首页> 外文期刊>Bulletin of the American Physical Society >APS -APS March Meeting 2017 - Event - Machine Learning of Quantum Forces: building accurate force fields for molecular dynamics simulation via ``covariant'' kernels.
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APS -APS March Meeting 2017 - Event - Machine Learning of Quantum Forces: building accurate force fields for molecular dynamics simulation via ``covariant'' kernels.

机译:APS -APS 2017年3月会议-活动-量子力的机器学习:通过``协变''内核为分子动力学模拟建立准确的力场。

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In recent years, Machine Learning algorithms have proven successful in the construction of data-driven force fields that bridge the gap between accurate (but slow) quantum chemical calculations and the fast (but unreliable) classical interatomic potentials. Such schemes learn either the local energy of a specific atom [Behler et al. PRL (2007), Bart'{o}k et al. PRL, 2010] or its relative force [Li et al. PRL, 2015]. Within Learn On The Fly (LOTF) [Cs'{a}nyi et al. PRL, 2004] simulations, the second approach is particularly suited since it guarantees reference accuracy on database entries. I will discuss a novel scheme [Glielmo et al. PRB, submitted] to accurately predict atomic forces as vector quantities, rather than sets of scalar components, by Gaussian Process (GP) Regression. This is based on matrix-valued kernel functions, to which we impose that the predicted force rotates with the target configuration and is independent of any rotations applied to the configuration database entries. We show that such ``covariant'' GP kernels can be obtained by integration over the elements of the rotation group SO(n). The accuracy of our kernels in predicting quantum forces in real materials is investigated by tests on pure and defective Ni and Fe crystalline systems.
机译:近年来,已证明机器学习算法在构建数据驱动力场方面取得了成功,该力场弥合了精确(但缓慢)的量子化学计算与快速(但不可靠)的经典原子间势之间的差距。这样的方案学习特定原子的局部能量[Behler等。 PRL(2007),Bart'k等人。 PRL,2010]或其相对作用力[Li等。 PRL,2015年]。在飞行中学习(LOTF)[CS'{a} nyi等。 PRL,2004]模拟,第二种方法特别适合,因为它可以保证数据库条目的参考准确性。我将讨论一种新颖的方案[Glielmo等。 PRB,已提交],以通过高斯过程(GP)回归准确地将原子力预测为矢量,而不是标量分量的集合。这是基于矩阵值的内核函数,我们向其施加了预测力随目标配置旋转,并且独立于应用于配置数据库条目的任何旋转。我们表明可以通过对旋转组SO(n)的元素进行积分来获得此类``协变''GP内核。我们通过对纯净和有缺陷的Ni和Fe晶体系统进行测试,研究了我们的内核预测真实材料中量子力的准确性。

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