Causality-Respecting Adaptive Refinement for PINNs: Enabling Precise Interface Evolution in Phase Field Modeling
Wei Wang, Tang Paai Wong, Haihui Ruan, Somdatta Goswami

TL;DR
This paper presents a causality-informed adaptive refinement method for PINNs that significantly improves accuracy and efficiency in modeling complex interface evolution in phase field simulations, especially for systems with sharp moving boundaries.
Contribution
It introduces a novel combined approach of residual-based adaptive refinement and causality training to enhance PINNs for dynamic PDEs with complex morphologies.
Findings
Improved solution accuracy over traditional PINNs.
Enhanced computational efficiency in phase field modeling.
Effective capture of interface evolution in complex scenarios.
Abstract
Physics-informed neural networks (PINNs) have emerged as a powerful tool for solving physical systems described by partial differential equations (PDEs). However, their accuracy in dynamical systems, particularly those involving sharp moving boundaries with complex initial morphologies, remains a challenge. This study introduces an approach combining residual-based adaptive refinement (RBAR) with causality-informed training to enhance the performance of PINNs in solving spatio-temporal PDEs. Our method employs a three-step iterative process: initial causality-based training, RBAR-guided domain refinement, and subsequent causality training on the refined mesh. Applied to the Allen--Cahn equation, a widely used model in phase field simulations, our approach demonstrates significant improvements in solution accuracy and computational efficiency over traditional PINNs. Notably, we observe…
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Taxonomy
TopicsSolidification and crystal growth phenomena
