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In-situ battery life prognostics amid mixed operation conditions using physics-driven machine learning

  • Yongzhi Zhang*
  • , Xinhong Feng
  • , Mingyuan Zhao
  • , Rui Xiong*
  • *Corresponding author for this work
  • Chongqing University

Research output: Contribution to journalArticlepeer-review

Abstract

Accurately predicting in-situ battery life is critical to evaluate the system's reliability and residual value. The high complexity of battery aging evolution under variable conditions makes it a great challenge. We extract 6 physical features from voltage relaxation data to indicate battery performance fading, and then use data-driven techniques to predict battery life without considering any usage information. The model performance is validated against a dataset of 74 cells involving three battery types under mixed operation conditions. Experimental results show that battery lives are predicted accurately with the root-mean-squared-errors and mean absolute percentage errors being, respectively, generally less than 60 cycles and 10%. And the battery lives are classified quickly with the accuracies larger than 90%. This high prediction accuracy is maintained when only 6 sampling points taking 3–12 min are used. This work highlights the promise of using physics-driven machine learning to predict the behavior of complex systems under variable conditions.

Original languageEnglish
Article number233246
JournalJournal of Power Sources
Volume577
DOIs
Publication statusPublished - 1 Sept 2023

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 7 - Affordable and Clean Energy
    SDG 7 Affordable and Clean Energy

Keywords

  • Equivalent circuit model
  • Life prediction and classification
  • Machine learning
  • Mixed operation conditions
  • Physical features extraction
  • Voltage relaxation

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