Machine learning surrogate models for particle insertions and element substitutions
Ryosuke Jinnouchi

TL;DR
This paper introduces two machine learning-based thermodynamic integration methods for calculating chemical potentials, demonstrating their accuracy and reproducibility in water solvation systems by comparing with experimental and simulation data.
Contribution
The paper presents novel machine learning surrogate models for particle insertion and element substitution, enabling precise computation of chemical potentials from first-principles data.
Findings
Both methods yield identical real potentials within error margins.
Computed potentials agree with experimental and simulation results.
Machine learning surrogates enable accurate and reproducible chemical potential calculations.
Abstract
Two machine learning-aided thermodynamic integration schemes to compute the chemical potentials of atoms and molecules have been developed and compared. One is the particle insertion method, and the other combines particle insertion with element substitution. In the former method, the species is gradually inserted into the liquid, and its chemical potential is computed. In the latter method, after the particle insertion, the inserted species is substituted with another species, and the chemical potential of this new species is computed. In both methods, the thermodynamic integrations are conducted using machine-learned potentials trained on first-principles datasets. The errors of the machine-learned surrogate models are further corrected by performing thermodynamic integrations from the machine-learned potentials to the first-principles potentials, accurately providing the…
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Taxonomy
TopicsElectron and X-Ray Spectroscopy Techniques
