Data-driven Solution of Stochastic Differential Equations Using Maximum Entropy Basis Functions

04/03/2020
by   Vedang M. Deshpande, et al.
0

In this paper we present a data-driven approach for uncertainty propagation. In particular, we consider stochastic differential equations with parametric uncertainty. Solution of the differential equation is approximated using maximum entropy (maxent) basis functions similar to polynomial chaos expansions. Maxent basis functions are derived from available data by maximization of information-theoretic entropy, therefore, there is no need to specify basis functions beforehand. We compare the proposed maxent based approach with existing methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/27/2019

Data-driven discovery of free-form governing differential equations

We present a method of discovering governing differential equations from...
research
05/23/2022

Learning differential equations from data

Differential equations are used to model problems that originate in disc...
research
11/22/2020

Autonomous learning of nonlocal stochastic neuron dynamics

Neuronal dynamics is driven by externally imposed or internally generate...
research
12/09/2021

Nonparametric inference of stochastic differential equations based on the relative entropy rate

The information detection of complex systems from data is currently unde...
research
01/05/2022

On the Use of RBF Interpolation for Flux Reconstruction

Flux reconstruction provides a framework for solving partial differentia...
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
07/01/2023

A Constructive Approach to Function Realization by Neural Stochastic Differential Equations

The problem of function approximation by neural dynamical systems has ty...

Please sign up or login with your details

Forgot password? Click here to reset