Neural structure fields with application to crystal structure autoencoders

Representing crystal structures of materials to facilitate determining them via neural networks is crucial for enabling machine-learning applications involving crystal structure estimation. Among these applications, the inverse design of materials can contribute to explore materials with desired pro...

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Veröffentlicht in:Communications materials 2023-12, Vol.4 (1), p.106-12, Article 106
Hauptverfasser: Chiba, Naoya, Suzuki, Yuta, Taniai, Tatsunori, Igarashi, Ryo, Ushiku, Yoshitaka, Saito, Kotaro, Ono, Kanta
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Sprache:eng
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Zusammenfassung:Representing crystal structures of materials to facilitate determining them via neural networks is crucial for enabling machine-learning applications involving crystal structure estimation. Among these applications, the inverse design of materials can contribute to explore materials with desired properties without relying on luck or serendipity. Here, we propose neural structure fields (NeSF) as an accurate and practical approach for representing crystal structures using neural networks. Inspired by the concepts of vector fields in physics and implicit neural representations in computer vision, the proposed NeSF considers a crystal structure as a continuous field rather than as a discrete set of atoms. Unlike existing grid-based discretized spatial representations, the NeSF overcomes the tradeoff between spatial resolution and computational complexity and can represent any crystal structure. We propose an autoencoder of crystal structures that can recover various crystal structures, such as those of perovskite structure materials and cuprate superconductors. Extensive quantitative results demonstrate the superior performance of the NeSF compared with the existing grid-based approach. Representing crystal structures is crucial for enabling the inverse design of materials with desired properties via machine learning. Here, the authors propose a versatile crystal structure representation based on continuous fields rather than grid-based discretization, overcoming the tradeoff between spatial resolution and computational complexity.
ISSN:2662-4443
2662-4443
DOI:10.1038/s43246-023-00432-w