X射线光电子能谱
从头算
电解质
锂(药物)
化学
材料科学
分析化学(期刊)
化学工程
物理化学
电极
工程类
色谱法
医学
内分泌学
有机化学
作者
Qintao Sun,Yan Xiang,Yue Liu,Liang Xu,Tianle Leng,Yifan Ye,Alessandro Fortunelli,William A. Goddard,Tao Cheng
标识
DOI:10.1021/acs.jpclett.2c02222
摘要
X-ray photoelectron spectroscopy (XPS) is a powerful surface analysis technique widely applied in characterizing the solid electrolyte interphase (SEI) of lithium metal batteries. However, experiment XPS measurements alone fail to provide atomic structures from a deeply buried SEI, leaving vital details missing. By combining hybrid ab initio and reactive molecular dynamics (HAIR) and machine learning (ML) models, we present an artificial intelligence ab initio (AI-ai) framework to predict the XPS of a SEI. A localized high-concentration electrolyte with a Li metal anode is simulated with a HAIR scheme for ∼3 ns. Taking the local many-body tensor representation as a descriptor, four ML models are utilized to predict the core level shifts. Overall, extreme gradient boosting exhibits the highest accuracy and lowest variance (with errors ≤ 0.05 eV). Such an AI-ai model enables the XPS predictions of ten thousand frames with marginal cost.
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