可解释性
计算机科学
遗传程序设计
电池(电)
符号回归
人工智能
概化理论
机器学习
锂离子电池
锂(药物)
过度拟合
领域知识
吞吐量
人工神经网络
数学
医学
功率(物理)
统计
物理
量子力学
无线
内分泌学
电信
作者
Kai Schofer,Florian Laufer,Jochen Stadler,Severin Hahn,Gerd Gaiselmann,Arnulf Latz,Kai Peter Birke
标识
DOI:10.1002/advs.202200630
摘要
Abstract Precise lifetime predictions for lithium‐ion cells are crucial for efficient battery development and thus enable profitable electric vehicles and a sustainable transformation towards zero‐emission mobility. However, limitations remain due to the complex degradation of lithium‐ion cells, strongly influenced by cell design as well as operating and storage conditions. To overcome them, a machine learning framework is developed based on symbolic regression via genetic programming. This evolutionary algorithm is capable of inferring physically interpretable models from cell aging data without requiring domain knowledge. This novel approach is compared against established approaches in case studies, which represent common tasks of lifetime prediction based on cycle and calendar aging data of 104 automotive lithium‐ion pouch‐cells. On average, predictive accuracy for extrapolations over storage time and energy throughput is increased by 38% and 13%, respectively. For predictions over other stress factors, error reductions of up to 77% are achieved. Furthermore, the evolutionary generated aging models meet requirements regarding applicability, generalizability, and interpretability. This highlights the potential of evolutionary algorithms to enhance cell aging predictions as well as insights.
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