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首页> 外文期刊>Annual Review of Physical Chemistry >Constructing Multidimensional Molecular Potential Energy Surfaces from Ab Initio Data
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Constructing Multidimensional Molecular Potential Energy Surfaces from Ab Initio Data

机译:从头算数据构造多维分子势能面

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This paper describes the reproducing kernel Hilbert space (RKHS) method for constructing accurate, smooth, and efficient global potential energy surface (PES) representations for polyatomic systems using high-level ab initio data. The RKHS method provides a rigorous and effective framework for smooth multivariate interpolation of arbitrarily scattered data points and also for incorporating various physical requirements onto the PESs. Smoothness, permutation symmetry, and the asymptotic properties of polyatomic systems can be incorporated into the construction of reproducing kernels to render globally accurate PESs. Tensor products of one-dimensional generalized-spline-reproducing kernels are amenable to a fast algorithm, which makes a single evaluation of RKHS PESs essentially independent of the number of interpolated ab initio data points. This efficient implementation enables the study of the detailed dynamics of polyatomic systems based on high-quality RKHS PESs.
机译:本文介绍了使用高级从头算数据为多原子系统构造准确,平滑和有效的全局势能面(PES)表示的再现内核希尔伯特空间(RKHS)方法。 RKHS方法为任意分散的数据点的平滑多变量插值以及将各种物理要求合并到PES中提供了严格有效的框架。可以将多原子系统的平滑度,置换对称性和渐近特性纳入复制内核的构造中,以提供全局准确的PES。一维广义样条生成内核的Tensor乘积适用于快速算法,该算法使RKHS PES的单个评估基本上独立于插值的从头算数据点的数量。这种高效的实现方式使得能够研究基于高质量RKHS PES的多原子系统的详细动力学。

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