锂离子和钠离子电池的电子结构计算(DFT)与机器学习(ML)的融合:理论视角

IF 1.5 Q2 ENGINEERING, MULTIDISCIPLINARY
Henu Sharma, Vinay Katari, Kisor K Sahu, Anjali Singh
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引用次数: 0

摘要

全球正在迅速向清洁能源解决方案转型,而电池则是这一转型的主要推动力。随着对大规模能源存储系统的需求不断增加,对具有成本效益和可持续发展的电池存储系统的需求也在不断增加。迄今为止,锂离子电池完全主导了商用充电电池存储领域。与锂相比,钠的价格更低廉、数量更丰富,因此钠离子电池作为锂离子电池的一种补充技术,在电网存储设备等各种应用中引起了人们的兴趣。如今,第一性原理研究经常被用来有效研究碱性离子电池的关键特性,这些特性很难通过其他途径获得,例如电子结构效应、离子扩散性以及与实验的定量比较等。了解电池材料的电子结构有助于研究人员设计出更高效、更持久的电池。最近,机器学习(ML)方法已成为一种非常有吸引力的工具,既可用于预测(正向)问题,也可用于设计(或反向)问题。计算成本的大幅降低,加上 ML 工具尤其是深度学习方法的快速发展,激发了人们的浓厚兴趣。这是因为它们可以补充传统的实验、理论和计算工具,从而极大地促进新产品的快速开发和部署。此外,电子结构计算与 ML 的整合还能以更低的成本加速开发更高效、更可持续的电池,从而带来更长寿命的便携式设备、更清洁的能源存储解决方案和更低的环境影响,从而造福社会。这篇专题综述文章将重点介绍密度泛函理论(DFT)和 ML 如何通过材料发现、快速筛选和电极特性调整来促进锂离子和纳离子电池研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Confluence of electronic structure calculations (DFT) and machine learning (ML) for lithium and sodium-ion batteries: a theoretical perspective
The world is rapidly transitioning towards clean energy solutions, and batteries are the key drivers of this transition. With increasing demand for large-scale energy storage systems, the need for cost-effective and sustainable battery storage systems is also increasing. Until now, lithium-ion batteries have completely dominated the commercial rechargeable battery storage space. Due to sodium’s greater affordability and abundance compared to lithium, sodium-ion batteries have drawn interest as a complementary technology to lithium-ion batteries in various applications, like grid storage devices. First-principles studies are often used today to effectively study the key properties of alkali-ion batteries that are difficult to access otherwise, such as the electronic structure effects, ion diffusivity, and quantitative comparison with experiments, to name a few. Understanding the electronic structure of battery materials can help researchers design more efficient and longer-lasting batteries. Recently, machine learning (ML) approaches have emerged as a very attractive tool both for prediction (forward) problems as well as design (or inverse) problems. Dramatic reductions in computational costs, coupled with the rapid development of ML tools in general and deep learning methods in particular, have kindled keen interest. This is so because they can supplement the traditional experimental, theoretical, and computational tools to significantly augment the quest for rapid development and deployment of new products. Furthermore, the integration of electronic structure calculations and ML benefits society by accelerating the development at considerably lower costs for more efficient and sustainable batteries, which can lead to longer-lasting portable devices, cleaner energy storage solutions, and lower environmental impact. This topical review article will focus on how density functional theory (DFT) and ML can facilitate Li-ion and Na-ion battery research via material discovery, rapid screening, and tuning of the electrode properties.
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来源期刊
Engineering Research Express
Engineering Research Express Engineering-Engineering (all)
CiteScore
2.20
自引率
5.90%
发文量
192
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