Thermometry by correlated dephasing of impurities in a 1D Fermi gas
Sindre Brattegard, Mark T. Mitchison

TL;DR
This paper explores how impurity correlations in a 1D Fermi gas can enhance quantum thermometry, showing that bath-mediated interactions improve temperature sensitivity without complex initial state preparation.
Contribution
It demonstrates that impurity correlations mediated by a Fermi gas can be exploited to improve thermometric precision using standard Ramsey interferometry.
Findings
Correlations between impurities can enhance temperature sensitivity.
Low temperature and weak coupling maximize metrological advantage.
Ignoring correlations still yields acceptable temperature estimates.
Abstract
We theoretically investigate the pure dephasing dynamics of two static impurity qubits embedded within a common environment of ultracold fermionic atoms, which are confined to one spatial dimension. Our goal is to understand how bath-mediated interactions between impurities affect their performance as nonequilibrium quantum thermometers. By solving the dynamics exactly using a functional determinant approach, we show that the impurities become correlated via retarded interactions of the Ruderman-Kittel-Kasuya-Yosida type. Moreover, we demonstrate that these correlations can provide a metrological advantage, enhancing the sensitivity of the two-qubit thermometer beyond that of two independent impurities. This enhancement is most prominent in the limit of low temperature and weak collisional coupling between the impurities and the gas. We show that this precision advantage can be…
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Taxonomy
TopicsCold Atom Physics and Bose-Einstein Condensates · Advanced Thermodynamics and Statistical Mechanics · Complex Systems and Time Series Analysis
