Journal
JOURNAL OF ENERGY CHEMISTRY
Volume 82, Issue -, Pages 239-247Publisher
ELSEVIER
DOI: 10.1016/j.jechem.2023.03.013
Keywords
Photoelectrocatalysis; GaP(110)-water interface; Machine learning accelerated molecular; dynamics
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In this study, machine learning accelerated molecular dynamics (MLMD) is used to investigate the microstructure of the GaP(110)-water interface, unraveling the mechanisms of proton transfer and providing valuable insights into the photoelectrocatalytic mechanisms and performance improvement of photoelectrochemical cells.
GaP has been shown to be a promising photoelectrocatalyst for selective CO2 reduction to methanol. Due to the relevance of the interface structure to important processes such as electron/proton transfer, a detailed understanding of the GaP(110)-water interfacial structure is of great importance. Ab initio molecular dynamics (AIMD) can be used for obtaining the microscopic information of the interfacial structure. However, the GaP(110)-water interface cannot converge to an equilibrated structure at the time scale of the AIMD simulation. In this work, we perform the machine learning accelerated molecular dynamics (MLMD) to overcome the difficulty of insufficient sampling by AIMD. With the help of MLMD, we unravel the microscopic information of the structure of the GaP(110)-water interface, and obtain a deeper understanding of the mechanisms of proton transfer at the GaP(110)-water interface, which will pave the way for gaining valuable insights into photoelectrocatalytic mechanisms and improving the performance of photoelectrochemical cells. (c) 2023 Science Press and Dalian Institute of Chemical Physics, Chinese Academy of Sciences. Published by ELSEVIER B.V. and Science Press. All rights reserved.
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