a useful tool for generating decision alternatives and thus helps policy makers identify desired policies under various environmental, economic, and system-reliability constraints. Bachelor of Engineering (Civil) 2011-11-24T08:09:11Z 2011-11-24T08:09:11Z 2010 2010 Final Year Project (FYP) http://hdl.handle.net/10356/46270 en Nanyang Technological University 96 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Environmental engineering::Environmental pollution
spellingShingle DRNTU::Engineering::Environmental engineering::Environmental pollution
Tan, Michele Mei Wen.
A chance-constrained model for regional air quality management
description Regional air pollution has been a major global problem due to its health-associated risks together with its economic and environmental impacts. Though there have been significant advances in air pollution control technologies, the implementation of these control strategies are costly. It is thus desirable for effective air quality planning and management to be undertaken to identify and implement cost-effective strategies, ensuring local air quality at safe levels. In this study, an inexact chance-constrained optimization model (ICCLP) was developed for air quality management under uncertainty. The ICCLP was formulated by integrating the inexact linear programming (ILP) and the chance-constrained programming model (CCP). The ICCLP allows the left-hand side (LHS) random variables to be expressed as interval numbers while letting the right-hand side (RHS) constraints to be expressed as probabilistic functions. In this way, the highly random RHS constraints will be satisfied at predetermined confidence levels, providing a more flexible and in-depth tradeoff analysis when applied to air quality management. To determine the applicability of the proposed ICCLP to regional air quality management, it was applied to a hypothetical case study, where the results were analyzed and compared with those from the ILP and CCP models. It was observed that the ICCLP could incorporate more uncertain information within its modeling framework. In addition, the method provides not only decision variable solutions presented as intervals but also the associated risk levels in violating the system constraints. It can therefore support an elaborate analysis of the tradeoff between system cost and system-failure risk. Hence, it is a useful tool for generating decision alternatives and thus helps policy makers identify desired policies under various environmental, economic, and system-reliability constraints.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Tan, Michele Mei Wen.
format Final Year Project
author Tan, Michele Mei Wen.
author_sort Tan, Michele Mei Wen.
title A chance-constrained model for regional air quality management
title_short A chance-constrained model for regional air quality management
title_full A chance-constrained model for regional air quality management
title_fullStr A chance-constrained model for regional air quality management
title_full_unstemmed A chance-constrained model for regional air quality management
title_sort chance-constrained model for regional air quality management
publishDate 2011
url http://hdl.handle.net/10356/46270
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