2021年第82回応用物理学会秋季学術講演会

講演情報

一般セッション(口頭講演)

23 合同セッションN「インフォマティクス応用」 » 23.1 合同セッションN「インフォマティクス応用」

[11p-N107-1~16] 23.1 合同セッションN「インフォマティクス応用」

2021年9月11日(土) 13:30 〜 18:00 N107 (口頭)

辻野 賢治(東京女子医大)、小島 拓人(名大)、小山 幸典(物材機構)

15:30 〜 15:45

[11p-N107-8] Search for suitable hyperparameters in Bayesian optimization for material synthesis: three-dimensional case

〇(D)Han XU1、Takefumi Kimura1、Ryo Nakayama1、Ryota Shimizu1,2、Yasunobu Ando3、Nobuaki Yasuo1、Masakazu Sekijima1、Taro Hitosugi1 (1.Tokyo Tech、2.JST-PRESTO、3.AIST)

キーワード:Machine learning, Bayesian Optimization

Conventional materials exploration requires trial-and-error in multi-dimensional searching space. However, in general, it is difficult for humans to optimize multi-dimensional synthesis conditions. Bayesian optimization has aroused the attention of material researchers as an efficient method to explore novel functional materials. In order to find the optimal material synthesis conditions with the minimum number of experiments, we have already investigated the optimum hyperparameters of the kernel function and the acquisition function in Bayesian optimization using 1D model functions. However, the optimum hyperparameters in the 3D case are still not investigated. In this study, we determined the appropriate hyperparameters that cost the least number of experiments for optimization in 3D synthesis conditions through simulation, and compared the effect of the process window on searching speed.