MTRL-SCILGCOMP-PHNov 22, 2022

Accelerated Solutions of Coupled Phase-Field Problems using Generative Adversarial Networks

arXiv:2211.12084v2h-index: 13
Originality Incremental advance
AI Analysis

This addresses the problem of high computational cost and data needs for multiphysics simulations in materials science, though it is incremental as it builds on existing neural network methods.

The paper tackles the computational expense and data requirements of solving coupled phase-field PDEs for alloy microstructural evolution by developing a conditional GAN with ConvLSTM layers, achieving mesh- and scale-independent solutions as effective neural operators.

Multiphysics problems such as multicomponent diffusion, phase transformations in multiphase systems and alloy solidification involve numerical solution of a coupled system of nonlinear partial differential equations (PDEs). Numerical solutions of these PDEs using mesh-based methods require spatiotemporal discretization of these equations. Hence, the numerical solutions are often sensitive to discretization parameters and may have inaccuracies (resulting from grid-based approximations). Moreover, choice of finer mesh for higher accuracy make these methods computationally expensive. Neural network-based PDE solvers are emerging as robust alternatives to conventional numerical methods because these use machine learnable structures that are grid-independent, fast and accurate. However, neural network based solvers require large amount of training data, thus affecting their generalizabilty and scalability. These concerns become more acute for coupled systems of time-dependent PDEs. To address these issues, we develop a new neural network based framework that uses encoder-decoder based conditional Generative Adversarial Networks with ConvLSTM layers to solve a system of Cahn-Hilliard equations. These equations govern microstructural evolution of a ternary alloy undergoing spinodal decomposition when quenched inside a three-phase miscibility gap. We show that the trained models are mesh and scale-independent, thereby warranting application as effective neural operators.

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