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Random dynamical system

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In mathematics, a random dynamical system is a measure-theoretic formulation of a dynamical system with an element of "randomness", such as the dynamics of solutions to a stochastic differential equation. It consists of a base flow, the "noise", and a cocycle dynamical system on the "physical" phase space.

Motivation: solutions to a stochastic differential equation

Let be a -dimensional vector field, and let . Suppose that the solution to the stochastic differential equation

exists for all positive time and some (small) interval of negative time dependent upon , where denotes a -dimensional Wiener process (Brownian motion). Implicitly, this statement uses the classical Wiener probability space

In this context, the Wiener process is the coordinate process.

Now define a flow map or (solution operator) by

(whenever the right hand side is well-defined). Then (or, more precisely, the pair ) is a (local, left-sided) random dynamical system.

Formal definition

Formally, a random dynamical system consists of a base flow, the "noise", and a cocycle dynamical system on the "physical" phase space. In detail:

Let be a probability space. Define the base flow as follows: for each "time" , let be a measure-preserving measurable function:

for all and ;

Suppose also that

  1. , the identity function on ;
  2. for all , .

That is, , , forms a group of measure-preserving transformation of the noise . (While true in most applications, it is not usually part of the formal definition of a random dynamical system to require that the measure-preserving dynamical system is ergodic.)

Now let be a complete separable metric space, the phase space. Let be a -measurable function such that

  1. for all , , the identity function on ;
  2. for (almost) all , is continuous in both and ;
  3. satisfies the (crude) cocycle property: for almost all ,

In the case of random dynamical systems driven by a Wiener process , the base flow would be given by

.

This can be read as saying that "starts the noise at time instead of time 0". Thus, the cocycle property can be read as saying that evolving the initial condition with some noise for seconds and then through seconds with the same noise (as started from the seconds mark) gives the same result as evolving through seconds with that same noise.

Attractors for random dynamical systems

Intuitively, it seems obvious that should an attractor exist for a random dynamical system, it should depend upon the realisation of the noise.

The random global attractor for a random dynamical system is a -almost surely unique random set such that

  1. is a random compact set: is almost surely compact and is a measurable function for every ;
  2. is invariant: for all almost surely;
  3. is attractive: for any bounded set ,
as almost surely.

There is a slight abuse of notation in the above: the first use of "dist" refers to the Hausdorff semi-distance from a point to a set,

whereas the second use of "dist" refers to the Hausdorff semi-distance between two sets,

Reference

  • Crauel, H., Debussche, A., & Flandoli, F. (1997) Random attractors. Journal of Dynamics and Differential Equations. 9(2) 307—341.