离子电导率
电导率
电解质
离子键合
碳酸乙烯酯
阿累尼乌斯方程
陶瓷
化学
离子液体
离子
材料科学
计算机科学
纳米技术
活化能
物理化学
有机化学
电极
催化作用
作者
Gabriel Bradford,Jeffrey Lopez,Jurģis Ruža,Michael A. Stolberg,Richard Osterude,Jeremiah A. Johnson,Rafael Gómez‐Bombarelli,Yang Shao‐Horn
出处
期刊:ACS central science
[American Chemical Society]
日期:2023-01-23
卷期号:9 (2): 206-216
被引量:43
标识
DOI:10.1021/acscentsci.2c01123
摘要
Solid polymer electrolytes (SPEs) have the potential to improve lithium-ion batteries by enhancing safety and enabling higher energy densities. However, SPEs suffer from significantly lower ionic conductivity than liquid and solid ceramic electrolytes, limiting their adoption in functional batteries. To facilitate more rapid discovery of high ionic conductivity SPEs, we developed a chemistry-informed machine learning model that accurately predicts ionic conductivity of SPEs. The model was trained on SPE ionic conductivity data from hundreds of experimental publications. Our chemistry-informed model encodes the Arrhenius equation, which describes temperature activated processes, into the readout layer of a state-of-the-art message passing neural network and has significantly improved accuracy over models that do not encode temperature dependence. Chemically informed readout layers are compatible with deep learning for other property prediction tasks and are especially useful where limited training data are available. Using the trained model, ionic conductivity values were predicted for several thousand candidate SPE formulations, allowing us to identify promising candidate SPEs. We also generated predictions for several different anions in poly(ethylene oxide) and poly(trimethylene carbonate), demonstrating the utility of our model in identifying descriptors for SPE ionic conductivity.
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