TY - JOUR
T1 - Fault Diagnosis and Detection for Battery System in Real-World Electric Vehicles Based on Long-Term Feature Outlier Analysis
AU - Li, Xiaoyu
AU - Gao, Xiao
AU - Zhang, Zhaosheng
AU - Chen, Qiping
AU - Wang, Zhenpo
N1 - Publisher Copyright:
© 2015 IEEE.
PY - 2024/3/1
Y1 - 2024/3/1
N2 - Accurate detection and diagnosis battery faults are increasingly important to guarantee safety and reliability of battery systems. Developed methods for battery early fault diagnosis concentrate on short-term data to analyze the deviation of external features without considering the long-term latent period of faults. This work proposes a novel data-driven method to detect long-term latent fault and abnormality for electric vehicles (EVs) based on real-world operation data. Specifically, the battery fault features are extracted from the incremental capacity (IC) curves, which are smoothed by advanced filter algorithms. Second, principal component analysis (PCA) algorithm is utilized to reduce dimensionality, and the cumulative percent variance (CPV) is to determine the number of significant features. Based on the features, a cluster algorithm is employed to capture the battery potential failure information. Moreover, the cumulative root-mean-square deviation is introduced to quantificationally analyze the degree of the battery failures using large-scale battery data to avoid the missing fault reports using short-term data. In addition, a battery system failure index is proposed to evaluate battery fault conditions. The results indicate that the proposed long-term feature analysis method can effectively detect and diagnose faults.
AB - Accurate detection and diagnosis battery faults are increasingly important to guarantee safety and reliability of battery systems. Developed methods for battery early fault diagnosis concentrate on short-term data to analyze the deviation of external features without considering the long-term latent period of faults. This work proposes a novel data-driven method to detect long-term latent fault and abnormality for electric vehicles (EVs) based on real-world operation data. Specifically, the battery fault features are extracted from the incremental capacity (IC) curves, which are smoothed by advanced filter algorithms. Second, principal component analysis (PCA) algorithm is utilized to reduce dimensionality, and the cumulative percent variance (CPV) is to determine the number of significant features. Based on the features, a cluster algorithm is employed to capture the battery potential failure information. Moreover, the cumulative root-mean-square deviation is introduced to quantificationally analyze the degree of the battery failures using large-scale battery data to avoid the missing fault reports using short-term data. In addition, a battery system failure index is proposed to evaluate battery fault conditions. The results indicate that the proposed long-term feature analysis method can effectively detect and diagnose faults.
KW - Battery management system
KW - density-based spatial clustering of applications with noise (DBSCAN) cluster
KW - electric vehicles (EVs)
KW - fault diagnosis
UR - http://www.scopus.com/inward/record.url?scp=85162849738&partnerID=8YFLogxK
U2 - 10.1109/TTE.2023.3288394
DO - 10.1109/TTE.2023.3288394
M3 - Article
AN - SCOPUS:85162849738
SN - 2332-7782
VL - 10
SP - 1668
EP - 1679
JO - IEEE Transactions on Transportation Electrification
JF - IEEE Transactions on Transportation Electrification
IS - 1
ER -