使用有效的机器学习原子间电位实现锂离子电池中固体电解质界面材料的精确建模。

IF 10.7 2区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Wen-Qing Li, Gang Wu, Juan Manuel Arce-Ramos, Yang Hao Lau, Man-Fai Ng
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引用次数: 0

摘要

由于固体电解质界面(SEI)结构的高度复杂性和缺乏结构信息,对锂离子电池中固体电解质界面(SEI)结构和动态特性的准确建模仍然是一个长期存在的挑战。使用分子动力学(MD)的原子模拟可以深入了解SEI的结构,但需要大的模型和精确的原子间电位;然而,现有的计算工具很难有效和可靠地评估混合材料系统中的这些潜力。在这里,我们展示了机器学习原子间势(mlip)的有效性,mlip使用非晶结构作为参考数据,特别是矩张量势(MTP),结合密度泛函理论(DFT)计算和主动学习循环,可以快速采样MD轨迹。对于SEI相关材料(如Li2CO3、体Li、LiPF6和Li2EDC),我们训练的MTP模型可以准确捕获关键结构特性(如晶格参数、弹性常数或声子光谱)。对于单斜斜Li2CO3和非晶Li2EDC的动力学性质,模型与先前文献中的理论预测进行了验证。特别地,我们说明了有限温度对计算能量势垒的影响。确定的Li2CO3中优势扩散载流子(Li空位、间隙Li和Li Frenkel对)的机制与DFT计算结果高度一致。此外,我们表明生成的训练数据集可以应用于训练基于图神经网络(GNN)的原子间势,从而进一步提高准确性。开发的机器学习工作流程为SEI建模提供了一种可扩展的方法,可以在更大的时间和长度尺度上进行模拟,以解决传统DFT方法的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enabling accurate modelling of materials for a solid electrolyte interphase in lithium-ion batteries using effective machine learning interatomic potentials.

Accurate modelling of the structural and dynamic properties of the solid electrolyte interphase (SEI) in lithium-ion batteries remains a longstanding challenge due to the high complexity of the SEI structure and the lack of structural information. Atomistic simulations using molecular dynamics (MD) can provide insights into the structure of the SEI but require large models and accurate interatomic potentials; however, existing computational tools struggle to evaluate these potentials in mixed-material systems efficiently and reliably. Here, we demonstrate the effectiveness of machine learning interatomic potentials (MLIPs) defined using amorphous structures as reference data, specifically the moment tensor potential (MTP), combined with density functional theory (DFT) calculations and active learning loops that enable rapid sampling of MD trajectories. For SEI relevant materials (e.g., Li2CO3, bulk Li, LiPF6, and Li2EDC), our trained MTP models accurately capture the key structural properties (e.g., lattice parameters, elastic constants, or phonon spectra). For the dynamical properties of monoclinic Li2CO3 and amorphous Li2EDC, the models are validated against previous theoretical predictions in the literature. Particularly, we illustrate the finite temperature effects on computing energy barriers. The determined mechanism of dominant diffusion carriers (Li vacancy, interstitial Li, and Li Frenkel pair) in Li2CO3 is highly consistent with DFT calculations. Furthermore, we show that the generated training datasets can be applied to train graph-neural-network (GNN)-based interatomic potentials that can further improve accuracy. The developed machine learning workflow provides a scalable approach for SEI modelling, enabling simulations at larger time and length scales to tackle the limitations of conventional DFT methods.

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来源期刊
Materials Horizons
Materials Horizons CHEMISTRY, MULTIDISCIPLINARY-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
18.90
自引率
2.30%
发文量
306
审稿时长
1.3 months
期刊介绍: Materials Horizons is a leading journal in materials science that focuses on publishing exceptionally high-quality and innovative research. The journal prioritizes original research that introduces new concepts or ways of thinking, rather than solely reporting technological advancements. However, groundbreaking articles featuring record-breaking material performance may also be published. To be considered for publication, the work must be of significant interest to our community-spanning readership. Starting from 2021, all articles published in Materials Horizons will be indexed in MEDLINE©. The journal publishes various types of articles, including Communications, Reviews, Opinion pieces, Focus articles, and Comments. It serves as a core journal for researchers from academia, government, and industry across all areas of materials research. Materials Horizons is a Transformative Journal and compliant with Plan S. It has an impact factor of 13.3 and is indexed in MEDLINE.
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