Issue 41, 2018

High-speed prediction of computational fluid dynamics simulation in crystal growth

Abstract

Accelerating the optimization of material processing is essential for rapid prototyping of advanced materials to achieve practical applications. High-quality and large-diameter semiconductor crystals improve the performance, reliability and cost efficiency of semiconductor devices. However, much time is required to optimize the growth conditions and obtain a superior semiconductor crystal. Here, we demonstrate a rapid prediction of the results of computational fluid dynamics (CFD) simulations for SiC solution growth using a neural network for optimization of the growth conditions. The prediction speed was 107 times faster than that of a single CFD simulation. The combination of the CFD simulation and machine learning thus makes it possible to determine optimized parameters for high-quality and large-diameter crystals. Such a simulation is therefore expected to become the technology employed for the design and control of crystal growth processes. The method proposed in this study will also be useful for simulations of other processes.

Graphical abstract: High-speed prediction of computational fluid dynamics simulation in crystal growth

Article information

Article type
Paper
Submitted
13 Jun 2018
Accepted
22 Aug 2018
First published
02 Oct 2018
This article is Open Access
Creative Commons BY-NC license

CrystEngComm, 2018,20, 6546-6550

High-speed prediction of computational fluid dynamics simulation in crystal growth

Y. Tsunooka, N. Kokubo, G. Hatasa, S. Harada, M. Tagawa and T. Ujihara, CrystEngComm, 2018, 20, 6546 DOI: 10.1039/C8CE00977E

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