Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods

As the installed energy storage stations increase year by year, the safety of energy storage batteries has attracted the attention of industry and academia. In this work, an intelligent fault diagnosis scheme for series-connected battery packs based on wavelet characteristics of battery voltage corr...

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Main Authors: Sen Yang, Boran Xu, Hanlin Peng
Format: Article
Language:English
Published: MDPI AG 2022-05-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/11/9/1494
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author Sen Yang
Boran Xu
Hanlin Peng
author_facet Sen Yang
Boran Xu
Hanlin Peng
author_sort Sen Yang
collection DOAJ
description As the installed energy storage stations increase year by year, the safety of energy storage batteries has attracted the attention of industry and academia. In this work, an intelligent fault diagnosis scheme for series-connected battery packs based on wavelet characteristics of battery voltage correlations is designed. First, the cross-cell voltages of multiple cells are preprocessed using an improved recursive Pearson correlation coefficient to capture the abnormal electrical signals. Secondly, the wavelet packet decomposition is applied to the coefficient series to obtain fault-related features from wavelet sub-bands, and the most representative characteristic principal components are extracted. Finally, the artificial neural network (ANN) and multi-classification relevance vector machine (mRVM) are employed to classify and evaluate fault mode and fault degree, respectively. Physical injection of external and internal short circuits, thermal damage, and loose connection failure is carried out to collect real fault data for model training and method validation. Experimental results show that the proposed method can effectively detect and locate different faults using the extracted fault features; mRVM is better than ANN in thermal fault diagnosis, while the overall diagnosis performance of ANN is better than mRVM. The success rates of fault isolation are 82% and 81%, and the success rates of fault grading are 98% and 90%, by ANN and mRVM, respectively.
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spelling doaj.art-b1952d00987541d19fbd5d66c08a77122023-11-23T08:04:23ZengMDPI AGElectronics2079-92922022-05-01119149410.3390/electronics11091494Isolation and Grading of Faults in Battery Packs Based on Machine Learning MethodsSen Yang0Boran Xu1Hanlin Peng2System Engineering Research Institute of China State Shipbuilding Co., Ltd., Beijing 100036, ChinaSystem Engineering Research Institute of China State Shipbuilding Co., Ltd., Beijing 100036, ChinaDepartment of Mechanical Engineering, North China Electric Power University, Baoding 071003, ChinaAs the installed energy storage stations increase year by year, the safety of energy storage batteries has attracted the attention of industry and academia. In this work, an intelligent fault diagnosis scheme for series-connected battery packs based on wavelet characteristics of battery voltage correlations is designed. First, the cross-cell voltages of multiple cells are preprocessed using an improved recursive Pearson correlation coefficient to capture the abnormal electrical signals. Secondly, the wavelet packet decomposition is applied to the coefficient series to obtain fault-related features from wavelet sub-bands, and the most representative characteristic principal components are extracted. Finally, the artificial neural network (ANN) and multi-classification relevance vector machine (mRVM) are employed to classify and evaluate fault mode and fault degree, respectively. Physical injection of external and internal short circuits, thermal damage, and loose connection failure is carried out to collect real fault data for model training and method validation. Experimental results show that the proposed method can effectively detect and locate different faults using the extracted fault features; mRVM is better than ANN in thermal fault diagnosis, while the overall diagnosis performance of ANN is better than mRVM. The success rates of fault isolation are 82% and 81%, and the success rates of fault grading are 98% and 90%, by ANN and mRVM, respectively.https://www.mdpi.com/2079-9292/11/9/1494battery fault diagnosisrecursive correlation coefficientartificial neural networkrelevance vector machine
spellingShingle Sen Yang
Boran Xu
Hanlin Peng
Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods
Electronics
battery fault diagnosis
recursive correlation coefficient
artificial neural network
relevance vector machine
title Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods
title_full Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods
title_fullStr Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods
title_full_unstemmed Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods
title_short Isolation and Grading of Faults in Battery Packs Based on Machine Learning Methods
title_sort isolation and grading of faults in battery packs based on machine learning methods
topic battery fault diagnosis
recursive correlation coefficient
artificial neural network
relevance vector machine
url https://www.mdpi.com/2079-9292/11/9/1494
work_keys_str_mv AT senyang isolationandgradingoffaultsinbatterypacksbasedonmachinelearningmethods
AT boranxu isolationandgradingoffaultsinbatterypacksbasedonmachinelearningmethods
AT hanlinpeng isolationandgradingoffaultsinbatterypacksbasedonmachinelearningmethods