On Irreversibility and Stochastic Systems: Part One
Giorgio Picci

TL;DR
This paper explores how irreversibility in dynamical systems can be characterized through different forward and backward representations, especially when coupled with heat baths, bridging deterministic and stochastic descriptions.
Contribution
It demonstrates that finite-dimensional conservative systems coupled to infinite-dimensional heat baths can exhibit irreversibility and stochastic behavior, with novel insights into eigenvalue shifts and noise induction.
Findings
Heat bath induces dissipation via state-feedback.
Coupling with heat bath can produce backward-evolving models.
Invariant measures lead to stochastic diffusion behavior.
Abstract
We attempt to characterize irreversibility of a dynamical system from the existence of different forward and backward mathematical representations depending on the direction of the time arrow. Such different representations have been studied intensively and are shown to exist for stochastic diffusion models. In this setting one has however to face the preliminary justification of stochastic description for physical systems which are described by classical mechanics as inherently deterministic and conservative. In part one of this paper we first address this modeling problem for linear systems in a deterministic context. We show that forward-backward representations can also describe conservative finite dimensional deterministic systems when they are coupled to an infinite-dimensional conservative heat bath. A novel key observation is that the heat bath acts on the finite-dimensional…
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Taxonomy
TopicsAdvanced Thermodynamics and Statistical Mechanics · stochastic dynamics and bifurcation · Gene Regulatory Network Analysis
