2024
DOI: 10.1038/s41598-024-57875-5
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Detecting defects that reduce breakdown voltage using machine learning and optical profilometry

James C. Gallagher,
Michael A. Mastro,
Alan G. Jacobs
et al.

Abstract: Semiconductor wafer manufacturing relies on the precise control of various performance metrics to ensure the quality and reliability of integrated circuits. In particular, GaN has properties that are advantageous for high voltage and high frequency power devices; however, defects in the substrate growth and manufacturing are preventing vertical devices from performing optimally. This paper explores the application of machine learning techniques utilizing data obtained from optical profilometry as input variabl… Show more

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