Enhancing the lithium-ion battery life predictability using a hybrid method

This study contributes to proposing the improved bird swarm algorithm optimization least squares support vector machine (IBSA-LSSVM) model to predict the remaining life of lithium-ion batteries. By improving the prediction accuracy of the model, the safety and reliability of the new energy storage s...

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Main Authors: Li, Ling Ling, Liu, Zhi Feng, Tseng, Ming Lang, Chiu, Anthony S.F.
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Published: Animo Repository 2019
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/2137
https://animorepository.dlsu.edu.ph/context/faculty_research/article/3136/type/native/viewcontent
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-31362021-08-17T03:30:51Z Enhancing the lithium-ion battery life predictability using a hybrid method Li, Ling Ling Liu, Zhi Feng Tseng, Ming Lang Chiu, Anthony S.F. This study contributes to proposing the improved bird swarm algorithm optimization least squares support vector machine (IBSA-LSSVM) model to predict the remaining life of lithium-ion batteries. By improving the prediction accuracy of the model, the safety and reliability of the new energy storage system are improved. In order to avoid the bird swarm algorithm (BSA) getting into the local optimal solution, the levy flight strategy is introduced into the improved bird swarm algorithm (IBSA), which improves the convergence performance of the algorithm. Hence, this study is to verify the effectiveness of the proposed hybrid IBSA-LSSVM model. The following work has been done: (1) test functions are used to test particle swarm optimization (PSO), differential evolution algorithm (DE), BSA and IBSA; (2) the back propagation neural network (BP) model, support vector machine (SVM) model, quantum particle swarm optimization support vector machine (QPSO-SVM) model, BSA-LSSVM model and IBSA-LSSVM model are tested with the B5, B6 and B18 batteries. The following findings are obtained: (1) the five test functions are used to test the PSO, DE, BSA and IBSA algorithms in 20 dimensions, 50 dimensions and 80 dimensions. The results show that the convergence accuracy and convergence stability of IBSA algorithm is higher than those of the other three algorithms; (2) the residual life of B5, B6 and B18 batteries are predicted by the BSA-LSSVM, SVM, QPSO-SVM, BP and IBSA-LSSVM models. The test results show that the root mean square error of the IBSA-LSSVM model for B5 battery is 0.01, the root mean square error for B6 battery is 0.06, and the root mean square error for B18 battery is 0.02. The results show that the prediction accuracy of proposed model is higher than that of the other models. © 2018 Elsevier B.V. 2019-01-01T08:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/2137 https://animorepository.dlsu.edu.ph/context/faculty_research/article/3136/type/native/viewcontent Faculty Research Work Animo Repository Lithium ion batteries Swarm intelligence Industrial Engineering
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Lithium ion batteries
Swarm intelligence
Industrial Engineering
spellingShingle Lithium ion batteries
Swarm intelligence
Industrial Engineering
Li, Ling Ling
Liu, Zhi Feng
Tseng, Ming Lang
Chiu, Anthony S.F.
Enhancing the lithium-ion battery life predictability using a hybrid method
description This study contributes to proposing the improved bird swarm algorithm optimization least squares support vector machine (IBSA-LSSVM) model to predict the remaining life of lithium-ion batteries. By improving the prediction accuracy of the model, the safety and reliability of the new energy storage system are improved. In order to avoid the bird swarm algorithm (BSA) getting into the local optimal solution, the levy flight strategy is introduced into the improved bird swarm algorithm (IBSA), which improves the convergence performance of the algorithm. Hence, this study is to verify the effectiveness of the proposed hybrid IBSA-LSSVM model. The following work has been done: (1) test functions are used to test particle swarm optimization (PSO), differential evolution algorithm (DE), BSA and IBSA; (2) the back propagation neural network (BP) model, support vector machine (SVM) model, quantum particle swarm optimization support vector machine (QPSO-SVM) model, BSA-LSSVM model and IBSA-LSSVM model are tested with the B5, B6 and B18 batteries. The following findings are obtained: (1) the five test functions are used to test the PSO, DE, BSA and IBSA algorithms in 20 dimensions, 50 dimensions and 80 dimensions. The results show that the convergence accuracy and convergence stability of IBSA algorithm is higher than those of the other three algorithms; (2) the residual life of B5, B6 and B18 batteries are predicted by the BSA-LSSVM, SVM, QPSO-SVM, BP and IBSA-LSSVM models. The test results show that the root mean square error of the IBSA-LSSVM model for B5 battery is 0.01, the root mean square error for B6 battery is 0.06, and the root mean square error for B18 battery is 0.02. The results show that the prediction accuracy of proposed model is higher than that of the other models. © 2018 Elsevier B.V.
format text
author Li, Ling Ling
Liu, Zhi Feng
Tseng, Ming Lang
Chiu, Anthony S.F.
author_facet Li, Ling Ling
Liu, Zhi Feng
Tseng, Ming Lang
Chiu, Anthony S.F.
author_sort Li, Ling Ling
title Enhancing the lithium-ion battery life predictability using a hybrid method
title_short Enhancing the lithium-ion battery life predictability using a hybrid method
title_full Enhancing the lithium-ion battery life predictability using a hybrid method
title_fullStr Enhancing the lithium-ion battery life predictability using a hybrid method
title_full_unstemmed Enhancing the lithium-ion battery life predictability using a hybrid method
title_sort enhancing the lithium-ion battery life predictability using a hybrid method
publisher Animo Repository
publishDate 2019
url https://animorepository.dlsu.edu.ph/faculty_research/2137
https://animorepository.dlsu.edu.ph/context/faculty_research/article/3136/type/native/viewcontent
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