TY - GEN
T1 - High-Risk Electric Vehicle Identification Based on Logistic Regression
AU - Li, Xuan
AU - Ci, Marvin
AU - Huang, Shengxu
AU - Lin, Ni
AU - Chen, Shuaiheng
AU - Wen, Shuang
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - As the primary energy storage component in electric vehicles, the reliability of lithium-ion batteries is of paramount importance. Identifying high-risk vehicles is crucial to ensure the safety of electric vehicles and their users. Traditional fault diagnosis methods predominantly depend on the real-time collection of battery status parameters by the onboard Battery Management System (BMS) to facilitate diagnostics and trigger alert notifications. However, these approaches suffer from inherent latency issues and have limited ability in predicting potential risks. Furthermore, existing methods for extracting the features of risks and utilizing big data techniques for fault diagnosis have not established precise classification boundaries. To overcome these limitations, this paper introduces an innovative fault diagnosis approach, which entails modeling of various abnormal battery behaviors, followed by the creation of precise mathematical expressions to quantitatively represent each of these risk behaviors. Subsequently, leveraging actual operational data from electric vehicles collected by the National Monitoring and Management Center for New Energy Vehicle (NMMCNEV), this study employs advanced machine learning algorithms, such as Logistic Regression algorithm, to calculate customized risk factors for real vehicles and optimize the parameters of a multi-feature input model. Validation results confirm the feasibility and robustness of the proposed fault diagnosis method, indicating its capability to complement traditional fault diagnosis approaches.
AB - As the primary energy storage component in electric vehicles, the reliability of lithium-ion batteries is of paramount importance. Identifying high-risk vehicles is crucial to ensure the safety of electric vehicles and their users. Traditional fault diagnosis methods predominantly depend on the real-time collection of battery status parameters by the onboard Battery Management System (BMS) to facilitate diagnostics and trigger alert notifications. However, these approaches suffer from inherent latency issues and have limited ability in predicting potential risks. Furthermore, existing methods for extracting the features of risks and utilizing big data techniques for fault diagnosis have not established precise classification boundaries. To overcome these limitations, this paper introduces an innovative fault diagnosis approach, which entails modeling of various abnormal battery behaviors, followed by the creation of precise mathematical expressions to quantitatively represent each of these risk behaviors. Subsequently, leveraging actual operational data from electric vehicles collected by the National Monitoring and Management Center for New Energy Vehicle (NMMCNEV), this study employs advanced machine learning algorithms, such as Logistic Regression algorithm, to calculate customized risk factors for real vehicles and optimize the parameters of a multi-feature input model. Validation results confirm the feasibility and robustness of the proposed fault diagnosis method, indicating its capability to complement traditional fault diagnosis approaches.
KW - Customized Risk Factors
KW - Electric Vehicles
KW - Fault Diagnosis
KW - Lithium-ion Battery
KW - Logistic Regression
UR - http://www.scopus.com/inward/record.url?scp=85187360185&partnerID=8YFLogxK
U2 - 10.1109/ICEACE60673.2023.10442516
DO - 10.1109/ICEACE60673.2023.10442516
M3 - Conference contribution
AN - SCOPUS:85187360185
T3 - 2023 IEEE International Conference on Electrical, Automation and Computer Engineering, ICEACE 2023
SP - 104
EP - 108
BT - 2023 IEEE International Conference on Electrical, Automation and Computer Engineering, ICEACE 2023
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2023 IEEE International Conference on Electrical, Automation and Computer Engineering, ICEACE 2023
Y2 - 29 December 2023 through 31 December 2023
ER -