Learning Stochastic Dynamical System Via Flow Map Operator

30 Pages Posted: 15 May 2023

See all articles by Yuan Chen

Yuan Chen

The Ohio State University

Dongbin Xiu

The Ohio State University

Abstract

We present a numerical framework for learning unknown stochastic dynamical systems using measurement data. Termed stochastic flow map learning (sFML), the new framework is an extension of flow map learning (FML) that was developed for learning deterministic dynamical systems. For learning stochastic systems, we define a stochastic flow map that is a superposition of two sub-flow maps: a deterministic sub-map and a stochastic sub-map. The stochastic training data are used to construct the deterministic sub-map first, followed by the stochastic sub-map. The deterministic sub-map takes the form of residual network (ResNet), similar to the work of FML for deterministic systems. For the stochastic sub-map, we employ a generative model, particularly generative adversarial networks (GANs) in this paper. The final constructed stochastic flow map then defines a stochastic evolution model that is a weak approximation, in term of distribution, of the unknown stochastic system. A comprehensive set of numerical examples are presented to demonstrate the flexibility and effectiveness of the proposed sFML method for various types of stochastic systems.

Keywords: data driven modeling, stochastic dynamical systems, deep neural networks, generative adversarial networks, stochastic differential equations

Suggested Citation

Chen, Yuan and Xiu, Dongbin, Learning Stochastic Dynamical System Via Flow Map Operator. Available at SSRN: https://ssrn.com/abstract=4449245 or http://dx.doi.org/10.2139/ssrn.4449245

Yuan Chen

The Ohio State University ( email )

Dongbin Xiu (Contact Author)

The Ohio State University ( email )

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