TY - JOUR
T1 - Battery Safety Risk Assessment in Real-World Electric Vehicles Based on Abnormal Internal Resistance Using Proposed Robust Estimation Method and Hybrid Neural Networks
AU - Li, Da
AU - Deng, Junjun
AU - Zhang, Zhaosheng
AU - Wang, Zhenpo
AU - Zhou, Litao
AU - Liu, Peng
N1 - Publisher Copyright:
© 1986-2012 IEEE.
PY - 2023/6/1
Y1 - 2023/6/1
N2 - Battery safety issue is developing as one of the main hinders restricting the further application of real-world electric vehicles (EVs). Internal resistance (IR) is one of the important parameters to reflect battery safety, because bigger abnormal IR will cause more heat generation and make the battery easier to cross the critical condition of thermal runway. Safety risk assessment based on abnormal IR can locate these kind unsafe batteries and ensure the safe operation of EVs. In this regard, a method is proposed to detect unsafe battery, thereby predicting the thermal runaway. The method can be divided into three parts, i.e., IR estimation, normal IR prediction, and IR evolution law construction and safety risk assessment. First, we propose a robust method to estimate the IR only based on sparse voltage and current. Second, a novel hybrid neural network model is designed and trained to predict normal IRs inputted by temperature, mileage, and state-of-charge. The model combines the advantages of different neural network structures to improve the performance. Finally, the safety boundary indicated by IR is formed and the IR evolution law is constructed, then a strategy is proposed to make residual evaluation for safety risk assessment. All the proposed methods are driven by EV historical data to reflect real-world conditions. The method is effective for the small IR prediction error with the mean-relative-error of 1.78%. In addition, the method can periodically classify the unsafe and normal batteries with 98.6% accuracy for the EVs with the same specification.
AB - Battery safety issue is developing as one of the main hinders restricting the further application of real-world electric vehicles (EVs). Internal resistance (IR) is one of the important parameters to reflect battery safety, because bigger abnormal IR will cause more heat generation and make the battery easier to cross the critical condition of thermal runway. Safety risk assessment based on abnormal IR can locate these kind unsafe batteries and ensure the safe operation of EVs. In this regard, a method is proposed to detect unsafe battery, thereby predicting the thermal runaway. The method can be divided into three parts, i.e., IR estimation, normal IR prediction, and IR evolution law construction and safety risk assessment. First, we propose a robust method to estimate the IR only based on sparse voltage and current. Second, a novel hybrid neural network model is designed and trained to predict normal IRs inputted by temperature, mileage, and state-of-charge. The model combines the advantages of different neural network structures to improve the performance. Finally, the safety boundary indicated by IR is formed and the IR evolution law is constructed, then a strategy is proposed to make residual evaluation for safety risk assessment. All the proposed methods are driven by EV historical data to reflect real-world conditions. The method is effective for the small IR prediction error with the mean-relative-error of 1.78%. In addition, the method can periodically classify the unsafe and normal batteries with 98.6% accuracy for the EVs with the same specification.
KW - Battery safety
KW - electric vehicle (EV)
KW - internal resistance (IR)
KW - lithium-ion battery
KW - neural networks
KW - thermal runaway
UR - http://www.scopus.com/inward/record.url?scp=85148439897&partnerID=8YFLogxK
U2 - 10.1109/TPEL.2023.3241938
DO - 10.1109/TPEL.2023.3241938
M3 - Article
AN - SCOPUS:85148439897
SN - 0885-8993
VL - 38
SP - 7661
EP - 7673
JO - IEEE Transactions on Power Electronics
JF - IEEE Transactions on Power Electronics
IS - 6
ER -