Long‐Term Estimation of SoH Using Cascaded LSTM ‐ RNN for Lithium Batteries Subjected to Aging and Accelerated Degradation

Accurate estimation of state of health (SoH) of the battery over long‐term is a critical challenge for the battery management systems in electric vehicles. This is due to the challenges in accurately modeling the accelerated aging and degradation phenomena caused by diverse operating conditions of t...

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Veröffentlicht in:Energy storage (Hoboken, N.J. : 2019) N.J. : 2019), 2024-12, Vol.6 (8)
Hauptverfasser: Bharath, Y. K., Anandu, V. P., Vinatha, U., Sudeep, Shetty
Format: Artikel
Sprache:eng
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Zusammenfassung:Accurate estimation of state of health (SoH) of the battery over long‐term is a critical challenge for the battery management systems in electric vehicles. This is due to the challenges in accurately modeling the accelerated aging and degradation phenomena caused by diverse operating conditions of the battery. This paper presents a cascaded recurrent neural networks (RNN) with long short‐term memory (LSTM) to estimate the internal resistance and SoH, taking account of various abnormal operating conditions of the battery. A datasheet‐based degradation model of the battery is developed using fade equations. The training and validation data set for LSTM‐RNN are generated by subjecting the battery model to various factors that cause accelerated degradation, such as fast charging, varying operating temperatures, overutilization, and cell imbalance. The cascaded LSTM‐RNN is trained to estimate SoH only once after the completion of every charge–discharge cycle. The training error index parameters of the proposed SoH estimator are well within 1%, demonstrating the reliability and robustness of the estimator to diverse operating conditions of the battery.
ISSN:2578-4862
2578-4862
DOI:10.1002/est2.70066