Exact dimension reduction for rough differential equations

06/30/2023
by   Martin Redmann, et al.
0

In this paper, practically computable low-order approximations of potentially high-dimensional differential equations driven by geometric rough paths are proposed and investigated. In particular, equations are studied that cover the linear setting, but we allow for a certain type of dissipative nonlinearity in the drift as well. In a first step, a linear subspace is found that contains the solution space of the underlying rough differential equation (RDE). This subspace is associated to covariances of linear Ito-stochastic differential equations which is shown exploiting a Gronwall lemma for matrix differential equations. Orthogonal projections onto the identified subspace lead to a first exact reduced order system. Secondly, a linear map of the RDE solution (quantity of interest) is analyzed in terms of redundant information meaning that state variables are found that do not contribute to the quantity of interest. Once more, a link to Ito-stochastic differential equations is used. Removing such unnecessary information from the RDE provides a further dimension reduction without causing an error. Finally, we discretize a linear parabolic rough partial differential equation in space. The resulting large-order RDE is subsequently tackled with the exact reduction techniques studied in this paper. We illustrate the enormous complexity reduction potential in the corresponding numerical experiments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/27/2020

Runge-Kutta methods for rough differential equations

We study Runge-Kutta methods for rough differential equations which can ...
research
07/10/2023

(Empirical) Gramian-based dimension reduction for stochastic differential equations driven by fractional Brownian motion

In this paper, we investigate large-scale linear systems driven by a fra...
research
06/24/2020

Semi-implicit Taylor schemes for stiff rough differential equations

We study a class of semi-implicit Taylor-type numerical methods that are...
research
01/31/2023

Model reduction for stochastic systems with nonlinear drift

In this paper, we study dimension reduction techniques for large-scale c...
research
11/20/2018

Global sensitivity analysis for models described by stochastic differential equations

Many mathematical models involve input parameters, which are not precise...
research
09/21/2021

Gramian-based model reduction for unstable stochastic systems

This paper considers large-scale linear stochastic systems representing,...
research
08/31/2021

Data-Driven Reduced-Order Modeling of Spatiotemporal Chaos with Neural Ordinary Differential Equations

Dissipative partial differential equations that exhibit chaotic dynamics...

Please sign up or login with your details

Forgot password? Click here to reset