Life prediction of lithium-ion battery based on a hybrid model

Lithium battery is a new energy equipment. Because of its long service life and high energy density, it is widely used in various industries. However, as the number of uses increases, the life of the energy battery gradually decreases. Aging of battery will bring security risks to energy storage sys...

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Main Authors: Xu-Dong Chen, Hai-Yue Yang, Jhang-Shang Wun, Ching-Hsin Wang, Ling-Ling Li
Format: Article
Language:English
Published: SAGE Publishing 2020-09-01
Series:Energy Exploration & Exploitation
Online Access:https://doi.org/10.1177/0144598720911724
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spelling doaj-23a90323d2a24827ad171a1446a94f9f2020-11-25T04:03:18ZengSAGE PublishingEnergy Exploration & Exploitation0144-59872048-40542020-09-013810.1177/0144598720911724Life prediction of lithium-ion battery based on a hybrid modelXu-Dong ChenHai-Yue YangJhang-Shang WunChing-Hsin WangLing-Ling LiLithium battery is a new energy equipment. Because of its long service life and high energy density, it is widely used in various industries. However, as the number of uses increases, the life of the energy battery gradually decreases. Aging of battery will bring security risks to energy storage system. Through the life prediction of energy lithium battery, the health status of energy battery is assessed, so as to improve the safety of energy storage system. Therefore, a hybrid model is proposed to predict the life of the energy lithium battery. The lithium-ion battery capacity data are always divided into two scales, which are predicted by extreme learning machine and support vector machine model. The energy lithium-ion battery capacity attenuation data were obtained through experiments. The original signal is decomposed into five layers by using the wavelet basis function to denoise the signal. Finally, the denoised signal is synthesized. The noise reduction effect of each wavelet was analyzed. The analysis results show that the mean square error value of the Haar wavelet is 5.31e-28, which indicates that the Haar wavelet has the best noise reduction effect. Finally, the combined model was tested by using two sets of experiments. The prediction results of the combined model are compared with those of the single model. The test results show that the prediction results of the combined model are better than the single model for either experiment 1 or experiment 2. Experiment 1 indicated the root mean square error values are 29.58 and 79.68% smaller than the root mean square error values of extreme learning machine and support vector machine. The model proposed in this study has positive significance for the safety improvement of energy storage system and can promote the development and utilization of energy resources.https://doi.org/10.1177/0144598720911724
collection DOAJ
language English
format Article
sources DOAJ
author Xu-Dong Chen
Hai-Yue Yang
Jhang-Shang Wun
Ching-Hsin Wang
Ling-Ling Li
spellingShingle Xu-Dong Chen
Hai-Yue Yang
Jhang-Shang Wun
Ching-Hsin Wang
Ling-Ling Li
Life prediction of lithium-ion battery based on a hybrid model
Energy Exploration & Exploitation
author_facet Xu-Dong Chen
Hai-Yue Yang
Jhang-Shang Wun
Ching-Hsin Wang
Ling-Ling Li
author_sort Xu-Dong Chen
title Life prediction of lithium-ion battery based on a hybrid model
title_short Life prediction of lithium-ion battery based on a hybrid model
title_full Life prediction of lithium-ion battery based on a hybrid model
title_fullStr Life prediction of lithium-ion battery based on a hybrid model
title_full_unstemmed Life prediction of lithium-ion battery based on a hybrid model
title_sort life prediction of lithium-ion battery based on a hybrid model
publisher SAGE Publishing
series Energy Exploration & Exploitation
issn 0144-5987
2048-4054
publishDate 2020-09-01
description Lithium battery is a new energy equipment. Because of its long service life and high energy density, it is widely used in various industries. However, as the number of uses increases, the life of the energy battery gradually decreases. Aging of battery will bring security risks to energy storage system. Through the life prediction of energy lithium battery, the health status of energy battery is assessed, so as to improve the safety of energy storage system. Therefore, a hybrid model is proposed to predict the life of the energy lithium battery. The lithium-ion battery capacity data are always divided into two scales, which are predicted by extreme learning machine and support vector machine model. The energy lithium-ion battery capacity attenuation data were obtained through experiments. The original signal is decomposed into five layers by using the wavelet basis function to denoise the signal. Finally, the denoised signal is synthesized. The noise reduction effect of each wavelet was analyzed. The analysis results show that the mean square error value of the Haar wavelet is 5.31e-28, which indicates that the Haar wavelet has the best noise reduction effect. Finally, the combined model was tested by using two sets of experiments. The prediction results of the combined model are compared with those of the single model. The test results show that the prediction results of the combined model are better than the single model for either experiment 1 or experiment 2. Experiment 1 indicated the root mean square error values are 29.58 and 79.68% smaller than the root mean square error values of extreme learning machine and support vector machine. The model proposed in this study has positive significance for the safety improvement of energy storage system and can promote the development and utilization of energy resources.
url https://doi.org/10.1177/0144598720911724
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AT haiyueyang lifepredictionoflithiumionbatterybasedonahybridmodel
AT jhangshangwun lifepredictionoflithiumionbatterybasedonahybridmodel
AT chinghsinwang lifepredictionoflithiumionbatterybasedonahybridmodel
AT linglingli lifepredictionoflithiumionbatterybasedonahybridmodel
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