Bayesian optimization of Fisher Information in nonlinear multiresonant quantum photonics gyroscopes
Publication information:
Mengdi Sun, Vassilios Kovanis, Marko Lončar, and Zin Lin. 2024. “Bayesian Optimization of Fisher Information in Nonlinear Multiresonant Quantum Photonics Gyroscopes”. Nanophotonics, 2024-0032
Abstract
We propose an on-chip gyroscope based on nonlinear multiresonant optics in a thin film χ (2) resonator that combines high sensitivity, compact form factor, and low power consumption simultaneously. We theoretically analyze a novel holistic metric – Fisher Information capacity of a multiresonant nonlinear photonic cavity – to fully characterize the sensitivity of our gyroscope under fundamental quantum noise conditions. Leveraging Bayesian optimization techniques, we directly maximize the nonlinear multiresonant Fisher Information. Our holistic optimization approach orchestrates a harmonious convergence of multiple physical phenomena – including noise squeezing, nonlinear wave mixing, nonlinear critical coupling, and noninertial signals – all encapsulated within a single sensor-resonator, thereby significantly augmenting sensitivity. We show that ∼ 470 × improvement is possible over the shot-noise limited linear gyroscope with the same footprint, intrinsic quality factors, and power budget.