4.5 Article

Spatiotemporal prediction of microstructure evolution with predictive recurrent neural network

Journal

COMPUTATIONAL MATERIALS SCIENCE
Volume 223, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.commatsci.2023.112110

Keywords

Deep learning; Spatiotemporal prediction; Material microstructure evolution; Predictive Recurrent Neural Network (PredRNN); Phase field method

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Prediction of microstructure evolution is crucial for controlling material properties. Simulation tools based on physical concepts are not practical for urgent needs or large datasets. We propose a PredRNN model for microstructure prediction, which improves on the speed and accuracy of the phase field method using spinodal decomposition simulation data of FeCrCo alloy.
Prediction of microstructure evolution during material processing is essential to control the material properties. Simulation tools for microstructure evolution prediction based on physical concepts are computationally expensive and time-consuming. Therefore, they are not practical when either there is an urgent need for microstructure morphology during the process or there is a need to generate big microstructure datasets. Essentially, microstructure evolution prediction is a spatiotemporal sequence prediction problem, where the prediction of material microstructure is difficult due to different process histories and chemistry. We propose a Predictive Recurrent Neural Network (PredRNN) model for the microstructure prediction, which extends the inner-layer transition function of memory states in LSTMs to spatiotemporal memory flow. As a case study, we used a dataset from spinodal decomposition simulation of FeCrCo alloy created by the phase-field method for training and predicting future microstructures by previous observations. The results show that the trained network predicts quantitatively accurate microstructure morphologies while it is several orders of magnitude faster than the phase field method.

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