克里金
高斯过程
势能
多原子离子
计算机科学
选择(遗传算法)
高斯分布
势能面
能量(信号处理)
量子
探地雷达
回归
数学优化
统计物理学
化学
计算化学
物理
数学
人工智能
从头算
分子
统计
机器学习
量子力学
电信
雷达
作者
Yafu Guan,Shuo Yang,Dong H. Zhang
标识
DOI:10.1080/00268976.2017.1407460
摘要
Gaussian process regression (GPR) is an efficient non-parametric method for constructing multi-dimensional potential energy surfaces (PESs) for polyatomic molecules. Since not only the posterior mean but also the posterior variance can be easily calculated, GPR provides a well-established model for active learning, through which PESs can be constructed more efficiently and accurately. We propose a strategy of active data selection for the construction of PESs with emphasis on low energy regions. Through three-dimensional (3D) example of H3, the validity of this strategy is verified. The PESs for two prototypically reactive systems, namely, H + H2O ↔ H2 + OH reaction and H + CH4 ↔ H2 + CH3 reaction are reconstructed. Only 920 and 4000 points are assembled to reconstruct these two PESs respectively. The accuracy of the GP PESs is not only tested by energy errors but also validated by quantum scattering calculations.
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