Collapse and revival structure of information backflow for a central spin coupled to a finite spin bath
Jingyi Fan, Shengshi Pang

TL;DR
This paper studies how the finite size of a spin bath influences the non-Markovian dynamics of a central spin, revealing collapse-revival patterns in information flow and the transition to Markovian behavior as the bath size increases.
Contribution
It analytically characterizes the collapse-revival structure of information backflow in a finite spin bath model and explains how bath size and system parameters affect non-Markovianity.
Findings
Collapse-revival patterns in information flow are analytically derived.
Increasing bath size leads to a transition from non-Markovian to Markovian dynamics.
Collapse and revival times scale with the number of bath spins.
Abstract
The Markovianity of quantum dynamics is an important property of open quantum systems determined by various ingredients of the system and bath. Apart from the system-bath interaction, the initial state of the bath, etc., the dimension of the bath plays a critical role in determining the Markovianity of quantum dynamics, as a strict decay of the bath correlations requires an infinite dimension for the bath. In this work, we investigate the role of finite bath dimension in the Markovianity of quantum dynamics by considering a simple but nontrivial model in which a central spin is isotropically coupled to a finite number of bath spins, and show how the dynamics of the central spin transits from non-Markovian to Markovian as the number of the bath spins increases. The non-Markovianity is characterized by the information backflow from the bath to the system in terms of the trace distance of…
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Taxonomy
TopicsNeural Networks and Applications · Quantum many-body systems · Theoretical and Computational Physics
