Gaussian Process Regression for Geometry Optimization

A. Denzel, J. Kastner
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引用次数: 78

Abstract

We implemented a geometry optimizer based on Gaussian process regression (GPR) to find minimum structures on potential energy surfaces. We tested both a two times differentiable form of the Matern kernel and the squared exponential kernel. The Matern kernel performs much better. We give a detailed description of the optimization procedures. These include overshooting the step resulting from GPR in order to obtain a higher degree of interpolation vs. extrapolation. In a benchmark against the L-BFGS optimizer of the DL-FIND library on 26 test systems, we found the new optimizer to generally reduce the number of required optimization steps.
几何优化的高斯过程回归
我们实现了一个基于高斯过程回归(GPR)的几何优化器来寻找势能表面上的最小结构。我们测试了母核的二次可微形式和指数核的平方。Matern内核的性能要好得多。我们给出了优化过程的详细描述。这些包括为了获得更高程度的内插与外推而由GPR产生的超调步长。在针对DL-FIND库的L-BFGS优化器在26个测试系统上的基准测试中,我们发现新的优化器通常可以减少所需的优化步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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