Quantum-Enhanced Single-Parameter Phase Estimation with Adaptive NOON States
Abstract
Quantum metrology promises phase sensitivity surpassing the shot-noise limit by exploiting entanglement and photon-number correlations. NOON states-maximally path-entangled -photon superpositions -achieve the Heisenberg limit for single-parameter estimation, as demonstrated experimentally by Afek et al. (2010) using hybrid coherent-plus-squeezed light up to . We present an end-to-end differentiable quantum-optical framework-implemented in Strawberry Fields (Killoran et al., 2019) with a TensorFlow backend -that learns optimal circuit parameters by maximising the classical Fisher information (CFI) across all coincidence channels for . Starting from proper numerical reproductions of the Afek et al. coincidence fringes, verified by FFT analysis and parity measurements, we apply gradient descent (Adam) to the eight trainable circuit parameters. Raw CFI improvements grow dramatically with photon number: (), to (), to (), and (), alongside post-selection rate improvements of to , and an to improvement in useful measurement events per pulse across -. A fundamental inter-channel trade-off is identified at but weakens at higher where the Afek initialisation is further from optimal. These results provide numerically rigorous benchmarks for adaptive single-parameter quantum sensing and demonstrate that the Afek working point is significantly suboptimal at . QFI calculations confirm that the optimised probe reaches of the Heisenberg limit at and improves from to at , while useful measurement events per pulse improve by to across all , making quantum-enhanced sensing at experimentally practical.
Cite
@article{arxiv.2604.12323,
title = {Quantum-Enhanced Single-Parameter Phase Estimation with Adaptive NOON States},
author = {Simanshu Kumar and Nandan S Bisht},
journal= {arXiv preprint arXiv:2604.12323},
year = {2026}
}
Comments
v4: Corrected DOIs for refs 8, 14, 18, 21, 26; reordered bibliography to strict first-citation order; removed duplicate sentence from Acknowledgements; minor figure placement adjustment., added Zenodo DOI (10.5281/zenodo.20041907) and GitHub repository (https://github.com/simanshukumar369/noon-state-adaptive-metrology) to Data Availability