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Bayesian force fields from active learning for simulation of inter-dimensional transformation of stanene 被引量:2

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摘要 We present a way to dramatically accelerate Gaussian process models for interatomic force fields based on many-body kernels by mapping both forces and uncertainties onto functions of low-dimensional features.This allows for automated active learning of models combining near-quantum accuracy,built-in uncertainty,and constant cost of evaluation that is comparable to classical analytical models,capable of simulating millions of atoms.Using this approach,we perform large-scale molecular dynamics simulations of the stability of the stanene monolayer.We discover an unusual phase transformation mechanism of 2D stanene,where ripples lead to nucleation of bilayer defects,densification into a disordered multilayer structure,followed by formation of bulk liquid at high temperature or nucleation and growth of the 3D bcc crystal at low temperature.The presented method opens possibilities for rapid development of fast accurate uncertainty-aware models for simulating long-time large-scale dynamics of complex materials.
出处 《npj Computational Materials》 SCIE EI CSCD 2021年第1期361-370,共10页 计算材料学(英文)
基金 Y.X.is supported by the US Department of Energy(DOE)Office of Basic Energy Sciences under Award No.DE-SC0020128 L.S.is supported by the Integrated Mesoscale Architectures for Sustainable Catalysis(IMASC),an Energy Frontier Research Center funded by the US Department of Energy(DOE)Office of Basic Energy Sciences under Award No.DE-SC0012573 A.C.is supported by the Harvard Quantum Initiative J.V.is supported by Robert Bosch LLC and the National Science Foundation(NSF),Office of Advanced Cyberinfrastructure,Award No.2003725.
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