A novel method to design and evaluate artificial neural network for thin film thickness measurement traceable to the length standard.

Sci Rep

Department of Science of Measurement, Korea University of Science and Technology (UST), 217, Gajeong-ro, Yuseong-gu, Daejeon, 34113, Republic of Korea.

Published: February 2022

AI Article Synopsis

  • The article presents a new method for designing and evaluating artificial neural networks (ANNs) specifically for measuring thin-film thickness, ensuring compliance with international length standards.
  • Researchers created 12 different ANNs and trained them using theoretical spectra, while validating their performance against experimental data from certified reference materials (CRMs).
  • This approach allows for a more thorough evaluation of ANN reliability beyond simple comparisons to existing methods, potentially improving future assessments of ANN performance.

Article Abstract

The artificial neural networks (ANNs) have been often used for thin-film thickness measurement, whose performance evaluations were only conducted at the level of simple comparisons with the existing analysis methods. However, it is not an easy and simple way to verify the reliability of an ANN based on international length standards. In this article, we propose for the first time a method by which to design and evaluate an ANN for determining the thickness of the thin film with international standards. The original achievements of this work are to choose parameters of the ANN reasonably and to evaluate the training instead of a simple comparison with conventional methods. To do this, ANNs were built in 12 different cases, and then trained using theoretical spectra. The experimental spectra of the certified reference materials (CRMs) used here served as the validation data of each trained ANN, with the output then compared with a certified value. When both values agree with each other within an expanded uncertainty of the CRMs, the ANN is considered to be reliable. We expect that the proposed method can be useful for evaluating the reliability of ANN in the future.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8828747PMC
http://dx.doi.org/10.1038/s41598-022-06247-yDOI Listing

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