1:00 PM - 1:15 PM
[10p-S202-1] Optimization of furnace temperature distribution in SiC sublimation process using machine learning
Keywords:SiC, simulation, machine learning
SiC is expected to be an energy-saving semiconductor material for power devices, but its high cost is an issue, and it is necessary to fabricate low-defect-density crystals at high growth rates. We have reported that machine learning can be used to speed up the thermo-fluid analysis of the SiC sublimation method. In this study, in addition to speeding up the thermo-fluid analysis using machine learning, we optimized the temperature distribution to suppress polycrystalline precipitation at the periphery of the single crystal in order to obtain a low defect density crystal.