Dynamical modelling of superstatistical complex systems
Statistical Mechanics
2011-01-10 v4
Abstract
We show how to construct the optimum superstatistical dynamical model for a given experimentally measured time series. For this purpose we generalise the superstatistics concept and study a Langevin equation with a memory kernel whose parameters fluctuate on a large time scale. It is shown how to construct a synthetic dynamical model with the same invariant density and correlation function as the experimental data. As a main example we apply our method to velocity time series measured in high-Reynolds number turbulent Taylor-Couette flow, but the method can be applied to many other complex systems in a similar way.
Cite
@article{arxiv.0911.4816,
title = {Dynamical modelling of superstatistical complex systems},
author = {Erik Van der Straeten and Christian Beck},
journal= {arXiv preprint arXiv:0911.4816},
year = {2011}
}
Comments
11 pages, 4 figures