星团(航天器)
配体(生物化学)
构象异构
核(代数)
量子化学
氢键
化学
计算机科学
计算化学
化学物理
分子
结晶学
数学
纯数学
生物化学
受体
有机化学
程序设计语言
作者
Lincan Fang,Jarno Laakso,Patrick Rinke,Xi Chen
摘要
Finding low-energy structures of ligand-protected clusters is challenging due to the enormous conformational space and the high computational cost of accurate quantum chemical methods for determining the structures and energies of conformers. Here, we adopted and utilized a kernel rigid regression based machine learning method to accelerate the search for low-energy structures of ligand-protected clusters. We chose the Au25(Cys)18 (Cys: cysteine) cluster as a model system to test and demonstrate our method. We found that the low-energy structures of the cluster are characterized by a specific hydrogen bond type in the cysteine. The different configurations of the ligand layer influence the structural and electronic properties of clusters.
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