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Quality Rating of Silicon Wafers - A Pattern Recognition Approach

English · Paperback / Softback

Description

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(Topic I) Micro-cracks in silicon wafers reduce the strength of the wafers and can lead to critical failure within the solar-cell production. Especially micro-cracks which are induced before emitter diffusion strongly influence the current-voltage characteristics of the solar cell. To improve accuracy of crack detection in photoluminescence and infrared transmission images of as-cut wafers machine learning techniques are applied. Moreover, the comprehensive set of wafers allows the impact of crack morphology on wafer strength and electrical quality to be investigated and to derive sorting criteria. (Topic II) The efficiency of mc-Si silicon solar cells is sensitive to variations in electrical material quality. For these reasons, a rating procedure based on photoluminescence imaging has been developed within this work. The material quality is characterized by the distribution of crystallization-related defects, which are successfully correlated with the solar cell quality. This is demonstrated by an evaluation of a broad spectrum of currently available materials in a true blind test.

Product details

Authors Matthias Demant
Assisted by Fraunhofer ISE (Editor)
Publisher Fraunhofer Verlag
 
Languages English
Product format Paperback / Softback
Released 10.01.2017
 
EAN 9783839611241
ISBN 978-3-8396-1124-1
No. of pages 192
Dimensions 148 mm x 210 mm x 7 mm
Weight 285 g
Illustrations num., mostly col. illus. and tab.
Series Solare Energie- und Systemforschung / Solar Energy and Systems Research,
Subject Natural sciences, medicine, IT, technology > Technology > Heat, energy and power station engineering

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