化学
分子动力学
哈密顿量(控制论)
波函数
价(化学)
带隙
富勒烯
降维
卤化物
Atom(片上系统)
导带
维数之咒
分子物理学
计算化学
物理
机器学习
原子物理学
量子力学
计算机科学
电子
数学
无机化学
数学优化
嵌入式系统
作者
Wei Bin How,Bipeng Wang,Weibin Chu,Sergiy M. Kovalenko,Alexandre Tkatchenko,Oleg V. Prezhdo
摘要
Supervised machine learning (ML) and unsupervised ML have been performed on descriptors generated from nonadiabatic (NA) molecular dynamics (MD) trajectories representing non-radiative charge recombination in CsPbI3, a promising solar cell and optoelectronic material. Descriptors generated from every third atom of the iodine sublattice alone are sufficient for a satisfactory prediction of the bandgap and NA coupling for the use in the NA-MD simulation of nonradiative charge recombination, which has a strong influence on material performance. Surprisingly, descriptors based on the cesium sublattice perform better than those of the lead sublattice, even though Cs does not contribute to the relevant wavefunctions, while Pb forms the conduction band and contributes to the valence band. Simplification of the ML models of the NA-MD Hamiltonian achieved by the present analysis helps to overcome the high computational cost of NA-MD through ML and increase the applicability of NA-MD simulations.
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