二元合金的光谱神经网络电位

David Zagaceta, Howard Yanxon, Q. Zhu
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引用次数: 4

摘要

在这项工作中,我们提出了一个数值实现来计算由Bartok等人(物理学家)引入的原子中心描述符。基于原子近邻密度函数的谐波分析。光子学报,37(7):1851 - 1851,2013)。具体来说,我们重点研究了两种类型的描述子,即包含径向基的光滑SO(3)功率谱和通过将径向分量映射到四维超球的极角而获得的SO(4)双谱。利用这些描述符,基于线性和神经网络回归模型得到了二元Ni-Mo合金的各种原子间电位。数值实验表明,两种描述符在精度方面产生相似的结果。对于线性回归,当使用大带宽限制时,平滑的SO(3)功率谱优于SO(4)双谱。在神经网络回归中,即使两个描述符的扩展分量数量更少,也可以获得更好的精度。因此,我们证明了谱神经网络电位是大规模原子模拟的可行选择。
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Spectral neural network potentials for binary alloys
In this work, we present a numerical implementation to compute the atom centered descriptors introduced by Bartok et al (Phys. Rev. B, 87, 184115, 2013) based on the harmonic analysis of the atomic neighbor density function. Specifically, we focus on two types of descriptors, the smooth SO(3) power spectrum with the explicit inclusion of a radial basis and the SO(4) bispectrum obtained through mapping the radial component onto a polar angle of a four dimensional hypersphere. With these descriptors, various interatomic potentials for binary Ni-Mo alloys are obtained based on linear and neural network regression models. Numerical experiments suggest that both descriptors produce similar results in terms of accuracy. For linear regression, the smooth SO(3) power spectrum is superior to the SO(4) bispectrum when a large band limit is used. In neural network regression, a better accuracy can be achieved with even less number of expansion components for both descriptors. As such, we demonstrate that spectral neural network potentials are feasible choices for large scale atomistic simulation.
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