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Optimized deep learning strategy for estimation of state of charge at different C-rate with varying temperature

  • 13-07-2023
  • Original Paper
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Abstract

The article discusses the critical role of lithium-ion batteries in reducing greenhouse gas emissions by transitioning to electric vehicles. It highlights the challenges in accurately estimating the state of charge (SoC) due to temperature and C-rate variations. The proposed optimized deep learning strategy, combining Bayesian optimization and bidirectional LSTM, addresses these challenges by improving SoC estimation accuracy. The method considers the impact of internal resistance and temperature on SoC, reducing estimation errors to as low as 0.3199%. The study compares the proposed approach with conventional methods, demonstrating its superior performance in maintaining battery health and longevity. The article offers a comprehensive analysis of the proposed method's effectiveness through detailed results and discussions, making it a valuable resource for professionals in the field.

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Title
Optimized deep learning strategy for estimation of state of charge at different C-rate with varying temperature
Authors
Pooja Kumari
Ashutosh Kumar Singh
Niranjan Kumar
Publication date
13-07-2023
Publisher
Springer Berlin Heidelberg
Published in
Electrical Engineering / Issue 6/2023
Print ISSN: 0948-7921
Electronic ISSN: 1432-0487
DOI
https://doi.org/10.1007/s00202-023-01925-0
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