Leveraging Machine Learning Potentials for In-Situ Searching of Active sites in Heterogeneous Catalysis
Xiran Cheng,
Chenyu Wu,
Jiayan Xu
et al.
Abstract:This Perspective explores the integration of machine
learning potentials
(MLPs) in the research of heterogeneous catalysis, focusing on their
role in identifying
in situ
active sites and enhancing
the understanding of catalytic processes. MLPs utilize extensive databases
from high-throughput density functional theory (DFT) calculations
to train models that predict atomic configurations, energies, and
forces with near-DFT accuracy. These capabilities allow MLPs to handle
significantly lar… Show more
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