Forward and inverse modeling of nonisothermal multiphase poromechanics using physics-informed neural networks


Title

Forward and inverse modeling of nonisothermal multiphase poromechanics using physics-informed neural networks

Publication Type
Conference Proceedings
Year of Conference
2022
Conference Name
AGU Fall Meeting Abstracts
Publication Language
eng
Citation Key
3762
Abstract

We propose a solution strategy for parameter identification in multiphase thermo-hydro-mechanical (THM) processes in porous media using physics-informed neural networks (PINNs). We employ a dimensionless form of the THM governing equations that is particularly well suited for the inverse problem, and we leverage the sequential multiphysics PINN solver we developed in previous work. We validate the proposed inverse-modeling approach on multiple benchmark problems, including Terzaghi's isothermal consolidation problem, Barry-Mercer's isothermal injection-production problem, and nonisothermal consolidation of an unsaturated soil layer. We report the excellent performance of the proposed sequential PINN-THM inverse solver, thus paving the way for the application of PINNs to inverse modeling of complex nonlinear multiphysics problems.