Energies, Vol. 18, Pages 5617: Lithium-Ion Battery SOH Prediction Method Based on ICEEMDAN+FC-BiLSTM

Energies, Vol. 18, Pages 5617: Lithium-Ion Battery SOH Prediction Method Based on ICEEMDAN+FC-BiLSTM

Energies doi: 10.3390/en18215617

Authors:
Xiangdong Meng
Haifeng Zhang
Haitao Lan
Sheng Cui
Yiyi Huang
Gang Li
Yunchang Dong
Shuyu Zhou

Driven by the rapid promotion of new energy technologies, lithium-ion batteries have found broad applications. Accurate prediction of their state of health (SOH) plays a critical role in ensuring safe and reliable battery management. This study presents a hybrid SOH prediction method for lithium-ion batteries by combining improved complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) and a fully connected bidirectional long short-term memory network (FC-BiLSTM). ICEEMDAN is applied to extract multi-scale features and suppress noise, while the FC-BiLSTM integrates feature mapping with temporal modeling for accurate prediction. Using end-of-discharge time, charging capacity, and historical capacity averages as inputs, the method is validated on the NASA dataset and laboratory aging data. Results show RMSE values below 0.012 and over 15% improvement compared with BiLSTM-based benchmarks, highlighting the proposed method’s accuracy, robustness, and potential for online SOH prediction in electric vehicle battery management systems.

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