Abstract

The phase-field method is a powerful and versatile computational approach for modeling the evolution of microstructures and associated properties for a wide variety of physical, chemical, and biological systems. However, existing high-fidelity phase-field models are inherently computationally expensive, requiring high-performance computing resources and sophisticated numerical integration schemes to achieve a useful degree of accuracy. In this paper, we present a computationally inexpensive, accurate, data-driven surrogate model that directly learns the microstructural evolution of targeted systems by combining phase-field and history-dependent machine-learning techniques. We integrate a statistically representative, low-dimensional description of the microstructure, obtained directly from phase-field simulations, with either a time-series multivariate adaptive regression splines autoregressive algorithm or a long short-term memory neural network. The neural-network-trained surrogate model shows the best performance and accurately predicts the nonlinear microstructure evolution of a two-phase mixture during spinodal decomposition in seconds, without the need for “on-the-fly” solutions of the phase-field equations of motion. We also show that the predictions from our machine-learned surrogate model can be fed directly as an input into a classical high-fidelity phase-field model in order to accelerate the high-fidelity phase-field simulations by leaping in time. Such machine-learned phase-field framework opens a promising path forward to use accelerated phase-field simulations for discovering, understanding, and predicting processing–microstructure–performance relationships.

Highlights

  • The phase-field method is a popular mesoscale computational method used to study the spatio-temporal evolution of a microstructure and its physical properties

  • It has been extensively used to describe a variety of important evolutionary mesoscale phenomena, including grain growth and coarsening[1,2,3], solidification[4,5,6], thin-film deposition[7,8], dislocation dynamics[9,10,11], vesicles formation in biological membranes[12,13], and crack propagation[14,15]

  • We base the formulation of our history-dependent surrogate model on a low-dimensional representation of the microstructure evolution

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Summary

Introduction

The phase-field method is a popular mesoscale computational method used to study the spatio-temporal evolution of a microstructure and its physical properties. To arrive at this improvement, our surrogate model reframes the phase-field simulations as a multivariate time-series problem, forecasting the microstructure evolution in a low-dimensional representation.

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