AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.]
Thermoelectric generators (TEGs) offer the potential for converting waste heat into electricity, but their efficiency, particularly at low temperatures, remains inadequate. Plate-Fin Heat Exchangers (PFHEs) in TEG systems are not fully optimized, resulting in limited efficiency and applicability. Th...
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my.uitm.ir.1059872024-11-20T08:35:03Z https://ir.uitm.edu.my/id/eprint/105987/ AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] jmeche Andrew, Robert Martin Hughes Bhathal Singh, Baljit Singh Remeli, Muhammad Fairuz Peixer, Guilherme Fidelis Ratan Singh, Wandeep Kaur Back propagation (Artificial intelligence) Production from heat. Cogeneration of electric power and heat Thermoelectric generators (TEGs) offer the potential for converting waste heat into electricity, but their efficiency, particularly at low temperatures, remains inadequate. Plate-Fin Heat Exchangers (PFHEs) in TEG systems are not fully optimized, resulting in limited efficiency and applicability. The low conversion efficiency of TEGs means only a small fraction of waste heat is utilized, posing challenges to their long-term viability. While Genetic Algorithms (GAs) have shown promise in optimizing heat exchanger designs, advanced methods like Non-dominated Sorting Genetic Algorithm II (NSGA-II) have yet to be fully applied for PFHE TEG design. This study addresses these challenges by using NSGA-II, combined with a semi-empirical model, to optimize PFHE design in TEG systems. The optimization focuses on refining fin design parameters such as number, width, and height while adhering to constraints on fin area and pressure drop. UiTM Press 2024-11 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/105987/1/105987.pdf AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.]. (2024) Journal of Mechanical Engineering (JMechE) <https://ir.uitm.edu.my/view/publication/Journal_of_Mechanical_Engineering_=28JMechE=29/>, 13 (1): 13. pp. 235-255. ISSN 1823-5514 ; 2550-164X |
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Back propagation (Artificial intelligence) Production from heat. Cogeneration of electric power and heat |
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Back propagation (Artificial intelligence) Production from heat. Cogeneration of electric power and heat Andrew, Robert Martin Hughes Bhathal Singh, Baljit Singh Remeli, Muhammad Fairuz Peixer, Guilherme Fidelis Ratan Singh, Wandeep Kaur AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] |
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Thermoelectric generators (TEGs) offer the potential for converting waste heat into electricity, but their efficiency, particularly at low temperatures, remains inadequate. Plate-Fin Heat Exchangers (PFHEs) in TEG systems are not fully optimized, resulting in limited efficiency and applicability. The low conversion efficiency of TEGs means only a small fraction of waste heat is utilized, posing challenges to their long-term viability. While Genetic Algorithms (GAs) have shown promise in optimizing heat exchanger designs, advanced methods like Non-dominated Sorting Genetic Algorithm II (NSGA-II) have yet to be fully applied for PFHE TEG design. This study addresses these challenges by using NSGA-II, combined with a semi-empirical model, to optimize PFHE design in TEG systems. The optimization focuses on refining fin design parameters such as number, width, and height while adhering to constraints on fin area and pressure drop. |
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Article |
author |
Andrew, Robert Martin Hughes Bhathal Singh, Baljit Singh Remeli, Muhammad Fairuz Peixer, Guilherme Fidelis Ratan Singh, Wandeep Kaur |
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Andrew, Robert Martin Hughes Bhathal Singh, Baljit Singh Remeli, Muhammad Fairuz Peixer, Guilherme Fidelis Ratan Singh, Wandeep Kaur |
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Andrew, Robert Martin Hughes |
title |
AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] |
title_short |
AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] |
title_full |
AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] |
title_fullStr |
AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] |
title_full_unstemmed |
AI-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / Andrew Robert Martin Hughes ... [et al.] |
title_sort |
ai-enhanced generative design for efficient heat exchangers in thermoelectric generators: revolutionizing waste heat recovery in thermoelectricity / andrew robert martin hughes ... [et al.] |
publisher |
UiTM Press |
publishDate |
2024 |
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https://ir.uitm.edu.my/id/eprint/105987/1/105987.pdf https://ir.uitm.edu.my/id/eprint/105987/ |
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1817847211229184000 |
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