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首页> 外文期刊>The Journal of Chemical Physics >Gaussian process based optimization of molecular geometries using statistically sampled energy surfaces from quantum Monte Carlo
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Gaussian process based optimization of molecular geometries using statistically sampled energy surfaces from quantum Monte Carlo

机译:高斯过程基于Quantum Monte Carlo的统计上采样能量表面的分子几何形状优化

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摘要

Optimization of atomic coordinates and lattice parameters remains a significant challenge to the wide use of stochastic electronic structure methods such as quantum Monte Carlo (QMC). Measurements of the forces and stress tensor by these methods contain statistical errors, challenging conventional gradient-based numerical optimization methods that assume deterministic results. Additionally, forces are not yet available for some methods, wavefunctions, and basis sets and when available may be expensive to compute to sufficiently high statistical accuracy near energy minima, where the energy surfaces are flat. Here, we explore the use of Gaussian process based techniques to sample the energy surfaces and reduce sensitivity to the statistical nature of the problem. We utilize Latin hypercube sampling, with the number of sampled energy points scaling quadratically with the number of optimized parameters. We show these techniques may be successfully applied to systems consisting of tens of parameters, demonstrating QMC optimization of a benzene molecule starting from a randomly perturbed, broken symmetry geometry. Published by AIP Publishing.
机译:原子坐标和晶格参数的优化仍然是对随机电子结构方法的广泛使用,例如量子蒙特卡罗(QMC)的重大挑战。这些方法的力和应力张量的测量含有统计误差,具有挑战性的基于梯度的数值优化方法,该方法采用确定性结果。另外,对于某些方法,波力和基集并且当可用可能是昂贵的,以计算到能量表面附近的足够高的统计精度的昂贵,因此能量表面是平坦的。在这里,我们探讨了使用基于高斯过程的技术来对能量表面进行采样,并降低对问题的统计性质的敏感性。我们利用拉丁超立体采样采样,采样的能量点数逐步缩放,具有优化参数的数量。我们显示这些技术可以成功地应用于由几十参数组成的系统,从而从随机扰动破裂的对称几何形状开始QMC优化苯分子。通过AIP发布发布。

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