Physics-informed machine learning of the correlation functions in bulk fluids

Journal Article
Physics of Fluids, vol. 36, iss. 1, 2024
Authors
Wenqian Chen, Peiyuan Gao, Panos Stinis
Abstract
The Ornstein–Zernike (OZ) equation is the fundamental equation for pair correlation function computations in the modern integral equation theory for liquids. In this work, machine learning models, notably physics-informed neural networks and physics-informed neural operator networks, are explored to solve the OZ equation. The physics-informed machine learning models demonstrate great accuracy and high efficiency in solving the forward and inverse OZ problems of various bulk fluids. The results highlight the significant potential of physics-informed machine learning for applications in thermodynamic state theory.
English