Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model

The shape design for a thermoelectric generator (TEG) plays an important role in its performance. In this paper, a hyperbolic function was introduced to design a variable cross-section TEG module to optimize the configuration for maximum power generation and efficiency was sought. A comprehensive th...

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Main Authors: Xi Wang, Paul Henshaw, David S-K Ting
Format: Article
Language:English
Published: Elsevier 2022-12-01
Series:Cleaner Engineering and Technology
Online Access:http://www.sciencedirect.com/science/article/pii/S2666790822001860
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author Xi Wang
Paul Henshaw
David S-K Ting
author_facet Xi Wang
Paul Henshaw
David S-K Ting
author_sort Xi Wang
collection DOAJ
description The shape design for a thermoelectric generator (TEG) plays an important role in its performance. In this paper, a hyperbolic function was introduced to design a variable cross-section TEG module to optimize the configuration for maximum power generation and efficiency was sought. A comprehensive thermodynamic model was applied to establish the governing equations for the newly designed TEG module. The mutation particle swarm optimization (MPSO) method was invoked to solve the thermodynamic model. The thermodynamic model's output results include the temperatures at both ends of the TE element, thus making it possible to evaluate the actual performance of the TEG module. The results indicate that both the power generation and efficiency of the hyperbolic TEG are superior to those obtained based on a traditional design. The studies also disclosed that the hyperbolic structure can increase the thermal resistance of the TE couple making it possible to enlarge the temperature difference. This is the main mechanism to improve the performance of a hyperbolic TEG. Besides, the four non-dimensional parameters (shape parameter (β), area ratio (μ), temperature ratio (θ), and resistance ratio (rx)) related to the geometric structure and working conditions have notable effects on the TEG performance. It is thus worthwhile optimizing the TEG power generation and efficiency in the variable searching space of these parameters. However, differing from the traditional optimization, it is necessary to solve the governing equations in every iteration when searching for an optimal configuration based on the comprehensive model. In order to overcome the challenge, the Dual-MPSO algorithm was used in this research.
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spelling doaj.art-f47e7196d77f41b5af914c0c01ea2ab72022-12-22T03:48:53ZengElsevierCleaner Engineering and Technology2666-79082022-12-0111100581Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic modelXi Wang0Paul Henshaw1David S-K Ting2Turbulence and Energy Laboratory, University of Windsor, 401 Sunset Ave, Windsor, ON, CanadaCorresponding author.; Turbulence and Energy Laboratory, University of Windsor, 401 Sunset Ave, Windsor, ON, CanadaTurbulence and Energy Laboratory, University of Windsor, 401 Sunset Ave, Windsor, ON, CanadaThe shape design for a thermoelectric generator (TEG) plays an important role in its performance. In this paper, a hyperbolic function was introduced to design a variable cross-section TEG module to optimize the configuration for maximum power generation and efficiency was sought. A comprehensive thermodynamic model was applied to establish the governing equations for the newly designed TEG module. The mutation particle swarm optimization (MPSO) method was invoked to solve the thermodynamic model. The thermodynamic model's output results include the temperatures at both ends of the TE element, thus making it possible to evaluate the actual performance of the TEG module. The results indicate that both the power generation and efficiency of the hyperbolic TEG are superior to those obtained based on a traditional design. The studies also disclosed that the hyperbolic structure can increase the thermal resistance of the TE couple making it possible to enlarge the temperature difference. This is the main mechanism to improve the performance of a hyperbolic TEG. Besides, the four non-dimensional parameters (shape parameter (β), area ratio (μ), temperature ratio (θ), and resistance ratio (rx)) related to the geometric structure and working conditions have notable effects on the TEG performance. It is thus worthwhile optimizing the TEG power generation and efficiency in the variable searching space of these parameters. However, differing from the traditional optimization, it is necessary to solve the governing equations in every iteration when searching for an optimal configuration based on the comprehensive model. In order to overcome the challenge, the Dual-MPSO algorithm was used in this research.http://www.sciencedirect.com/science/article/pii/S2666790822001860
spellingShingle Xi Wang
Paul Henshaw
David S-K Ting
Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model
Cleaner Engineering and Technology
title Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model
title_full Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model
title_fullStr Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model
title_full_unstemmed Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model
title_short Using dual mutation particle swarm method to optimize the variable cross-section of a thermoelectric generator based on a comprehensive thermodynamic model
title_sort using dual mutation particle swarm method to optimize the variable cross section of a thermoelectric generator based on a comprehensive thermodynamic model
url http://www.sciencedirect.com/science/article/pii/S2666790822001860
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