LAPSE:2023.34352
Published Article
LAPSE:2023.34352
A LSTM-STW and GS-LM Fusion Method for Lithium-Ion Battery RUL Prediction Based on EEMD
Ling Mao, Jie Xu, Jiajun Chen, Jinbin Zhao, Yuebao Wu, Fengjun Yao
April 25, 2023
Abstract
To address inaccurate prediction in remaining useful life (RUL) in current Lithium-ion batteries, this paper develops a Long Short-Term Memory Network, Sliding Time Window (LSTM-STW) and Gaussian or Sine function, Levenberg-Marquardt algorithm (GS-LM) fusion batteries RUL prediction method based on ensemble empirical mode decomposition (EEMD). Firstly, EEMD is used to decompose the original data into high-frequency and low-frequency components. Secondly, LSTM-STW and GS-LM are used to predict the high-frequency and low-frequency components, respectively. Finally, the LSTM-STW and GS-LM prediction results are effectively integrated in order to obtain the final prediction of the lithium-ion battery RUL results. This article takes the lithium-ion battery data published by NASA as input. The experimental results show that the method has higher accuracy, including the phenomenon of sudden capacity increase, and is less affected by the prediction starting point. The performance of the proposed method is better than other typical battery RUL prediction methods.
Keywords
capacity sudden increase, EEMD, GS-LM, higher accuracy, lithium-ion battery, LSTM-STW, prediction starting point, RUL prediction
Suggested Citation
Mao L, Xu J, Chen J, Zhao J, Wu Y, Yao F. A LSTM-STW and GS-LM Fusion Method for Lithium-Ion Battery RUL Prediction Based on EEMD. (2023). LAPSE:2023.34352
Author Affiliations
Mao L: School of Electrical Engineering, Shanghai University of Electric Power, No. 2588, Changyang Road, Yangpu District, Shanghai 200090, China
Xu J: School of Electrical Engineering, Shanghai University of Electric Power, No. 2588, Changyang Road, Yangpu District, Shanghai 200090, China
Chen J: Pegasus Power Energy Co., Ltd., Hangzhou 310019, China
Zhao J: School of Electrical Engineering, Shanghai University of Electric Power, No. 2588, Changyang Road, Yangpu District, Shanghai 200090, China
Wu Y: School of Electrical Engineering, Shanghai University of Electric Power, No. 2588, Changyang Road, Yangpu District, Shanghai 200090, China
Yao F: School of Automation, Shanghai University of Electric Power, No.2588, Changyang Road, Yangpu District, Shanghai 200090, China
Journal Name
Energies
Volume
13
Issue
9
Article Number
E2380
Year
2020
Publication Date
2020-05-09
ISSN
1996-1073
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Original Submission
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PII: en13092380, Publication Type: Journal Article
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LAPSE:2023.34352
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https://doi.org/10.3390/en13092380
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Apr 25, 2023
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