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A multiscale generative model to understand disorder in domain boundaries.
Dan, Jiadong; Waqar, Moaz; Erofeev, Ivan; Yao, Kui; Wang, John; Pennycook, Stephen J; Loh, N Duane.
Afiliação
  • Dan J; NUS Centre for Bioimaging Sciences, National University of Singapore, 14 Science Drive 4, Singapore 117557, Singapore.
  • Waqar M; Department of Biological Sciences, National University of Singapore, 16 Science Drive 4, Singapore 117558, Singapore.
  • Erofeev I; Institute of Materials Research and Engineering (IMRE), A*STAR (Agency for Science, Technology and Research), Singapore 138634, Singapore.
  • Yao K; Department of Materials Science and Engineering, National University of Singapore, Singapore 117574, Singapore.
  • Wang J; NUS Centre for Bioimaging Sciences, National University of Singapore, 14 Science Drive 4, Singapore 117557, Singapore.
  • Pennycook SJ; Department of Physics, National University of Singapore, 2 Science Drive 3, Singapore 117551, Singapore.
  • Loh ND; Institute of Materials Research and Engineering (IMRE), A*STAR (Agency for Science, Technology and Research), Singapore 138634, Singapore.
Sci Adv ; 9(42): eadj0904, 2023 Oct 20.
Article em En | MEDLINE | ID: mdl-37851810
ABSTRACT
A continuing challenge in atomic resolution microscopy is to identify significant structural motifs and their assembly rules in synthesized materials with limited observations. Here, we propose and validate a simple and effective hybrid generative model capable of predicting unseen domain boundaries in a potassium sodium niobate thin film from only a small number of observations, without expensive first-principles calculations or atomistic simulations of domain growth. Our results demonstrate that complicated domain boundary structures spanning 1 to 100 nanometers can arise from simple interpretable local rules played out probabilistically. We also found previously unobserved, significant, tileable boundary motifs that may affect the piezoelectric response of the material system, and evidence that our system creates domain boundaries with the highest configurational entropy. More broadly, our work shows that simple yet interpretable machine learning models could pave the way to describe and understand the nature and origin of disorder in complex materials, therefore improving functional materials design.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article