Searching for Globally Optimal Functional Forms for Inter-Atomic Potentials Using Parallel Tempering and Genetic Programming
A. Slepoy, A. P. Thompson, M. D. Peters

TL;DR
This paper presents a parallel tempering and genetic programming approach to automatically discover optimal functional forms for inter-atomic potentials, successfully recovering the Lennard-Jones potential in a validation scenario.
Contribution
The authors introduce a novel genetic programming methodology combined with parallel tempering to explore and identify functional forms of inter-atomic potentials, surpassing traditional parameter-fitting methods.
Findings
Successfully rediscovered Lennard-Jones potential from synthetic data
Parallel tempering significantly improves convergence speed
Method is suitable for unsupervised discovery of inter-atomic force fields
Abstract
We develop a Genetic Programming-based methodology that enables discovery of novel functional forms for classical inter-atomic force-fields, used in molecular dynamics simulations. Unlike previous efforts in the field, that fit only the parameters to the fixed functional forms, we instead use a novel algorithm to search the space of many possible functional forms. While a follow-on practical procedure will use experimental and {\it ab inito} data to find an optimal functional form for a forcefield, we first validate the approach using a manufactured solution. This validation has the advantage of a well-defined metric of success. We manufactured a training set of atomic coordinate data with an associated set of global energies using the well-known Lennard-Jones inter-atomic potential. We performed an automatic functional form fitting procedure starting with a population of random…
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Taxonomy
TopicsMachine Learning in Materials Science · Protein Structure and Dynamics · Mass Spectrometry Techniques and Applications
