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Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data

In this study, we submit a complex set of in-situ data collected by optical emission spectroscopy (OES) during the process of aluminum nitride (AlN) thin film. Changing the sputtering power and nitrogen(N(2)) flow rate, AlN film was deposited on Si substrate using a superior sputtering with a pulsed...

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Autores principales: Yang, Yu-Pu, Lu, Te-Yun, Lo, Hsiao-Han, Chen, Wei-Lun, Wang, Peter J., Lai, Walter, Fuh, Yiin-Kuen, Li, Tomi T.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8400567/
https://www.ncbi.nlm.nih.gov/pubmed/34442969
http://dx.doi.org/10.3390/ma14164445
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author Yang, Yu-Pu
Lu, Te-Yun
Lo, Hsiao-Han
Chen, Wei-Lun
Wang, Peter J.
Lai, Walter
Fuh, Yiin-Kuen
Li, Tomi T.
author_facet Yang, Yu-Pu
Lu, Te-Yun
Lo, Hsiao-Han
Chen, Wei-Lun
Wang, Peter J.
Lai, Walter
Fuh, Yiin-Kuen
Li, Tomi T.
author_sort Yang, Yu-Pu
collection PubMed
description In this study, we submit a complex set of in-situ data collected by optical emission spectroscopy (OES) during the process of aluminum nitride (AlN) thin film. Changing the sputtering power and nitrogen(N(2)) flow rate, AlN film was deposited on Si substrate using a superior sputtering with a pulsed direct current (DC) method. The correlation between OES data and deposited film residual stress (tensile vs. compressive) associated with crystalline status by X-ray diffraction spectroscopy (XRD), scanning electron microscope (SEM), and transmission electron microscope (TEM) measurements were investigated and established throughout the machine learning exercise. An important answer to know is whether the stress of the processing film is compressive or tensile. To answer this question, we can access as many optical spectra data as we need, record the data to generate a library, and exploit principal component analysis (PCA) to reduce complexity from complex data. After preprocessing through PCA, we demonstrated that we could apply standard artificial neural networks (ANNs), and we could obtain a machine learning classification method to distinguish the stress types of the AlN thin films obtained by analyzing XRD results and correlating with TEM microstructures. Combining PCA with ANNs, an accurate method for in-situ stress prediction and classification was created to solve the semiconductor process problems related to film property on deposited films more efficiently. Therefore, methods for machine learning-assisted classification can be further extended and applied to other semiconductors or related research of interest in the future.
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spelling pubmed-84005672021-08-29 Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data Yang, Yu-Pu Lu, Te-Yun Lo, Hsiao-Han Chen, Wei-Lun Wang, Peter J. Lai, Walter Fuh, Yiin-Kuen Li, Tomi T. Materials (Basel) Article In this study, we submit a complex set of in-situ data collected by optical emission spectroscopy (OES) during the process of aluminum nitride (AlN) thin film. Changing the sputtering power and nitrogen(N(2)) flow rate, AlN film was deposited on Si substrate using a superior sputtering with a pulsed direct current (DC) method. The correlation between OES data and deposited film residual stress (tensile vs. compressive) associated with crystalline status by X-ray diffraction spectroscopy (XRD), scanning electron microscope (SEM), and transmission electron microscope (TEM) measurements were investigated and established throughout the machine learning exercise. An important answer to know is whether the stress of the processing film is compressive or tensile. To answer this question, we can access as many optical spectra data as we need, record the data to generate a library, and exploit principal component analysis (PCA) to reduce complexity from complex data. After preprocessing through PCA, we demonstrated that we could apply standard artificial neural networks (ANNs), and we could obtain a machine learning classification method to distinguish the stress types of the AlN thin films obtained by analyzing XRD results and correlating with TEM microstructures. Combining PCA with ANNs, an accurate method for in-situ stress prediction and classification was created to solve the semiconductor process problems related to film property on deposited films more efficiently. Therefore, methods for machine learning-assisted classification can be further extended and applied to other semiconductors or related research of interest in the future. MDPI 2021-08-08 /pmc/articles/PMC8400567/ /pubmed/34442969 http://dx.doi.org/10.3390/ma14164445 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Yang, Yu-Pu
Lu, Te-Yun
Lo, Hsiao-Han
Chen, Wei-Lun
Wang, Peter J.
Lai, Walter
Fuh, Yiin-Kuen
Li, Tomi T.
Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data
title Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data
title_full Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data
title_fullStr Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data
title_full_unstemmed Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data
title_short Machine Learning Assisted Classification of Aluminum Nitride Thin Film Stress via In-Situ Optical Emission Spectroscopy Data
title_sort machine learning assisted classification of aluminum nitride thin film stress via in-situ optical emission spectroscopy data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8400567/
https://www.ncbi.nlm.nih.gov/pubmed/34442969
http://dx.doi.org/10.3390/ma14164445
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