posted on 2021-09-20, 06:25authored byHaoxin Mai, Tu Le, Takashi Hisatomi, Dehong Chen, Kazunari Domen, David WinklerDavid Winkler, Rachel Caruso
New photocatalysts are traditionally identified through trial-and-error methods. Machine learning has shown considerable promise for improving the efficiency of photocatalyst discovery from a large potential pool. Here, we describe a multi-step, target-driven consensus method using a stacking meta-learning algorithm that robustly predicts bandgaps and H2 evolution activities of photocatalysts. Trained on small datasets, these models can rapidly screen a large space (>10 million materials) to identify promising, non-toxic compounds as candidate water splitting photocatalysts. Two effective compounds and two controls possessing optimal bandgap values (∼2 eV) but not photoactivity as predicted by the models were synthesized. Their experimentally measured bandgaps and H2 evolution activities were consistent with the predictions. Conspicuously, the two compounds with strong photoactivities under UV and visible light are promising visible-light-driven water splitting photocatalysts. This study demonstrates the power of machine learning and the potential of big data to accelerate discovery of next-generation photocatalysts.
Funding
The Australian Research Council is acknowledged for support through a Discovery Project (DP180103815).
History
Publication Date
2021-09-24
Journal
iScience
Volume
24
Issue
9
Article Number
103068
Pagination
(p. 1-18)
Publisher
Cell Press
ISSN
2589-0042
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