Machine learning-based lifelong estimation of lithium plating potential: A path to health-aware fastest battery charging

IF 18.9 1区 材料科学 Q1 CHEMISTRY, PHYSICAL Energy Storage Materials Pub Date : 2024-11-22 DOI:10.1016/j.ensm.2024.103877
Yizhou Zhang, Torsten Wik, John Bergström, Changfu Zou
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Abstract

To enable a shift from fossil fuels to renewable and sustainable transport, batteries must allow fast charging and exhibit extended lifetimes—objectives that traditionally conflict. Current charging technologies often compromise one attribute for the other, leading to either inconvenience or diminished resource efficiency in battery-powered vehicles. For lithium-ion batteries, the way to meet both objectives is for the lithium plating potential at the anode surface to remain positive. In this study, we address this challenge by introducing a novel method that involves real-time monitoring and control of the plating potential in lithium-ion battery cells throughout their lifespan. Our experimental results on three-electrode cells reveal that our approach can enable batteries to charge at least 30% faster while almost doubling their lifetime. To facilitate the adoption of these findings in commercial applications, we propose a machine learning-based framework for lifelong plating potential estimation, utilizing readily available battery data from electric vehicles. The resulting model demonstrates high fidelity and robustness under diverse operating conditions, achieving a mean absolute error of merely 3.37 mV. This research outlines a practical methodology to prevent lithium plating and enable the fastest health-conscious battery charging.
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基于机器学习的锂镀层电位终身估算:通往健康感知的最快电池充电之路
为了实现从化石燃料向可再生和可持续交通的转变,电池必须能够快速充电并延长使用寿命--这些目标在传统上是相互冲突的。目前的充电技术往往会牺牲其中一个属性,导致电池驱动的车辆要么不方便,要么资源效率降低。对于锂离子电池来说,要同时满足这两个目标,阳极表面的锂镀层电位必须保持正值。在本研究中,我们引入了一种新方法来应对这一挑战,该方法涉及在锂离子电池的整个生命周期内实时监测和控制电池的电镀电位。我们在三电极电池上的实验结果表明,我们的方法可以使电池的充电速度至少提高 30%,同时将电池的使用寿命延长近一倍。为了便于在商业应用中采用这些研究成果,我们提出了一种基于机器学习的终身电镀电位估算框架,并利用了电动汽车中现成的电池数据。由此产生的模型在各种操作条件下都表现出了高保真和鲁棒性,平均绝对误差仅为 3.37 mV。这项研究为防止锂镀层和实现最快的健康电池充电勾勒出了一个实用的方法论。
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来源期刊
Energy Storage Materials
Energy Storage Materials Materials Science-General Materials Science
CiteScore
33.00
自引率
5.90%
发文量
652
审稿时长
27 days
期刊介绍: Energy Storage Materials is a global interdisciplinary journal dedicated to sharing scientific and technological advancements in materials and devices for advanced energy storage and related energy conversion, such as in metal-O2 batteries. The journal features comprehensive research articles, including full papers and short communications, as well as authoritative feature articles and reviews by leading experts in the field. Energy Storage Materials covers a wide range of topics, including the synthesis, fabrication, structure, properties, performance, and technological applications of energy storage materials. Additionally, the journal explores strategies, policies, and developments in the field of energy storage materials and devices for sustainable energy. Published papers are selected based on their scientific and technological significance, their ability to provide valuable new knowledge, and their relevance to the international research community.
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