Data-driven battery degradation prediction: Forecasting voltage-capacity curves using one-cycle data

Jinpeng Tian, Rui Xiong*, Weixiang Shen, Jiahuan Lu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

24 Citations (Scopus)

Abstract

With the wide deployment of rechargeable batteries, battery degradation prediction has emerged as a challenging issue. However, battery life defined by capacity loss provides limited information regarding battery degradation. In this article, we explore the prediction of voltage-capacity curves over battery lifetime based on a sequence to sequence (seq2seq) model. We demonstrate that the data of one present voltage-capacity curve can be used as the input of the seq2seq model to accurately predict the voltage-capacity curves at 100, 200, and 300 cycles ahead. This offers an opportunity to update battery management strategies in response to the predicted consequences. Besides, the model avoids feature engineering and is flexible to incorporate different numbers of input and output cycles. Therefore, it can be easily transplanted to other battery systems or electrochemical components. Furthermore, the model features data generation, that is, we can use the data of only one cycle to generate a large spectrum of aging data at the future cycles for developing other battery diagnosis or prognosis methods. In this way, the time and energy consuming battery degradation tests can be sharply reduced. (Figure presented.).

Original languageEnglish
Article numbere12213
JournalEcoMat
Volume4
Issue number5
DOIs
Publication statusPublished - Sept 2022

Keywords

  • aging prognosis
  • battery degradation
  • deep learning

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