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Fully Convolutional Spatiotemporal Learning for Microstructure Evolution Prediction

arXiv:2602.19915v1h-index: 9
Originality Incremental advance
AI Analysis

This provides a scalable, data-driven alternative for fast microstructure simulations in materials science, though it appears incremental as an improvement over existing neural architectures.

The authors tackled the problem of computationally expensive microstructure evolution prediction in materials science by proposing a deep learning framework that accelerates predictions while maintaining high accuracy, achieving state-of-the-art performance with significantly reduced computational cost compared to traditional methods.

Understanding and predicting microstructure evolution is fundamental to materials science, as it governs the resulting properties and performance of materials. Traditional simulation methods, such as phase-field models, offer high-fidelity results but are computationally expensive due to the need to solve complex partial differential equations at fine spatiotemporal resolutions. To address this challenge, we propose a deep learning-based framework that accelerates microstructure evolution predictions while maintaining high accuracy. Our approach utilizes a fully convolutional spatiotemporal model trained in a self-supervised manner using sequential images generated from simulations of microstructural processes, including grain growth and spinodal decomposition. The trained neural network effectively learns the underlying physical dynamics and can accurately capture both short-term local behaviors and long-term statistical properties of evolving microstructures, while also demonstrating generalization to unseen spatiotemporal domains and variations in configuration and material parameters. Compared to recurrent neural architectures, our model achieves state-of-the-art predictive performance with significantly reduced computational cost in both training and inference. This work establishes a robust baseline for spatiotemporal learning in materials science and offers a scalable, data-driven alternative for fast and reliable microstructure simulations.

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