晶体生长
同质性(统计学)
材料科学
贝叶斯优化
增长率
接口(物质)
坩埚(大地测量学)
温度梯度
Crystal(编程语言)
旋转(数学)
计算机科学
生物系统
机械
复合材料
化学
数学
结晶学
人工智能
几何学
物理
计算化学
毛细管数
机器学习
毛细管作用
程序设计语言
生物
量子力学
作者
Rachid Ghritli,Yasunori Okano,Yuko Inatomi,S. Dost
标识
DOI:10.35848/1347-4065/ac99c2
摘要
Abstract The growth of high-quality InGaSb crystals by Vertical Gradient Freezing (VGF) under microgravity was numerically simulated. Machine learning tools were used to optimize the growth conditions. The study focuses on controlling growth interface shape which directly affects the quality and homogeneity of the grown crystals. Initially, Bayesian optimization was utilized to search for the most favorable growth conditions that promote a desirable flatter growth interface shape. Afterward, a reinforcement learning model was developed. The system was subjected to a lower temperature gradient near the feed crystal and to crucible rotation with a rate ranging according to the obtained optimal strategy. Results showed that the interface deformation is considerably reduced, and a flatter growth interface could be maintained. The growth rate and solute concentration uniformity were also improved. This adaptive control recipe proves to hold great potential in the continuous and rapid optimization of other crystal growth processes.
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