PearSAN: an inverse design framework for the latent optimization of photonic devices using Pearson Correlated Surrogate Annealing

POSTER

Abstract

High-dimensional optimization problems represent a significant challenge in many physics-based design tasks due to the vast size of the search spaces. Consequently, latent optimization methods have emerged as a viable solution, reducing the dimensionality of the search space while preserving key design features. In this work, we improve upon current latent optimization methods for inverse design by introducing PearSAN (Pearson Correlated Surrogate Annealing), a novel machine learning optimization algorithm that trains a latent surrogate function to guide latent sampling. The core innovation of PearSAN is the Pearson Correlated Surrogate Optimization Loss (PearSOL), which enforces a monotonic relationship between the surrogate function and the figure of merit (FOM) of designs. Unlike traditional energy-matching techniques, which can lead to suboptimal alignment with sampling methods, PearSOL ensures that the surrogate function more accurately guides the exploration of the latent space. When applied to the optimization of metasurfaces, PearSAN's sampling procedure achieved an average FOM of ~92%, vs. ~80% achieved in the previous latent optimization framework. Furthermore, our model generates designs several orders of magnitude faster than previous frameworks, only requiring ~10 seconds per 100 designs. Our findings demonstrate PearSAN's potential to dramatically improve the efficiency and accuracy of generative design tasks in high-dimensional physics-based systems.

*This work was supported in part by the U.S. Department of Energy (DOE) Office of Science, through the Quantum Science Center (QSC), the National Quantum Information Science Research Center (algorithm development), the National Science Foundation (NSF), and Purdue's Elmore ECE Emerging Frontiers Center "The Crossroads of Quantum and AI."

Publication: Bezick et al. (2024). PearSAN: A Machine Learning Method for Inverse Design using
Pearson Correlated Surrogate Annealing. Planned Manuscript.

Presenters

  • Michael Bezick

    • Purdue University

Authors

  • Michael Bezick

    • Purdue University
  • Blake A Wilson

    • Purdue University
  • Vea Iyer

    • Purdue University
  • Yuheng Chen

    • Purdue University
  • Vladimir M Shalaev

    • Purdue University
    • Elmore Family School of Electrical and Computer Engineering,Birck Nanotechnology Center, Purdue University
    • Elmore Family School of Electrical and Computer Engineering, Purdue Quantum Science and Engineering Institute,Birck Nanotechnology Center, Purdue University
  • Sabre Kais

    • North Carolina State University
    • Purdue University
    • Department of Chemistry, Purdue University, West Lafayette, IN 47907 & Department of Electrical and Computer Engineering, North Carolina State University Raleigh, NC, 2760
  • Alexandra Boltasseva

    • Purdue University
    • Elmore Family School of Electrical and Computer Engineering,Birck Nanotechnology Center, Purdue University
    • Elmore Family School of Electrical and Computer Engineering, Purdue Quantum Science and Engineering Institute,Birck Nanotechnology Center, Purdue University
  • Brad Lackey

    • Microsoft
    • Microsoft Quantum