Biomedical Engineering Department, College of Engineering, University of Warith Al-Anbiyaa, Karbala, Iraq and Computer Science Department, College of Computer Science and Information Technology, University of Kerbala, Iraq.
Department of Computing Technologies, School of Computing, SRM Institute of Science and Technology, Kattankolathur. Chennai, 603203, Tamil Nadu, India.
The last decade has seen a significant rise in the adoption and development of Electric Vehicles (EVs), driven by environmental concerns, technological advancements, and governmental support. Batteries, central to EVs, have witnessed groundbreaking innovations in terms of energy density, charging speeds, and longevity. Expanding charging infrastructure and the automotive industry's investment in EV research have made them more mainstream. Effective Battery Management (BM), which includes monitoring essential parameters and thermal management, is critical for the longevity and reliability of EVs. Accurate charge prediction, in particular, aids in trip planning, reduces range anxiety and facilitates cost-effective charging coordinated with dynamic electricity pricing. Traditional models like linear regression and Autor-Rgressive Integrated Moving Average (ARIMA) have been standard for EV battery charge prediction. However, these often struggle with the dynamic nature of EV charging data. Even models like the vanilla Long Short-Term Memory (LSTM), which are adept at recognizing long-term patterns, require meticulous hyperparameter tuning. This work introduces the DWT-DE-LSTM model, which utilizes the Discrete Wavelet Transform (DWT) to dissect battery charging data at different resolutions and a Differential Evolution (DE) strategy for model optimization. Tests using the Panasonic 18650PF Li-ion Battery Dataset revealed the superior efficacy of the DWT-DE-LSTM model, emphasizing its suitability for real-world battery charge prediction.
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Senthil Raja M
Senthil Raja M
Department of Computing Technologies, School of Computing, SRM Institute of Science and Technology, Kattankolathur. Chennai, 603203, Tamil Nadu, India.
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Alfredo Tumi Figueroa, Hayder M. A. Ghanimi, Senthil Raja M, Shamia D, Samrat Ray and Jorge Ramos Surco, “Using Optimized Long Short-Term Memory for Time Series Forecasting of Electric Vehicles Battery Charging”, Journal of Machine and Computing, pp. 011-020, January 2024. doi: 10.53759/7669/jmc202404002.