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Abstract
Surface Pourbaix diagrams are critical to understanding the stability of nanomaterials in electrochemical environments. Their construction based on density functional theory is, however, prohibitively expensive for real-scale systems, such as several nanometer-size nanoparticles (NPs). Herein, with the aim of accelerating the accurate prediction of adsorption energies, we developed a bond-type embedded crystal graph convolutional neural network (BE-CGCNN) model in which four bonding types were treated differently. Owing to the enhanced accuracy of the bond-type embedding approach, we demonstrate the construction of reliable Pourbaix diagrams for very large-size NPs involving up to 6525 atoms (approximately 4.8 nm in diameter), which enables the exploration of electrochemical stability over various NP sizes and shapes. BE-CGCNN-based Pourbaix diagrams well reproduce the experimental observations with increasing NP size. This work suggests a method for accelerated Pourbaix diagram construction for real-scale and arbitrarily shaped NPs, which would significantly open up an avenue for electrochemical stability studies.
Surface Pourbaix diagrams are critical to understanding the stability of nanomaterials. Here, the authors develop a bond-type embedded crystal graph convolutional neural network model and construct reliable Pourbaix diagrams for real-scale nanoparticles.
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1 Korea Advanced Institute of Science and Technology (KAIST), Department of Materials Science and Engineering, Daejeon, Republic of Korea (GRID:grid.37172.30) (ISNI:0000 0001 2292 0500); Korea Institute of Science and Technology (KIST), Computational Science Research Center, Seoul, Republic of Korea (GRID:grid.35541.36) (ISNI:0000000121053345)
2 Korea Advanced Institute of Science and Technology (KAIST), Department of Materials Science and Engineering, Daejeon, Republic of Korea (GRID:grid.37172.30) (ISNI:0000 0001 2292 0500)
3 Korea Institute of Science and Technology (KIST), Computational Science Research Center, Seoul, Republic of Korea (GRID:grid.35541.36) (ISNI:0000000121053345)