电解质
电池(电)
工作流程
计算机科学
能量密度
可扩展性
工艺工程
纳米技术
电化学储能
设计要素和原则
材料科学
电化学
能量(信号处理)
合理设计
聚合物电解质
作者
Sathya Narayanan Jagadeesan,Mihir Kalvakaalva,Jessica Liu,J.S. Sharma Nanda,Xueli Zheng
标识
DOI:10.1002/admt.202502130
摘要
ABSTRACT Rising energy demand from electronics, electric transportation, and the grid is driving the development of safer, cheaper, scalable rechargeable batteries. Among all battery components, electrolytes play a pivotal role in governing energy density and cycle life, motivating intensive research into advanced methodologies for the rational design and selection of next‐generation electrolyte systems. Conventional trial‐and‐error electrolyte design is often time‐consuming and resource‐intensive, and struggles to efficiently navigate the vast chemical and materials spaces associated with organic, aqueous, and solid‐state electrolytes (SSEs). Machine learning (ML) strategies have emerged as powerful tools for guiding and accelerating the design of electrolytes. They can extract structure–property relationships, enable high‐throughput screening, and inform experimental decision‐making. Many ML methods are being applied to identify improved electrolyte chemistries that enhance battery performance. However, an in‐depth and critical understanding of how specific ML paradigms align with electrolyte classes, target properties, data quality, and validation practices has not yet been comprehensively addressed in the literature. In this review, we discuss established and emerging ML methods for electrolyte design by comparing them and task‐focused evaluations of ML strategies across different electrolyte systems. We highlight their effectiveness, electrolyte design, machine learning, model validation, rechargeable batteries, workflow limitations, and opportunities for integration into experimentally validated design workflows.
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