Frontiers in Energy Research (Mar 2024)

Application of machine learning in ultrasonic diagnostics for prismatic lithium-ion battery degradation evaluation

  • Qiying Wang,
  • Da Song,
  • Da Song,
  • Xingyang Lin,
  • Xingyang Lin,
  • Hanghui Wu,
  • Hang Shen

DOI
https://doi.org/10.3389/fenrg.2024.1379408
Journal volume & issue
Vol. 12

Abstract

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Lithium-ion batteries are essential for electrochemical energy storage, yet they undergo progressive aging during operational lifespan. Consequently, precise estimation of their state of health (SOH) is crucial for effective and safe operation of energy storage systems. This paper investigates the viability of ultrasound-based methods for assessing the SOH of prismatic lithium-ion batteries. In the experimental framework, a designated prismatic lithium-ion battery was subjected to numerous charging and discharging cycles using a battery cycling system. Subsequently, ultrasonic detection experiments were conducted to record the waveforms of the transmitted and received signals. These signals were then processed through wavelet transforms to extract signal amplitude and time-of-flight data. To analyse these data, we applied four algorithms: linear regression, support vector machines, Gaussian process regression, and neural networks. The predictive performance of each algorithm was evaluated through extensive experimentation and analysis. The combination of ultrasonic signals with computational models has emerged as a robust technique for precise battery degradation assessment, suggesting its potential as a standard in battery health evaluation methods.

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