Machine Learning: Science and Technology (Jan 2023)

Realistic mask generation for matter-wave lithography via machine learning

  • Johannes Fiedler,
  • Adriá Salvador Palau,
  • Eivind Kristen Osestad,
  • Pekka Parviainen,
  • Bodil Holst

DOI
https://doi.org/10.1088/2632-2153/acd988
Journal volume & issue
Vol. 4, no. 2
p. 025028

Abstract

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Fast production of large-area patterns is crucial for the established semiconductor industry and enables industrial-scale production of next-generation quantum devices. Metastable atom lithography with binary holography masks has been suggested as a higher resolution/low-cost alternative to the current state of the art: extreme ultraviolet lithography. However, it was recently shown that the interaction of the metastable atoms with the mask material (SiN) leads to a strong perturbation of the wavefront, not included in the existing mask generation theory, which is based on classical scalar waves. This means that the inverse problem (creating a mask based on the desired pattern) cannot be solved analytically, even in 1D. Here we present a machine-learning approach to mask generation targeted for metastable atoms. Our algorithm uses a combination of genetic optimisation and deep learning to obtain the mask. A novel deep neural architecture is trained to produce an initial approximation of the mask. This approximation is then used to generate the initial population of the genetic optimisation algorithm that can converge to arbitrary precision. We demonstrate the generation of arbitrary 1D patterns for system dimensions within the Fraunhofer approximation limit.

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