A CNN-LSTM Method Based on Voltage Deviation for Predicting the State of Health of Lithium-Ion Batteries

Fen Xiao , Wei Yang , Yanhuai Ding , Xiang Li , Kehang Zhang , Jiaxiong Liu

Battery Energy ›› 2025, Vol. 4 ›› Issue (3) : e20240036

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Battery Energy ›› 2025, Vol. 4 ›› Issue (3) : e20240036 DOI: 10.1002/bte2.20240036
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A CNN-LSTM Method Based on Voltage Deviation for Predicting the State of Health of Lithium-Ion Batteries

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Abstract

Ensuring the accurate estimation of the state of health (SOH) of lithium-ion batteries (LIBs) is essential for the reliability and safe operation of battery management systems. The prediction of SOH has witnessed significant advancements recently, largely propelled by the powerful nonlinear modeling capabilities of deep learning. Despite these advancements, the intricate nature of the battery degradation process poses a challenge in accurately simulating it using measurement data. In this paper, we introduce a novel approach by focusing on the charging voltage deviation, which is defined as the discrepancy between the charging voltage and its average value over each charge/discharge cycle. This deviation is rooted in the electrochemical reactions that lead to capacity decay and voltage fluctuations. We propose a convolutional neural network-long short-term memory (CNN-LSTM) hybrid framework aimed at estimating the SOH of the battery. For each charge/discharge cycle, a conventional CNN is employed to extract key capacity features from sequential charging data, encompassing voltage deviation, current, and charging duration. Following this, an LSTM network is leveraged to build the long-term dependencies of battery capacities, facilitating the SOH prediction process. The experimental results indicate that our model not only simplifies the computational complexity but also significantly enhances the precision of SOH predictions. This innovative approach holds promise for the advancement of battery management systems, ensuring their continued reliability and safety.

Keywords

CNN-LSTM hybrid framework / LIBs / SOH / voltage

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Fen Xiao, Wei Yang, Yanhuai Ding, Xiang Li, Kehang Zhang, Jiaxiong Liu. A CNN-LSTM Method Based on Voltage Deviation for Predicting the State of Health of Lithium-Ion Batteries. Battery Energy, 2025, 4(3): e20240036 DOI:10.1002/bte2.20240036

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2024 The Author(s). Battery Energy published by Xijing University and John Wiley & Sons Australia, Ltd.

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