Deep Nonlinear Non-Gaussian Filtering for Dynamical Systems

11/14/2018
by   Arash Mehrjou, et al.
8

Filtering is a general name for inferring the states of a dynamical system given observations. The most common filtering approach is Gaussian Filtering (GF) where the distribution of the inferred states is a Gaussian whose mean is an affine function of the observations. There are two restrictions in this model: Gaussianity and Affinity. We propose a model to relax both these assumptions based on recent advances in implicit generative models. Empirical results show that the proposed method gives a significant advantage over GF and nonlinear methods based on fixed nonlinear kernels.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/26/2019

Deep Variational Koopman Models: Inferring Koopman Observations for Uncertainty-Aware Dynamics Modeling and Control

Koopman theory asserts that a nonlinear dynamical system can be mapped t...
research
06/15/2021

Machine learning-based conditional mean filter: a generalization of the ensemble Kalman filter for nonlinear data assimilation

Filtering is a data assimilation technique that performs the sequential ...
research
01/08/2023

Perron-Frobenius operator filter for stochastic dynamical systems

The filtering problems are derived from a sequential minimization of a q...
research
02/10/2020

Deep Representation Learning for Dynamical Systems Modeling

Proper states' representations are the key to the successful dynamics mo...
research
11/20/2022

Approximate Uncertainty Propagation for Continuous Gaussian Process Dynamical Systems

When learning continuous dynamical systems with Gaussian Processes, comp...
research
12/30/2019

Numerical Method for Parameter Inference of Nonlinear ODEs with Partial Observations

Parameter inference of dynamical systems is a challenging task faced by ...
research
08/06/2022

Weak Equivalents for Nonlinear Filtering Functions

The application of a nonlinear filtering function to a Linear Feedback S...

Please sign up or login with your details

Forgot password? Click here to reset