Machine Learning Supported Annealing for Prediction of Grand Canonical Crystal Structures

Yannick Couzinié, Yuya Seki, Yusuke Nishiya, Hirofumi Nishi, Taichi Kosugi, Shu Tanaka, Yu Ichiro Matsushita

研究成果: Article査読

抄録

This study investigates the application of Factorization Machines with Quantum Annealing (FMQA) to address the crystal structure problem (CSP) in materials science. FMQA is a black-box optimization algorithm that combines machine learning with annealing machines to find samples to a black-box function that minimize a given loss. The CSP involves determining the optimal arrangement of atoms in a material based on its chemical composition, a critical challenge in materials science. We explore FMQA’s ability to efficiently sample optimal crystal configurations by setting the loss function to the energy of the crystal configuration as given by a predefined interatomic potential. Further, we investigate how well the energies of the various metastable configurations, or local minima of the potential, are learned by the algorithm. Our investigation reveals FMQA’s potential in quick ground state sampling and in recovering relational order between local minima.

本文言語English
論文番号044802
ジャーナルJournal of the Physical Society of Japan
94
4
DOI
出版ステータスPublished - 2025 4月 15

ASJC Scopus subject areas

  • 物理学および天文学一般

フィンガープリント

「Machine Learning Supported Annealing for Prediction of Grand Canonical Crystal Structures」の研究トピックを掘り下げます。これらがまとまってユニークなフィンガープリントを構成します。

引用スタイル