1:15 PM - 1:45 PM
[19p-B12-1] [Highlight] Toward development of high-performance silicon ingot by multicrystalline informatics
Keywords:multicrystalline silicon, machine learning, image processing
We attempt to pioneer “multicrystalline informatics” to establish general grain boundary physics through collaboration of data collection from large quantities of practical multicrystalline silicon wafers, machine learning and computation. In this presentation, we will report on methodology to extract various numerical data from 3 dimensional structures of crystal defects, predication of crystal orientations and grain boundary properties by machine learning, and so on.