Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem

The rapid increase in the demand of electricity, shortage of fossil fuel supply and environmental concerns make economic load dispatch (ELD) and emission dispatch problem as the main concerns of electrical power generation system. ELD refers to find an optimal combination of power generation in orde...

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Main Author: MAHDI, FAHAD PARVEZ
Format: Thesis
Language:English
Published: 2017
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Online Access:http://utpedia.utp.edu.my/22069/1/Thesis%20of%20Fahad%20Parvez%20Mahdi%20%28G03474%29.pdf
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spelling my-utp-utpedia.220692021-10-18T09:52:54Z http://utpedia.utp.edu.my/22069/ Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem MAHDI, FAHAD PARVEZ Q Science (General) The rapid increase in the demand of electricity, shortage of fossil fuel supply and environmental concerns make economic load dispatch (ELD) and emission dispatch problem as the main concerns of electrical power generation system. ELD refers to find an optimal combination of power generation in order to minimize the total generation cost, while the goal of emission dispatch is to minimize the amount of pollutants by satisfying all other constraints. The goal of combined economic emission dispatch (CEED) is to minimize the total generation cost as well as the emission of pollutants, while satisfying all other constraints. Previously, different classical methods like LR, LP and EP, stand-alone methods such as PSO, GA and ABC, and different hybrid methods have been used to solve CEED problem. But, due to their different weaknesses like not suitable for nonlinear cost function, trapping into local optima and high computational time, researchers are now looking for alternative powerful optimization tools in order to address the challenges found to solve this problem. In this research work, we at first separately optimize ELD and emission dispatch problem using particle swarm optimization (PSO), quantum-behaved bat algorithm (QBA) and quantum particle swarm optimization (QPSO) for different number of units. Later, we consider both of the objectives simultaneously as a multiobjective optimization problem. We have considered cubic function to represent both ELD and emission dispatch problem as well as CEED problem. Emission dispatch problem is divided into three different objectives as minimization of SO2, NOX and CO2. Thus, making CEED problem as a four objectives optimization problem. We consider a unit-wise price penalty factor to convert all the objectives into a single objective. The main goal of this research is to attain a balanced trade-off between secured and profitable energy choices, and maintaining healthy and sound environment. Quantum computing phenomenon is integrated with swarm intelligence-based PSO and bat algorithm (BA) to make these algorithms computationally more powerful and robust. 2017-07 Thesis NonPeerReviewed application/pdf en http://utpedia.utp.edu.my/22069/1/Thesis%20of%20Fahad%20Parvez%20Mahdi%20%28G03474%29.pdf MAHDI, FAHAD PARVEZ (2017) Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem. Masters thesis, Universiti Teknologi PETRONAS.
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Electronic and Digitized Intellectual Asset
url_provider http://utpedia.utp.edu.my/
language English
topic Q Science (General)
spellingShingle Q Science (General)
MAHDI, FAHAD PARVEZ
Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem
description The rapid increase in the demand of electricity, shortage of fossil fuel supply and environmental concerns make economic load dispatch (ELD) and emission dispatch problem as the main concerns of electrical power generation system. ELD refers to find an optimal combination of power generation in order to minimize the total generation cost, while the goal of emission dispatch is to minimize the amount of pollutants by satisfying all other constraints. The goal of combined economic emission dispatch (CEED) is to minimize the total generation cost as well as the emission of pollutants, while satisfying all other constraints. Previously, different classical methods like LR, LP and EP, stand-alone methods such as PSO, GA and ABC, and different hybrid methods have been used to solve CEED problem. But, due to their different weaknesses like not suitable for nonlinear cost function, trapping into local optima and high computational time, researchers are now looking for alternative powerful optimization tools in order to address the challenges found to solve this problem. In this research work, we at first separately optimize ELD and emission dispatch problem using particle swarm optimization (PSO), quantum-behaved bat algorithm (QBA) and quantum particle swarm optimization (QPSO) for different number of units. Later, we consider both of the objectives simultaneously as a multiobjective optimization problem. We have considered cubic function to represent both ELD and emission dispatch problem as well as CEED problem. Emission dispatch problem is divided into three different objectives as minimization of SO2, NOX and CO2. Thus, making CEED problem as a four objectives optimization problem. We consider a unit-wise price penalty factor to convert all the objectives into a single objective. The main goal of this research is to attain a balanced trade-off between secured and profitable energy choices, and maintaining healthy and sound environment. Quantum computing phenomenon is integrated with swarm intelligence-based PSO and bat algorithm (BA) to make these algorithms computationally more powerful and robust.
format Thesis
author MAHDI, FAHAD PARVEZ
author_facet MAHDI, FAHAD PARVEZ
author_sort MAHDI, FAHAD PARVEZ
title Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem
title_short Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem
title_full Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem
title_fullStr Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem
title_full_unstemmed Quantum Inspired Computational Intelligence Techniques for Combined Economic Emission Dispatch Problem
title_sort quantum inspired computational intelligence techniques for combined economic emission dispatch problem
publishDate 2017
url http://utpedia.utp.edu.my/22069/1/Thesis%20of%20Fahad%20Parvez%20Mahdi%20%28G03474%29.pdf
http://utpedia.utp.edu.my/22069/
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score 13.18916