催交
分子图
计算机科学
化学空间
膨胀的
灵活性(工程)
人工神经网络
图形
虚拟筛选
理论计算机科学
人工智能
拓扑(电路)
纳米技术
材料科学
分子动力学
化学
药物发现
数学
计算化学
工程类
生物化学
抗压强度
统计
系统工程
组合数学
复合材料
作者
Hengrui Zhang,Tianxing Lai,Jie Chen,Arumugam Manthiram,James M. Rondinelli,Wei Chen
标识
DOI:10.1103/prxenergy.3.023006
摘要
Recent advances in machine learning (ML) are expediting materials discovery and design. One significant challenge facing ML for materials is the expansive combinatorial space of potential materials formed by diverse constituents and their flexible configurations. This complexity is particularly evident in molecular mixtures, a frequently explored space for materials, such as battery electrolytes. Owing to the complex structures of molecules and the sequence-independent nature of mixtures, conventional ML methods have difficulties in modeling such systems. Here, we present MolSets, a specialized ML model for molecular mixtures, to overcome the difficulties. Representing individual molecules as graphs and their mixture as a set, MolSets leverages a graph neural network and the deep sets architecture to extract information at the molecular level and aggregate it at the mixture level, thus addressing local complexity while retaining global flexibility. We demonstrate the efficacy of MolSets in predicting the conductivity of lithium battery electrolytes and highlight its benefits in the virtual screening of the combinatorial chemical space. Published by the American Physical Society 2024
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