Investigating of Ductility of Silver Sulfide using Artificial Neural Network Potentials
ORAL
Abstract
Silver sulfide is a semiconductor that exhibits remarkable metallic-like ductility under room temperature. We have investigated the mechanism underlying this unusual ductility using first-principles molecular dynamics (FPMD) simulations of simple shear deformation in six directions: (100)[010], (100)[001], (010)[100], (010)[001], (001)[100], and (001)[010] ((KLM)[klm]: sliding the (KLM) plane in the [klm] direction). However, the number of atoms (192) in the FPMD simulation precludes large-scale deformation mechanisms.
To overcome this limitation, we have trained an Artificial Neural Network (ANN) potential using FPMD data for shear deformation data, which achieves quantum-mechanical accuracy with orders-of-magnitude less computational cost, thus allowing the study of larger-scale deformation mechanisms. In a 1,536-atom system, we found a different structural-recovery mechanism by in-plane movement with a shorter distance of sulfur atom movement in the (100)[010]. In a 98,304-atom system, two grains appeared when the sulfur sublattice is recovered in (001)[010] and (010)[100], while in the largest 786,432-atom system, the sulfur sublattice is recovered with the generation of multiple grains.
To overcome this limitation, we have trained an Artificial Neural Network (ANN) potential using FPMD data for shear deformation data, which achieves quantum-mechanical accuracy with orders-of-magnitude less computational cost, thus allowing the study of larger-scale deformation mechanisms. In a 1,536-atom system, we found a different structural-recovery mechanism by in-plane movement with a shorter distance of sulfur atom movement in the (100)[010]. In a 98,304-atom system, two grains appeared when the sulfur sublattice is recovered in (001)[010] and (010)[100], while in the largest 786,432-atom system, the sulfur sublattice is recovered with the generation of multiple grains.
*This study was supported by JST CREST Grant Number JPMJCR18I2, Japan.
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Presenters
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Hinata Hokyo
- Kumamoto University