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Trapped Ion Quantum Computing
Quantum Simulation
Exponentially accelerated relaxation and quantum Mpemba effect in open quantum systems
arXiv
Authors: Emerson Lima Caldas, Diego Paiva Pires
Year
2025
Paper ID
16026
Status
Preprint
Abstract Read
~2 min
Abstract Words
200
Citations
N/A
Abstract
We investigate the quantum Mpemba effect in the relaxation of open quantum systems whose effective dynamics is described by Davies maps. We present a class of unitary transformations built from permutation matrices that, when applied to the initial state of the system, (i) suppress the slowest decaying modes of the nonunitary dynamics; (ii) maximize its distinguishability from the steady state. The first requirement guarantees exponentially accelerating convergence to the steady state, and the second implies that a quantum system initially farther from equilibrium approaches it more rapidly than one that starts closer. This protocol provides a genuine Mpemba effect, and its numerical simulation requires low computational effort. We prove that, for any initial state, one can always find a permutation matrix that maximizes its distance from equilibrium for a specified information-theoretic distinguishability measure. We illustrate our findings for a two-level system, and also for the nonunitary dynamics of the transverse field Ising chain and XXZ chain, each weakly coupled to a bosonic thermal bath, and demonstrate the quantum Mpemba effect as captured by the Hilbert-Schmidt distance, quantum relative entropy, and trace distance. Our results provide a versatile framework to engineer the genuine quantum Mpemba effect in Markovian open quantum systems.
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- This paper contributes to the Quantum Simulation research area in the Quantum Articles archive.
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- We investigate the quantum Mpemba effect in the relaxation of open quantum systems whose effective dynamics is described by Davies maps.
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