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A critical review of improved deep convolutional neural network for multi-timescale state prediction of lithium-ion batteries.

Wang, Shunli; Ren, Pu; Takyi-Aninakwa, Paul; Jin, Siyu; Fernandez, Carlos

Authors

Shunli Wang

Pu Ren

Paul Takyi-Aninakwa

Siyu Jin



Abstract

Lithium-ion batteries are widely used as effective energy storage and have become the main component of power supply systems. Accurate battery state prediction is key to ensuring reliability and has significant guidance for optimizing the performance of battery power systems and replacement. Due to the complex and dynamic operations of lithium-ion batteries, the state parameters change with either the working condition or the aging process. The accuracy of online state prediction is difficult to improve, which is an urgent issue that needs to be solved to ensure a reliable and safe power supply. Currently, with the emergence of artificial intelligence (AI), battery state prediction methods based on data-driven methods have high precision and robustness to improve state prediction accuracy. The demanding characteristics of test time are reduced, and this has become the research focus in the related fields. Therefore, the convolutional neural network (CNN) was improved in the data modeling process to establish a deep convolutional neural network ensemble transfer learning (DCNN-ETL) method, which plays a significant role in battery state prediction. This paper reviews and compares several mathematical DCNN models. The key features are identified on the basis of the modeling capability for the state prediction. Then, the prediction methods are classified on the basis of the identified features. In the process of deep learning (DL) calculation, specific criteria for evaluating different modeling accuracy levels are defined. The identified features of the state prediction model are taken advantage of to give relevant conclusions and suggestions. The DCNN-ETL method is selected to realize the reliable state prediction of lithium-ion batteries.

Citation

WANG, S., REN, P., TAKYI-ANINAKWA, P., JIN, S. and FERNANDEZ, C. 2022. A critical review of improved deep convolutional neural network for multi-timescale state prediction of lithium-ion batteries. Energies [online], 15(14), article 5053. Available from: https://doi.org/10.3390/en15145053

Journal Article Type Article
Acceptance Date Jul 5, 2022
Online Publication Date Jul 11, 2022
Publication Date Jul 31, 2022
Deposit Date Jul 22, 2022
Publicly Available Date Jul 22, 2022
Journal Energies
Electronic ISSN 1996-1073
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 15
Issue 14
Article Number 5053
DOI https://doi.org/10.3390/en15145053
Keywords Lithium-ion battery; State prediction; Artificial intelligence; Deep convolutional neural network; Feature identification; Ensemble transfer learning
Public URL https://rgu-repository.worktribe.com/output/1713194
Additional Information The data presented in this study are openly available on Reaserchgate:
https://www.researchgate.net/project/Battery-life-test and https://www.researchgate.net/project/Whole-Life-Cycle-Test

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