Memory kernel and divisibility of Gaussian Collisional Models
Rolando Ramirez Camasca, Gabriel T. Landi

TL;DR
This paper analytically investigates memory effects in Gaussian collisional models of open quantum systems, deriving explicit formulas for the memory kernel and divisibility, and analyzing two key interaction types to understand non-Markovian dynamics.
Contribution
It introduces an analytical framework for Gaussian collisional models, providing explicit expressions for the memory kernel and divisibility, enhancing understanding of non-Markovian quantum dynamics.
Findings
Derived closed-form expressions for the memory kernel.
Analyzed divisibility monotone based on complete positivity.
Studied effects of beam-splitter and two-mode squeezing interactions.
Abstract
Memory effects in the dynamics of open systems have been the subject of significant interest in the last decades. The methods involved in quantifying this effect, however, are often difficult to compute and may lack analytical insight. With this in mind, we consider Gaussian collisional models, where non-Markovianity is introduced by means of additional interactions between neighboring environmental units. By focusing on continuous-variable Gaussian dynamics, we are able to analytically study models of arbitrary size. We show that the dynamics can be cast in terms of a Markovian Embedding of the covariance matrix, which yields closed form expressions for the memory kernel that governs the dynamics, a quantity that can seldom be computed analytically. The same is also possible for a divisibility monotone, based on the complete positivity of intermediate maps. We analyze in detail two…
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