Si Qianli, Matsuda Shoichi, Yamaji Youhei, Momma Toshiyuki, Tateyama Yoshitaka
Department of Nanoscience and Nanoengineering, Faculty of Science and Engineering, Waseda University, 3-4-1 Okubo, Shinjuku-ku, 169-8555, Japan.
Research Center for Energy and Environmental Materials (GREEN), National Institute for Materials Science (NIMS), 1-1 Namiki, Tsukuba, Ibaraki, 305-0044, Japan.
Adv Sci (Weinh). 2024 Sep;11(33):e2402608. doi: 10.1002/advs.202402608. Epub 2024 Jun 27.
Achieving precise estimates of battery cycle life is a formidable challenge due to the nonlinear nature of battery degradation. This study explores an approach using machine learning (ML) methods to predict the cycle life of lithium-metal-based rechargeable batteries with high mass loading LiNiMnCoO electrode, which exhibits more complicated and electrochemical profile during battery operating conditions than typically studied LiFePO₄/graphite based rechargeable batteries. Extracting diverse features from discharge, charge, and relaxation processes, the intricacies of cell behavior without relying on specific degradation mechanisms are navigated. The best-performing ML model, after feature selection, achieves an R of 0.89, showcasing the application of ML in accurately forecasting cycle life. Feature importance analysis unveils the logarithm of the minimum value of discharge capacity difference between 100 and 10 cycle (Log(|min(ΔDQ(V))|)) as the most important feature. Despite the inherent challenges, this model demonstrates a remarkable 6.6% test error on unseen data, underscoring its robustness and potential for transformative advancements in battery management systems. This study contributes to the successful application of ML in the realm of cycle life prediction for lithium-metal-based rechargeable batteries with practically high energy density design.
由于电池老化的非线性特性,实现对电池循环寿命的精确估计是一项艰巨的挑战。本研究探索了一种使用机器学习(ML)方法来预测具有高质量负载LiNiMnCoO电极的锂金属基可充电电池的循环寿命的方法,该电极在电池运行条件下表现出比通常研究的LiFePO₄/石墨基可充电电池更复杂的电化学特性。从放电、充电和弛豫过程中提取各种特征,在不依赖特定降解机制的情况下了解电池行为的复杂性。经过特征选择后,性能最佳的ML模型的R值达到0.89,展示了ML在准确预测循环寿命方面的应用。特征重要性分析揭示了100次循环和10次循环之间放电容量差最小值的对数(Log(|min(ΔDQ(V))|))是最重要的特征。尽管存在固有挑战,但该模型在未见数据上表现出6.6%的显著测试误差,突出了其稳健性以及在电池管理系统中实现变革性进展的潜力。本研究有助于ML在具有实际高能量密度设计的锂金属基可充电电池循环寿命预测领域的成功应用。