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Unbiased fuzzy global optimization of Lennard-Jones clusters for N <= 1000

机译:N <= 1000的Lennard-Jones集群的无偏见模糊全局优化

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摘要

We propose a fuzzy global optimization (FGO) algorithm to identify the lowest-energy structure of nanoclusters. In contrast to traditional methods implemented in the real space, FGO utilizes mostly the discrete space in a fuzzy search framework. Starting from random initial configurations, we carry out directed Monte Carlo and surface Monte Carlo in the discrete space to obtain low-energy candidate clusters and make real-space local optimizations finally to get the real global minimum structure. The performance of FGO is demonstrated in a large set of standard Lennard-Jones (LJ) clusters with up to 1000 atoms. All the putative global minima reported in the literature are successfully obtained with a low scaling of CPU time with cluster size, and new global minimum structures for LJ clusters with 894, 974, and 991 atoms are identified. Due to the unbiased nature, FGO can potentially deal with the global optimization of other nanomaterials with high efficiency and reliability. Published under license by AIP Publishing.
机译:我们提出了一种模糊的全局优化(FGO)算法来识别纳米能器的最低能量结构。与现实空间中实施的传统方法形成鲜明对比,FGO主要利用模糊搜索框架中的离散空间。从随机初始配置开始,我们在离散空间中执行指示的蒙特卡罗和表面蒙特卡罗,以获得低能量候选集群,并最终使实时空间的本地优化实现真实的全局最小结构。 FGO的性能在大量标准Lennard-Jones(LJ)集群中展示,最多1000个原子。所有在文献中报道的推定的全局最小值是成功地与CPU时间的低缩放与簇尺寸,以及新的全局最小结构,用于LJ簇与894,974获得,并且991个原子被识别。由于性质无偏,FGO可能潜在地处理其他纳米材料的全球优化,高效率和可靠性。通过AIP发布在许可证下发布。

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