符号回归
任务(项目管理)
一般化
计算机科学
钙钛矿(结构)
回归
贝叶斯概率
工作(物理)
催化作用
人工智能
系列(地层学)
氧化物
机器学习
算法
材料科学
化学
化学工程
数学
机械工程
工程类
冶金
生物化学
系统工程
生物
古生物学
数学分析
遗传程序设计
统计
作者
Zhilong Song,Xiao Wang,Fangting Liu,Qionghua Zhou,Wan‐Jian Yin,Hao Wu,Wei Deng,Jinlan Wang
出处
期刊:Materials horizons
[Royal Society of Chemistry]
日期:2023-01-01
卷期号:10 (5): 1651-1660
被引量:20
摘要
Developing activity descriptors via data-driven machine learning (ML) methods can speed up the design of highly active and low-cost electrocatalysts. Despite the fact that a large amount of activity data for electrocatalysts is stored in the literature, data from different publications are not comparable due to different experimental or computational conditions. In this work, an interpretable ML method, multi-task symbolic regression, was adopted to learn from data in multiple experiments. A universal activity descriptor to evaluate the oxygen evolution reaction (OER) performance of oxide perovskites free of calculations or experiments was constructed and reached high accuracy and generalization ability. Utilizing this descriptor with Bayesian-optimized parameters, a series of compelling double perovskites with excellent OER activity were predicted and further evaluated using first-principles calculations. Finally, the two ML-predicted nickel-based perovskites with the best OER activity were successfully synthesized and characterized experimentally. This work opens a new way to extend machine-learning material design by utilizing multiple data sources.
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