A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries
Abstract Remaining useful life (RUL) prediction of lithium‐ion batteries (LIBs) plays a very important role in the prognostics and health management (PHM). Accurately predicting RUL of batteries can maintain and replace the batteries in advance to guarantee the safety and stability of the energy sto...
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doaj-5a7adc8b482b48fa97b8e45f91b17f782020-11-25T00:27:32ZengWileyEnergy Science & Engineering2050-05052019-12-01762797281310.1002/ese3.460A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteriesYingzhou Wang0Yulong Ni1Na Li2Shuai Lu3Shude Zhang4Zhongbao Feng5Jianguo Wang6School of Automation Engineering Northeast Electric Power University Jilin ChinaSchool of Automation Engineering Northeast Electric Power University Jilin ChinaState Grid Jibei Electric Power CO., LTD, Research Institute Beijing ChinaSchool of Automation Engineering Northeast Electric Power University Jilin ChinaSchool of Automation Engineering Northeast Electric Power University Jilin ChinaState Grid Jilin Electric Power CO., LTD Jilin ChinaSchool of Automation Engineering Northeast Electric Power University Jilin ChinaAbstract Remaining useful life (RUL) prediction of lithium‐ion batteries (LIBs) plays a very important role in the prognostics and health management (PHM). Accurately predicting RUL of batteries can maintain and replace the batteries in advance to guarantee the safety and stability of the energy storage system (ESS). A method based on improved ant lion optimization and support vector regression (IALO‐SVR) is proposed to accurately predict RUL of LIBs. The ALO algorithm easily falls into the local optimal solution, the levy flight algorithm is utilized to improve the shortcoming of the ALO algorithm. With the mathematical comparison of particle swarm optimization (PSO), differential evolution (DE), and ALO algorithms, the results indicate that the IALO algorithm has higher convergence accuracy. Experimental data simulations were performed using the battery datasets of NASA Prognostics Center of Excellence (PCoE) and the Center for Advanced Life Cycle Engineering (CALCE) to verify the proposed method. Through comparison with SVR, PSO‐LSSVM, and ALO‐SVR methods, the results indicate that the RUL prediction is more accurate based upon the IALO‐SVR method. Therefore, the proposed method can provide high prediction accuracy in battery health prognosis.https://doi.org/10.1002/ese3.460improved ant lion optimizationlithium‐ion batteryremaining useful lifesupport vector regression |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yingzhou Wang Yulong Ni Na Li Shuai Lu Shude Zhang Zhongbao Feng Jianguo Wang |
spellingShingle |
Yingzhou Wang Yulong Ni Na Li Shuai Lu Shude Zhang Zhongbao Feng Jianguo Wang A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries Energy Science & Engineering improved ant lion optimization lithium‐ion battery remaining useful life support vector regression |
author_facet |
Yingzhou Wang Yulong Ni Na Li Shuai Lu Shude Zhang Zhongbao Feng Jianguo Wang |
author_sort |
Yingzhou Wang |
title |
A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries |
title_short |
A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries |
title_full |
A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries |
title_fullStr |
A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries |
title_full_unstemmed |
A method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries |
title_sort |
method based on improved ant lion optimization and support vector regression for remaining useful life estimation of lithium‐ion batteries |
publisher |
Wiley |
series |
Energy Science & Engineering |
issn |
2050-0505 |
publishDate |
2019-12-01 |
description |
Abstract Remaining useful life (RUL) prediction of lithium‐ion batteries (LIBs) plays a very important role in the prognostics and health management (PHM). Accurately predicting RUL of batteries can maintain and replace the batteries in advance to guarantee the safety and stability of the energy storage system (ESS). A method based on improved ant lion optimization and support vector regression (IALO‐SVR) is proposed to accurately predict RUL of LIBs. The ALO algorithm easily falls into the local optimal solution, the levy flight algorithm is utilized to improve the shortcoming of the ALO algorithm. With the mathematical comparison of particle swarm optimization (PSO), differential evolution (DE), and ALO algorithms, the results indicate that the IALO algorithm has higher convergence accuracy. Experimental data simulations were performed using the battery datasets of NASA Prognostics Center of Excellence (PCoE) and the Center for Advanced Life Cycle Engineering (CALCE) to verify the proposed method. Through comparison with SVR, PSO‐LSSVM, and ALO‐SVR methods, the results indicate that the RUL prediction is more accurate based upon the IALO‐SVR method. Therefore, the proposed method can provide high prediction accuracy in battery health prognosis. |
topic |
improved ant lion optimization lithium‐ion battery remaining useful life support vector regression |
url |
https://doi.org/10.1002/ese3.460 |
work_keys_str_mv |
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