A genetic-algorithm-based chance-constrained model for air quality management

Air quality management problem has always been in exist, yet it is attracting more and more attention in the past hundred years since the negative consequence due to air pollution are becoming more and more significant. Different strategies have been implemented trying to tackle such a problem. Var...

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Main Author: Wang, Cheng
Other Authors: Qin Xiaosheng
Format: Final Year Project
Language:English
Published: 2013
Subjects:
Online Access:http://hdl.handle.net/10356/53783
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-537832023-03-03T17:07:08Z A genetic-algorithm-based chance-constrained model for air quality management Wang, Cheng Qin Xiaosheng School of Civil and Environmental Engineering DRNTU::Engineering::Environmental engineering Air quality management problem has always been in exist, yet it is attracting more and more attention in the past hundred years since the negative consequence due to air pollution are becoming more and more significant. Different strategies have been implemented trying to tackle such a problem. Various methods and models have been proposed by scientist and engineers along the way. However, due to large uncertainties associated with air pollutants transfer and dispersion process, the problem remains to be very challenging. In this report, a Genetic-Algorithm-Aided Stochastic Optimization (GASO) model was formulated. The model incorporated genetic algorithm and Monte Carlo Simulation into the traditional chance constrained programming framework. Genetic algorithm was used to search for optimums and Monte Carlo Simulation was used to check the accuracy of solutions. A hypothesized case study was introduced to demonstrate the applicability of the proposed model. Parameters were analyzed and the problem was solved in MATLAB by translating the parameters and constraints into MATLAB program codes. The results demonstrated that the GASO model was applicable and effective in solving air quality management problems under uncertainty. Alternatives in term of tradeoffs between system cost and risk level were also made available for decision makers. Bachelor of Engineering (Environmental Engineering) 2013-06-07T05:58:43Z 2013-06-07T05:58:43Z 2013 2013 Final Year Project (FYP) http://hdl.handle.net/10356/53783 en Nanyang Technological University 54 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
spellingShingle DRNTU::Engineering::Environmental engineering
Wang, Cheng
A genetic-algorithm-based chance-constrained model for air quality management
description Air quality management problem has always been in exist, yet it is attracting more and more attention in the past hundred years since the negative consequence due to air pollution are becoming more and more significant. Different strategies have been implemented trying to tackle such a problem. Various methods and models have been proposed by scientist and engineers along the way. However, due to large uncertainties associated with air pollutants transfer and dispersion process, the problem remains to be very challenging. In this report, a Genetic-Algorithm-Aided Stochastic Optimization (GASO) model was formulated. The model incorporated genetic algorithm and Monte Carlo Simulation into the traditional chance constrained programming framework. Genetic algorithm was used to search for optimums and Monte Carlo Simulation was used to check the accuracy of solutions. A hypothesized case study was introduced to demonstrate the applicability of the proposed model. Parameters were analyzed and the problem was solved in MATLAB by translating the parameters and constraints into MATLAB program codes. The results demonstrated that the GASO model was applicable and effective in solving air quality management problems under uncertainty. Alternatives in term of tradeoffs between system cost and risk level were also made available for decision makers.
author2 Qin Xiaosheng
author_facet Qin Xiaosheng
Wang, Cheng
format Final Year Project
author Wang, Cheng
author_sort Wang, Cheng
title A genetic-algorithm-based chance-constrained model for air quality management
title_short A genetic-algorithm-based chance-constrained model for air quality management
title_full A genetic-algorithm-based chance-constrained model for air quality management
title_fullStr A genetic-algorithm-based chance-constrained model for air quality management
title_full_unstemmed A genetic-algorithm-based chance-constrained model for air quality management
title_sort genetic-algorithm-based chance-constrained model for air quality management
publishDate 2013
url http://hdl.handle.net/10356/53783
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