Inverse Design of Phononic Metamaterials Using QAOA-in-QAOA

POSTER

Abstract

Phononic metamaterials, such as phononic crystals and vibro-elastic locally resonant metamaterials, offer unique control over wave propagation via non-local interactions, enabling advanced functionalities like negative refraction and enhanced vibration isolation. However, practical applications are limited by challenges in managing complex, large-scale structures and tuning interactions for specific targets. We present a scalable design method using variational quantum algorithms to achieve target dispersion bands in mechanical metamaterials. Our approach applies an inner Quantum Approximate Optimization Algorithm (QAOA) for dispersion band prediction, with an outer QAOA, enhanced by Genetic Programming Symbolic Regression (GPSR), to minimize discrepancies between predicted and target properties. This nested QAOA approach efficiently optimizes geometry and interactions, advancing the design of multifunctional metamaterials.

*YL and PW are supported by both the Research Incentive Seed Grant Program and the start-up research funds of the Department of Mechanical Engineering at the University of Utah. The support and resources from the Center for High-Performance Computing at the University of Utah are gratefully acknowledged.

Publication: Yunya Liu, John Ling Chen, Jiwon Park, Sharat Paul, Pai Wang, Inverse Design of Phononic Metamaterials Using QAOA-in-QAOA. Planned submission to Advanced Science, targeting mid-2024.

Presenters

  • Yunya Liu

    • University of Utah

Authors

  • Yunya Liu

    • University of Utah
  • John Ling Chen

    • University of Utah
  • Jiwon Park

    • University of Utah
  • Sharat Chandra Paul

    • University of Utah
  • Pai Wang

    • University of Utah