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首页> 外文期刊>The Journal of Chemical Physics >An effective structure prediction method for layered materials based on 2D particle swarm optimization algorithm
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An effective structure prediction method for layered materials based on 2D particle swarm optimization algorithm

机译:基于二维粒子群算法的层状材料有效结构预测方法

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摘要

A structure prediction method for layered materials based on two-dimensional (2D) particle swarm optimization algorithm is developed. The relaxation of atoms in the perpendicular direction within a given range is allowed. Additional techniques including structural similarity determination, symmetry constraint enforcement, and discretization of structure constructions based on space gridding are implemented and demonstrated to significantly improve the global structural search efficiency. Our method is successful in predicting the structures of known 2D materials, including single layer and multi-layer graphene, 2D boron nitride (BN) compounds, and some quasi-2D group 6 metals(VIB) chalcogenides. Furthermore, by use of this method, we predict a new family of mono-layered boron nitride structures with different chemical compositions. The first-principles electronic structure calculations reveal that the band gap of these N-rich BN systems can be tuned from 5.40 eV to 2.20 eV by adjusting the composition.
机译:提出了一种基于二维(2D)粒子群优化算法的层状材料结构预测方法。允许原子在给定范围内在垂直方向上松弛。实施了其他技术,包括结构相似性确定,对称约束实施和基于空间网格的结构构造离散化,这些技术可以显着提高整体结构搜索效率。我们的方法成功地预测了已知的2D材料的结构,包括单层和多层石墨烯,2D氮化硼(BN)化合物以及某些准2D 6族金属(VIB)硫族化物。此外,通过使用这种方法,我们预测了具有不同化学组成的新的单层氮化硼结构族。第一性原理电子结构计算表明,可以通过调节成分将这些富氮BN系统的带隙从5.40 eV调节到2.20 eV。

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