The 65h JSAP Spring Meeting, 2018

Presentation information

Oral presentation

15 Crystal Engineering » 15.7 Crystal characterization, impurities and crystal defects

[18p-D103-1~23] 15.7 Crystal characterization, impurities and crystal defects

Sun. Mar 18, 2018 1:15 PM - 7:30 PM D103 (56-103)

Kentaro Kutsukake(Nagoya Univ.), Yutaka Ohno(Tohoku Univ.), Hiroaki Kariyazaki(GWJ), Shotaro Takeuchi(Ohsaka Univ.)

5:30 PM - 5:45 PM

[18p-D103-16] Pattern Recognition of Etchpits on Unpolished Surface of Multicrystalline Silicon Using Machine Learning

Takuto Kojima1, Atsushi Ogura1, Kenji Fukui2, Manabu Komoda2, Junichi Atobe2 (1.Meiji Univ., 2.Kyocera Corporation)

Keywords:etchpit, machine learning, multicrystalline silicon

The carrier lifetime of the substrate is an important factor determining the conversion efficiency. On the other hand, the carrier lifetime differs depending on the distribution of light elements and point defects in the sensitivity to the thermal process in the fabrication process. Therefore, the relationship between the carrier lifetime before the process and the final conversion efficiency is complicated, and evaluation in combination with other indicators becomes important. One of the indices of the substrate quality is an etchpits density in which defects are manifested by a selective etching solution. In this study, we attempted automated counting of etchpits coexisting slice marks using machine learning on non-polished substrate.