工作流程
催化作用
工作(物理)
人工智能
系统工程
计算机科学
机器学习
材料科学
纳米技术
持续时间(音乐)
新兴技术
能量(信号处理)
工艺工程
空格(标点符号)
生化工程
太空探索
高效能源利用
工程类
化学空间
作者
Xiaorui Liu,Jianghao Liang,Ziyi Wang,Qingyu Li,Yida Deng,Haozhi Wang
标识
DOI:10.1002/aenm.202505497
摘要
ABSTRACT There is growing interest in highly active catalysts to meet the increasing requirements of high‐efficiency energy conversion and storage. However, catalyst investigation through traditional trial‐and‐error experiments is impeded by the long duration and high cost involved. Recently, high‐throughput (HT) technologies that enable rapid catalyst screening in a vast parameter space within days (or even hours) have revolutionized catalyst research. Machine learning (ML) is a powerful tool for extracting knowledge from large datasets generated by HT experiments and computational calculations. The integration of HT with ML technologies demonstrates great promise for facilitating the discovery of advanced catalysts. From this perspective, this study highlights the use of frameworks integrating HT experimental/computational techniques with ML methodologies for catalyst research, with emphasis on the progress in such frameworks in identifying optimal candidates, elucidating reaction mechanisms, and determining critical descriptors. Furthermore, future directions for accelerating high‐performance catalyst discovery using automated HT synthesis platforms, advanced in situ characterization, and intelligent ML algorithms are outlined. This work is expected to establish a closed‐loop workflow toward the design of highly active catalysts and provide a new avenue for fundamental theory and practical applications in catalyst research.
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