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Main Authors: Ramôa, Alexandra, Santos, Luís Paulo, Soeda, Akihito
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.07120
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author Ramôa, Alexandra
Santos, Luís Paulo
Soeda, Akihito
author_facet Ramôa, Alexandra
Santos, Luís Paulo
Soeda, Akihito
contents A two-level quantum system evolving under a time-independent Hamiltonian produces oscillatory measurement probabilities. The estimation of the associated frequency is a cornerstone problem in quantum metrology, sensing, calibration and control. In this work, we tackle this task by introducing WES: a Window Expansion Strategy for low cost adaptive Bayesian experimental design. WES employs empirical cost-reduction techniques to keep the optimization overhead low, curb scaling problems, and enable high degrees of parallelism. Unlike previous heuristics, it offers adjustable classical processing costs that determine the performance standard. As a benchmark, we analyze the performance of widely adopted heuristics, comparing them with the fundamental limits of metrology and a baseline random strategy. Numerical simulations show that WES delivers the most reliable performance and fastest learning rate, saturating the Heisenberg limit.
format Preprint
id arxiv_https___arxiv_org_abs_2508_07120
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Low Cost Bayesian Experimental Design for Quantum Frequency Estimation with Decoherence
Ramôa, Alexandra
Santos, Luís Paulo
Soeda, Akihito
Quantum Physics
A two-level quantum system evolving under a time-independent Hamiltonian produces oscillatory measurement probabilities. The estimation of the associated frequency is a cornerstone problem in quantum metrology, sensing, calibration and control. In this work, we tackle this task by introducing WES: a Window Expansion Strategy for low cost adaptive Bayesian experimental design. WES employs empirical cost-reduction techniques to keep the optimization overhead low, curb scaling problems, and enable high degrees of parallelism. Unlike previous heuristics, it offers adjustable classical processing costs that determine the performance standard. As a benchmark, we analyze the performance of widely adopted heuristics, comparing them with the fundamental limits of metrology and a baseline random strategy. Numerical simulations show that WES delivers the most reliable performance and fastest learning rate, saturating the Heisenberg limit.
title Low Cost Bayesian Experimental Design for Quantum Frequency Estimation with Decoherence
topic Quantum Physics
url https://arxiv.org/abs/2508.07120