Abstract

Many studies on biological and soft matter systems report the joint presence of a linear mean-squared displacement and a non-Gaussian probability density exhibiting, for instance, exponential or stretched-Gaussian tails. This phenomenon is ascribed to the heterogeneity of the medium and is captured by random parameter models such as ‘superstatistics’ or ‘diffusing diffusivity’. Independently, scientists working in the area of time series analysis and statistics have studied a class of discrete-time processes with similar properties, namely, random coefficient autoregressive models. In this work we try to reconcile these two approaches and thus provide a bridge between physical stochastic processes and autoregressive models. We start from the basic Langevin equation of motion with time-varying damping or diffusion coefficients and establish the link to random coefficient autoregressive processes. By exploring that link we gain access to efficient statistical methods which can help to identify data exhibiting Brownian yet non-Gaussian diffusion.

Highlights

  • Brownian motion, one of the most fundamental processes in non-equilibrium statistical physics, describes the motion of a passive colloidal particle in a thermal fluid environment

  • Scientists working in the area of time series analysis and statistics have studied a class of discrete-time processes with similar properties, namely, random coefficient autoregressive models

  • Two fundamental properties are typically associated with Brownian motion, namely, the linear growth d2X (t) ≔ [X (t)2] = 2Dt in time of the mean-squared displacement (MSD) with the diffusion coefficient D, and the Gaussian probability density function (PDF)

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Summary

18 July 2019

This phenomenon is ascribed to the heterogeneity of the medium and is the work, journal citation and DOI. Scientists working in the area of time series analysis and statistics have studied a class of discrete-time processes with similar properties, namely, random coefficient autoregressive models.

Introduction
Physical stochastic modelling and autoregressive models
Physical derivation of the autoregressive model
Memory
Discussion
Full Text
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