On the estimation of initial conditions in kernel-based system identification

04/30/2015
by   Riccardo Sven Risuleo, et al.
0

Recent developments in system identification have brought attention to regularized kernel-based methods, where, adopting the recently introduced stable spline kernel, prior information on the unknown process is enforced. This reduces the variance of the estimates and thus makes kernel-based methods particularly attractive when few input-output data samples are available. In such cases however, the influence of the system initial conditions may have a significant impact on the output dynamics. In this paper, we specifically address this point. We propose three methods that deal with the estimation of initial conditions using different types of information. The methods consist in various mixed maximum likelihood--a posteriori estimators which estimate the initial conditions and tune the hyperparameters characterizing the stable spline kernel. To solve the related optimization problems, we resort to the expectation-maximization method, showing that the solutions can be attained by iterating among simple update steps. Numerical experiments show the advantages, in terms of accuracy in reconstructing the system impulse response, of the proposed strategies, compared to other kernel-based schemes not accounting for the effect initial conditions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/12/2014

Blind system identification using kernel-based methods

We propose a new method for blind system identification. Resorting to a ...
research
05/20/2019

A novel Multiplicative Polynomial Kernel for Volterra series identification

Volterra series are especially useful for nonlinear system identificatio...
research
10/03/2016

A new kernel-based approach to system identification with quantized output data

In this paper we introduce a novel method for linear system identificati...
research
11/21/2014

Robust EM kernel-based methods for linear system identification

Recent developments in system identification have brought attention to r...
research
09/30/2013

Generalized system identification with stable spline kernels

Regularized least-squares approaches have been successfully applied to l...
research
06/22/2014

On the Maximum Entropy Property of the First-Order Stable Spline Kernel and its Implications

A new nonparametric approach for system identification has been recently...
research
01/04/2020

A stable SPH with adaptive B-spline kernel

Tensile instability, often observed in smoothed particle hydrodynamics (...

Please sign up or login with your details

Forgot password? Click here to reset