Quantum non-Markovian environment-to-system backflows of information:
non-operational vs. operational approaches
- URL: http://arxiv.org/abs/2205.03333v1
- Date: Fri, 6 May 2022 16:12:17 GMT
- Title: Quantum non-Markovian environment-to-system backflows of information:
non-operational vs. operational approaches
- Authors: Adri\'an A. Budini
- Abstract summary: We analyze and compare how this concept is interpreted and implemented in different approaches to quantum non-Markovianity.
We study a non-operational approach, defined by the istinguishability between two system states.
We study a non-Markovian depolarizing map induced by the interaction of the system of interest with an environment characterized by incoherent and coherent self-dynamics.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum memory effects can be qualitatively understood as a consequence of an
environment-to-system backflow of information. Here, we analyze and compare how
this concept is interpreted and implemented in different approaches to quantum
non-Markovianity. We study a non-operational approach, defined by the
istinguishability between two system states characterized by different initial
conditions, and an operational approach, which is defined by the correlation
between different outcomes associated to successive measurement processes
performed over the system of interest. The differences, limitations, and
vantages of each approach are characterized in detail by considering diverse
system-environment models and dynamics. As a specific example, we study a
non-Markovian depolarizing map induced by the interaction of the system of
interest with an environment characterized by incoherent and coherent
self-dynamics.
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