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Machine-learning the configurational energy of multicomponent crystalline solids 被引量:2

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摘要 Machine learning tools such as neural networks and Gaussian process regression are increasingly being implemented in the development of atomistic potentials.Here,we develop a formalism to leverage such non-linear interpolation tools in describing properties dependent on occupation degrees of freedom in multicomponent solids.Symmetry-adapted cluster functions are used to differentiate distinct local orderings.These local features are used as input to neural networks that reproduce local properties such as the site energy.We apply the technique to reproduce a synthetic cluster expansion Hamiltonian with multi-body interactions,as well as the formation energies calculated from first-principles for the intercalation of lithium into TiS2.The formalism and results presented here show that complex multi-body interactions may be approximated by non-linear models involving smaller clusters.
机构地区 Materials Department
出处 《npj Computational Materials》 SCIE EI 2018年第1期191-197,共7页 计算材料学(英文)
基金 This work was carried out under an NSF DMREF grant:DMR1436154“DMREF:Integrated Computational Framework for Designing Dynamically Controlled Alloy-Oxide Heterostructure”.Computing resources were provided by the Center for Scientific Computing at the CNSI and MRL under NSF CNS-1725797 and NSF MRSEC(DMR-1720256).
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