Light: Science & Applications (Mar 2021)

Machine learning powered ellipsometry

  • Jinchao Liu,
  • Di Zhang,
  • Dianqiang Yu,
  • Mengxin Ren,
  • Jingjun Xu

DOI
https://doi.org/10.1038/s41377-021-00482-0
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 7

Abstract

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Abstract Ellipsometry is a powerful method for determining both the optical constants and thickness of thin films. For decades, solutions to ill-posed inverse ellipsometric problems require substantial human–expert intervention and have become essentially human-in-the-loop trial-and-error processes that are not only tedious and time-consuming but also limit the applicability of ellipsometry. Here, we demonstrate a machine learning based approach for solving ellipsometric problems in an unambiguous and fully automatic manner while showing superior performance. The proposed approach is experimentally validated by using a broad range of films covering categories of metals, semiconductors, and dielectrics. This method is compatible with existing ellipsometers and paves the way for realizing the automatic, rapid, high-throughput optical characterization of films.