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A Global Optimizer for Nanoclusters

机译:纳米簇的全球优化器

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摘要

We have developed an algorithm to automatically build the global minimum and other low-energy minima of nanoclusters. This method is implemented in PyAR () program. The global optimization in PyAR involves two parts, generation of several trial geometries and gradient-based local optimization of the trial geometries. While generating the trial geometries, a Tabu list is used for storing the information of the already used trial geometries to avoid using the similar trial geometries. In this recursive algorithm, an n-sized cluster is built from the geometries of n−1 clusters. The overall procedure automatically generates many unique minimum energy geometries of clusters with size from 2 up to n using this evolutionary growth strategy. We have used our strategy on some of the well-studied clusters such as Pd, Pt, Au, and Al homometallic clusters, Ru-Pt and Au-Pt binary clusters, and Ag-Au-Pt ternary cluster. We have analyzed some of the popular parameters to characterize the clusters, such as relative energy, singlet-triplet energy difference, binding energy, second-order energy difference, and mixing energy, and compared with the reported properties.
机译:我们已经开发了一种算法,可以自动构建纳米团簇的全局最小值和其他低能耗最小值。该方法在PyAR()程序中实现。 PyAR中的全局优化涉及两个部分,几个试验几何的生成和试验几何的基于梯度的局部优化。在生成试验几何时,禁忌列表用于存储已使用的试验几何的信息,以避免使用类似的试验几何。在此递归算法中,从n-1个簇的几何形状构建了n个簇。使用此进化增长策略,整个过程会自动生成大小从2到n的簇的许多独特的最小能量几何。我们已经在一些经过充分研究的簇上使用了我们的策略,例如Pd,Pt,Au和Al同金属簇,Ru-Pt和Au-Pt二元簇以及Ag-Au-Pt三元簇。我们分析了一些流行的参数来表征团簇,例如相对能量,单线态-三重态能量差,结合能,二阶能量差和混合能,并与报道的性质进行了比较。

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