Artificial Intelligence Empowers Solid-State Batteries for Material Screening and Performance Evaluation.

IF 26.6 1区 材料科学 Q1 Engineering
Sheng Wang, Jincheng Liu, Xiaopan Song, Huajian Xu, Yang Gu, Junyu Fan, Bin Sun, Linwei Yu
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引用次数: 0

Abstract

Solid-state batteries are widely recognized as the next-generation energy storage devices with high specific energy, high safety, and high environmental adaptability. However, the research and development of solid-state batteries are resource-intensive and time-consuming due to their complex chemical environment, rendering performance prediction arduous and delaying large-scale industrialization. Artificial intelligence serves as an accelerator for solid-state battery development by enabling efficient material screening and performance prediction. This review will systematically examine how the latest progress in using machine learning (ML) algorithms can be used to mine extensive material databases and accelerate the discovery of high-performance cathode, anode, and electrolyte materials suitable for solid-state batteries. Furthermore, the use of ML technology to accurately estimate and predict key performance indicators in the solid-state battery management system will be discussed, among which are state of charge, state of health, remaining useful life, and battery capacity. Finally, we will summarize the main challenges encountered in the current research, such as data quality issues and poor code portability, and propose possible solutions and development paths. These will provide clear guidance for future research and technological reiteration.

人工智能使固态电池能够进行材料筛选和性能评估。
固态电池具有高比能、高安全性、高环境适应性等优点,是被广泛认可的下一代储能器件。然而,由于固态电池的化学环境复杂,其研究和开发资源密集,耗时长,性能预测困难,延迟了大规模产业化。人工智能可以实现高效的材料筛选和性能预测,从而成为固态电池发展的加速器。本文将系统地研究如何使用机器学习(ML)算法来挖掘广泛的材料数据库,并加速发现适用于固态电池的高性能阴极、阳极和电解质材料。此外,将讨论使用ML技术准确估计和预测固态电池管理系统中的关键性能指标,其中包括充电状态、健康状态、剩余使用寿命和电池容量。最后,我们将总结当前研究中遇到的主要挑战,如数据质量问题和代码可移植性差,并提出可能的解决方案和发展路径。这些将为今后的研究和技术更新提供明确的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nano-Micro Letters
Nano-Micro Letters NANOSCIENCE & NANOTECHNOLOGY-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
32.60
自引率
4.90%
发文量
981
审稿时长
1.1 months
期刊介绍: Nano-Micro Letters is a peer-reviewed, international, interdisciplinary, and open-access journal published under the SpringerOpen brand. Nano-Micro Letters focuses on the science, experiments, engineering, technologies, and applications of nano- or microscale structures and systems in various fields such as physics, chemistry, biology, material science, and pharmacy.It also explores the expanding interfaces between these fields. Nano-Micro Letters particularly emphasizes the bottom-up approach in the length scale from nano to micro. This approach is crucial for achieving industrial applications in nanotechnology, as it involves the assembly, modification, and control of nanostructures on a microscale.
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