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Quantum Algorithms

Attraction Domain Analysis for Steady States of Markovian Open Quantum Systems

arXiv
Authors: Shikun Zhang, Guofeng Zhang

Year

2023

Paper ID

55801

Status

Preprint

Abstract Read

~2 min

Abstract Words

114

Citations

N/A

Abstract

This article concerns the attraction domain analysis for steady states in Markovian open quantum systems. The central question is proposed as: given a steady state, which part of the state space of density operators does it attract and which part does it not attract? We answer this question by presenting necessary and sufficient conditions that determine, for any steady state and initial state, whether the latter belongs to the attraction domain of the former. Moreover, we show that steady states without uniqueness in the set of density operators have attraction domains with measure zero under some translation invariant and locally finite measures. Finally, an example regarding an open Heisenberg XXZ spin chain is presented.

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  • It adds a 2023 reference point for readers tracking recent quantum research.
  • This article concerns the attraction domain analysis for steady states in Markovian open quantum systems.

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