학술논문

A new bias-compensating least-squares method for identification of stochastic linear systems in presence of coloured noise
Document Type
Conference
Source
Proceedings of 32nd IEEE Conference on Decision and Control Decision and control Decision and Control, 1993., Proceedings of the 32nd IEEE Conference on. :2038-2043 vol.3 1993
Subject
Robotics and Control Systems
Computing and Processing
Stochastic systems
Linear systems
Parameter estimation
Colored noise
Stochastic resonance
Digital filters
Additive noise
Noise robustness
System identification
Equations
Language
Abstract
In this paper, a new bias-compensating least-squares method is presented for the identification of linear, single-input single-output, discrete-time systems in which the output is corrupted by an additive coloured noise. It is well known that the ordinary least-squares method may lead to biased or nonconsistent estimates of system parameters in the presence of disturbances. The bias problem may be solved, for example, by using the generalised least-squares method. In the generalised least-squares method, a digital filter is used to filter the observed input-output data. The principle of the proposed method is to introduce the filter of the conventional generalised least-squares method on the input of the identified system. By using this filter with known zeros, the bias of the ordinary least-squares estimator may then be estimated and removed, which consists of the bias-compensating method principle. The proposed and the generalised least-squares methods are applied to two simulated systems via Monte Carlo simulations.ETX