Sampling-free Inference for Ab-Initio Potential Energy Surface Networks

05/30/2022
by   Nicholas Gao, et al.
3

Obtaining the energy of molecular systems typically requires solving the associated Schrödinger equation. Unfortunately, analytical solutions only exist for single-electron systems, and accurate approximate solutions are expensive. In recent work, the potential energy surface network (PESNet) has been proposed to reduce training time by solving the Schrödinger equation for many geometries simultaneously. While training significantly faster, inference still required numerical integration limiting the evaluation to a few geometries. Here, we address the inference shortcomings by proposing the Potential learning from ab-initio Networks (PlaNet) framework to simultaneously train a surrogate model that avoids expensive Monte-Carlo integration and, thus, reduces inference time from minutes or even hours to milliseconds. In this way, we can accurately model high-resolution multi-dimensional energy surfaces that previously would have been unobtainable via neural wave functions. Finally, we present PESNet++, an architectural improvement to PESNet, that reduces errors by up to 39 results for neural wave functions across all systems evaluated.

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