Identification of Noisy Input-Output System Using Bias-Compensated Least-Squares Method
Authors: | Ikenoue Masato, Ariake National College of Technoligy, Japan Kanae Shunshoku, Kyushu University, Japan Yang Zi-Jiang, Kyushu University, Japan Wada Kiyoshi, Kyushu University, Japan |
---|
Topic: | 1.1 Modelling, Identification & Signal Processing |
---|
Session: | Methods for Errors-in-Variables |
---|
Keywords: | Estimation, Identification, Least-squares method |
---|
Abstract
In this paper, a new bias-compensated least-squares (BCLS) based algorithm is proposed for identification of noisy input-output system. It is well known that BCLS method is based on compensation of asymptotic bias on the least-squares (LS) estimates by making use of noise variances estimates. The main feature of the proposed algorithm is to introduce a generalized least-squares type estimator in order to obtain the good estimates of noise variances. The results of a simulated example indicate that the proposed algorithm provides good estimates.