2022
DOI: 10.48550/arxiv.2203.10204
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Inferring topological transitions in pattern-forming processes with self-supervised learning

Abstract: The identification and classification of transitions in topological and microstructural regimes in pattern-forming processes is critical for understanding and fabricating microstructurally precise novel materials in many application domains. Unfortunately, relevant microstructure transitions may depend on process parameters in subtle and complex ways that are not captured by the classic theory of phase transition. While supervised machine learning methods may be useful for identifying transition regimes, they … Show more

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