A Physics-Informed Neural Network (PINN) Approach to Over-Equilibrium Dynamics in Conservatively Perturbed Linear Equilibrium Systems

Loading...

Date

Journal Title

Journal ISSN

Volume Title

Publisher

Open Access Color

OpenAIRE Downloads

OpenAIRE Views

relationships.isProjectOf

relationships.isJournalIssueOf

Abstract

Conservatively perturbed equilibrium (CPE) experiments yield transient concentration extrema that surpass steady-state equilibrium values. A physics-informed neural network (PINN) framework is introduced to simulate these over-equilibrium dynamics in linear chemical reaction networks without reliance on extensive time-series data. The PINN incorporates the reaction kinetics, stoichiometric invariants, and equilibrium constraints directly into its loss function, ensuring that the learned solution strictly satisfies physical conservation laws. Applied to three- and four-species reversible mechanisms (both acyclic and cyclic), the PINN surrogate matches conventional ODE integration results, reproducing the characteristic early concentration extrema (maxima or minima) in unperturbed species and the subsequent relaxation to equilibrium. It captures the timing and magnitude of these extrema with high accuracy while inherently preserving total mass. Through the physics-informed approach, the model achieves accurate results with minimal data and a compact network architecture, highlighting its parameter efficiency.

Description

Keywords

Conservatively Perturbed Equilibrium, Cyclic and Acyclic Mechanisms, Over-Equilibrium Dynamics, Physics-Informed Neural Network, Finite-Time Thermodynamics

Fields of Science

Citation

WoS Q

Scopus Q

Source

Volume

28

Issue

1

Start Page

End Page

Google Scholar Logo
Google Scholar™

Sustainable Development Goals

SDG data could not be loaded because of an error. Please refresh the page or try again later.