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首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >A Fukui function-guided genetic algorithm. Assessment on structural prediction of Si-n (n=12-20) clusters
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A Fukui function-guided genetic algorithm. Assessment on structural prediction of Si-n (n=12-20) clusters

机译:一种福禄功能引导遗传算法。 关于Si-N(n = 12-20)集群结构预测的评估

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摘要

Theoretical studies are essential for the structural characterization of clusters, when it comes to rationalize their unique size-dependent properties and composition. However, the rapid growth of local minima on the potential energy surface (PES), with respect to cluster size, makes the candidate identification a challenging undertaking. In this article, we introduce a hybrid strategy to explore the PES of clusters. This proposal involves the use of a biased initial population of a genetic algorithm procedure. Each individual in this population is built by assembling small fragments, according to the best matching of the Fukui function. The performance of a genetic algorithm procedure. The performance of the method is assessed on the PES exploration of medium-sized Si-n clusters (n=12-20). The most relevant results are: (a) the method converges at almost half of the time used by the canonical version of the GA and, (b) in all the studied cases, with the exception of Si-13 and Si-16, the method allowed to identify the global minimum (GM) and other important low-lying structures. Additionally, the apparent deficiency of the proposal to identify the GM was corrected when a Si atom, or other low-lying isomers, were considered to build the clusters. (c) 2017 Wiley Periodicals, Inc.
机译:当拟合其独特的大小依赖性性质和组合物来说,理论研究对于集群的结构表征至关重要。然而,关于簇大小的潜在能量表面(PE)的局部最小值的快速生长使候选人识别成为一个具有挑战性的承诺。在本文中,我们介绍了一个混合策略来探索集群的PES。该提议涉及使用偏置遗传算法程序的偏置初始群体。根据福井函数的最佳匹配,通过组装小碎片来构建该群体中的每个人。遗传算法过程的性能。对中尺寸Si-N簇的PES探索(n = 12-20)评估该方法的性能。最相关的结果是:(a)该方法在所有研究的遗址中的CAN和(B)中的规范版本的几乎一半的时间收敛,除了SI-13和SI-16,允许识别全局最小(GM)和其他重要的低位结构的方法。另外,当Si原子或其他低谎言异构体被认为构建簇时,校正了鉴定GM的提案的表观缺乏。 (c)2017 Wiley期刊,Inc。

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