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Machine learning-enhanced detection of minor radiation-induced defects in semiconductor materials using Raman spectroscopy
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Metadata
Document Title
Machine learning-enhanced detection of minor radiation-induced defects in semiconductor materials using Raman spectroscopy
Author
Chia J.Y. Thamrongsiripak N. Thongphanit S. Nuntawong N.
Affiliations
National Electronics and Computer Technology National Science and Technology Development Agency Pathum Thani 12120 Thailand; Development and Service Section Irradiation Center Thailand Institute of Nuclear Technology (Public Organization) Nakhon Nayok 26120 Thailand
Type
Article
Source Title
Journal of Applied Physics
ISSN
218979
Year
2024
Volume
135
Issue
2
Open Access
All Open Access Bronze
Publisher
American Institute of Physics Inc.
DOI
10.1063/5.0179881
Abstract
Radiation damage in semiconductor materials is a crucial concern for electronic applications especially in the fields of space military nuclear and medical electronics. With the advancements in semiconductor fabrication techniques and the trend of miniaturization the quality of semiconductor materials and their susceptibility to radiation-induced defects have become more important than ever. In this context machine learning (ML) algorithms have emerged as a promising tool to study minor radiation-induced defects in semiconductor materials. In this study we propose a sensitive non-destructive technique for investigating radiation-induced defects using multivariate statistical analyses combined with Raman spectroscopy. Raman spectroscopy is a contactless and non-destructive method widely used to characterize semiconductor materials and their defects. The multivariate statistical methods applied in analyzing the Raman spectra provide high sensitivity in detecting minor radiation-induced defects. The proposed technique was demonstrated by categorizing 100-500 kGy irradiated GaAs wafers into samples with low and high irradiation levels using linear discrimination analysis ML algorithms. Despite the high similarity in the obtained Raman spectra the ML algorithms correctly predicted the blind testing samples highlighting the effectiveness of ML in defect study. This study provides a promising approach for detecting minor radiation-induced defects in semiconductor materials and can be extended to other semiconductor materials and devices. ? 2024 Author(s).
Industrial Classification
Knowledge Taxonomy Level 1
Knowledge Taxonomy Level 2
Knowledge Taxonomy Level 3
License
CC BY-NC-ND
Rights
Authors
Publication Source
WOS