Litcius/Paper detail

Accurate and adaptive state of health estimation for lithium-ion battery based on patch learning framework

Yuyao Li, Xiangwen Zhang, Ziyang Li, Xudong Li, Gengfeng Liu, Wei Gao

2025Measurement11 citationsDOIOpen Access PDF

Abstract

To solve the low accuracy and adaptivity of state of health (SOH) estimation for lithium-ion batteries, a patch learning framework is proposed in this paper. The global model and the patch model are adaptively combined to improve the adaptability and local tracking ability of SOH estimation. The gate recurrent unit model is selected as the global model for its global description capability, and the convolutional neural network-bidirectional long short-term memory model is chosen as the patch model for its local tracking capability. With the global and patch models, the patch learning model is developed by searching the patch segments until the error is below the allowable value. The proposed method is evaluated and compared with some existing methods on our battery aging dataset and public dataset. The experimental results show that the RMSE of the proposed method for all cells is within 0.72%, the MAE is within 0.59% and the MAPE is within 0.66%, and it has the highest accuracy and the best generalization performance compared with GRU, CNN-BiLSTM, SVR, ELM and LSTM methods.

Topics & Concepts

EstimationBattery (electricity)State of healthComputer scienceLithium-ion batteryState (computer science)Lithium (medication)Machine learningArtificial intelligenceEngineeringMedicineAlgorithmPhysicsSystems engineeringPower (physics)Internal medicineQuantum mechanicsAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsFault Detection and Control Systems