Authors
Zhongwei Deng, Le Xu, Hongao Liu, Xiaosong Hu, Zhixuan Duan, Yu Xu
Publication date
2023/6/1
Journal
Applied Energy
Volume
339
Pages
120954
Publisher
Elsevier
Description
The large-scale application of lithium-ion batteries makes it urgent to accurately predict their capacity degradation so as to achieve timely maintenance and second-life utilization. For on-road electric vehicles (EVs), due to limitation of battery management system in measurement and computing power, it is still a tricky challenge to accurately predict the capacity of battery pack. To this end, a battery capacity prognostic method based on charging data and data-driven algorithms is proposed in this paper. First, battery capacity is calculated based on a variant of Ampere integral formula, and statistical values of the capacity during a month are regarded as labeled capacity to reduce errors. Then, statistical characteristics of battery charging data are extracted, and correlation analysis and feature selection are conducted to determine optimal feature sets. Moreover, a sequence-to-sequence (Seq2Seq) model is employed to …
Total citations