Improve in-situ life prediction and classification performance by capturing both the present state and evolution rate of battery aging
Mingyuan Zhao, Yongzhi Zhang

TL;DR
This paper introduces a novel battery life prediction and classification method that captures both the current aging state and degradation rate using physical features and machine learning, significantly improving accuracy and efficiency.
Contribution
The study presents a new approach combining physical features and Gaussian Process models for in-situ battery life prediction and classification, outperforming existing methods.
Findings
Prediction accuracy improved by up to 67.09%
Battery classification accuracy exceeds 90%
Method requires only 3-12 minutes of sampling data
Abstract
This study develops a methodology by capturing both the battery aging state and degradation rate for improved life prediction performance. The aging state is indicated by six physical features of an equivalent circuit model that are extracted from the voltage relaxation data. And the degradation rate is captured by two features extracted from the differences between the voltage relaxation curves within a moving window (for life prediction), or the differences between the capacity vs. voltage curves at different cycles (for life classification). Two machine learning models, which are constructed based on Gaussian Processes, are used to describe the relationships between these physical features and battery lifetimes for the life prediction and classification, respectively. The methodology is validated with the aging data of 74 battery cells of three different types. Experimental results…
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Taxonomy
TopicsAdvanced Battery Technologies Research · Fuel Cells and Related Materials · Green IT and Sustainability
