Smoothing Dynamic Systems with State-Dependent Covariance Matrices

11/19/2012
by   Aleksandr Y. Aravkin, et al.
0

Kalman filtering and smoothing algorithms are used in many areas, including tracking and navigation, medical applications, and financial trend filtering. One of the basic assumptions required to apply the Kalman smoothing framework is that error covariance matrices are known and given. In this paper, we study a general class of inference problems where covariance matrices can depend functionally on unknown parameters. In the Kalman framework, this allows modeling situations where covariance matrices may depend functionally on the state sequence being estimated. We present an extended formulation and generalized Gauss-Newton (GGN) algorithm for inference in this context. When applied to dynamic systems inference, we show the algorithm can be implemented to preserve the computational efficiency of the classic Kalman smoother. The new approach is illustrated with a synthetic numerical example.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/08/2013

Optimization viewpoint on Kalman smoothing, with applications to robust and sparse estimation

In this paper, we present the optimization formulation of the Kalman fil...
research
12/06/2017

A Kalman Filter Approach for Biomolecular Systems with Noise Covariance Updating

An important part of system modeling is determining parameter values, pa...
research
01/19/2013

Sparse/Robust Estimation and Kalman Smoothing with Nonsmooth Log-Concave Densities: Modeling, Computation, and Theory

We introduce a class of quadratic support (QS) functions, many of which ...
research
06/15/2023

A Recursive Newton Method for Smoothing in Nonlinear State Space Models

In this paper, we use the optimization formulation of nonlinear Kalman f...
research
09/20/2016

Generalized Kalman Smoothing: Modeling and Algorithms

State-space smoothing has found many applications in science and enginee...
research
01/24/2018

Identification of Spikes in Time Series

Identification of unexpectedly high values in a time series is useful fo...
research
09/06/2020

Weighted Information Filtering, Smoothing, and Out-of-Sequence Measurement Processing

We consider the problem of state estimation in dynamical systems and pro...

Please sign up or login with your details

Forgot password? Click here to reset