Muse: Multi-algorithm collaborative crystal structure prediction |
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Authors: | Zhong-Li Liu |
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Affiliation: | College of Physics and Electric Information, Luoyang Normal University, Luoyang 471022, China |
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Abstract: | ![]() The algorithm and testing of the Multi-algorithm-collaborative Universal Structure-prediction Environment (Muse) are detailed. Presently, in Muse I combined the evolutionary, the simulated annealing, and the basin hopping algorithms to realize high-efficiency structure predictions of materials under certain conditions. Muse is kept open and other algorithms can be added in future. I introduced two new operators, slip and twist, to increase the diversity of structures. In order to realize the self-adaptive evolution of structures, I also introduced the competition scheme among the ten variation operators, as is proved to further increase the diversity of structures. The symmetry constraints in the first generation, the multi-algorithm collaboration, the ten variation operators, and the self-adaptive scheme are all key to enhancing the performance of Muse. To study the search ability of Muse, I performed extensive tests on different systems, including the metallic, covalent, and ionic systems. All these present tests show that Muse has very high efficiency and 100% success rate. |
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Keywords: | Multi-algorithm collaboration Crystal structure prediction Ab initio Free energy |
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