工作流程
大数据
互操作性
电池(电)
计算机科学
数据科学
系统工程
经济短缺
透视图(图形)
纳米技术
数据集成
SPARK(编程语言)
材料信息学
深度学习
材料科学
数据分析
自动化
计算
储能
数据建模
系统集成
电化学储能
人工智能
在线分析处理
作者
Abdullah Bin Faheem,Zengyu Han,Dongshuang Wu,Haobo Li
标识
DOI:10.1002/adma.202521975
摘要
This review presents a comprehensive perspective on how AI and big data strategies can transform the understanding and design of the electrode-electrolyte interphases (EEI) in rechargeable batteries, highlighting their pivotal role in battery performance and longevity. Through uniting high-throughput experimentation and high-throughput computation (HTC), which includes automated cell fabrication, advanced characterization, large-scale HTC screening, and reaction network modeling, diverse datasets can be generated to reveal the mechanistic foundations of interfacial processes. The integration of these datasets with artificial intelligence-orchestrated workflows and machine learning models, such as closed-loop optimization and large language model-assisted hypothesis generation, enables the prediction of interphase behavior, linking molecular-level EEI understanding and macroscale device performance, and data-driven discovery of optimal material combinations. Critically, the review identifies persistent challenges, including limited data standardization, a shortage of high-quality interoperable datasets, the gap between optimization and generalizable understanding, the limits of currently available self-driving labs, and outlines mitigation strategies for building intelligent, data-centric frameworks for rational engineering of next-generation battery systems.
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