none1noA new bias-compensated least-squares method for identifying finite impulse response (FIR) models whose input and output are affected by additive white noise is proposed. By exploiting the statistical properties of the equation error of the noisy FIR system, an estimate of the input noise variance is obtained and the noise-induced bias is removed. The results obtained by means of Monte Carlo simulations show that the proposed algorithm outperforms other bias-compensated approaches and allows to obtain an estimation accuracy comparable to that of total least-squares without requiring the a priori knowledge of the input–output noise variance ratio.noneR. DiversiR. Divers
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
Copyright © 2013 T. J. Moir. This is an open access article distributed under the Creative Commons A...
This paper is concerned with identifying parameters of finite impulse response (FIR) systems from no...
This paper proposes an efficient algorithm for identifying FIR models when also the input is assumed...
This paper proposes an efficient algorithm for identifying FIR models when also the input is assumed...
This paper describes a method for identifying FIR models in the presence of input and output noise. ...
This paper describes a method for identifying FIR models in the presence of input and output noise. ...
none3This paper proposes an efficient algorithm for identifying FIR models when also the input is as...
none1noThis paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear d...
This paper describes a new approach for identifying FIR models from a finite number of measurements,...
This paper describes a new approach for identifying FIR models from a finite number of measurements,...
This paper describes a new approach for identifying FIR models from a finite number of measurements,...
In this paper, by assuming that the ratio between the output noise variance and the input noise vari...
In this paper the problem of finite impulse response (FIR) filtering with noisy input-output data is...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
Copyright © 2013 T. J. Moir. This is an open access article distributed under the Creative Commons A...
This paper is concerned with identifying parameters of finite impulse response (FIR) systems from no...
This paper proposes an efficient algorithm for identifying FIR models when also the input is assumed...
This paper proposes an efficient algorithm for identifying FIR models when also the input is assumed...
This paper describes a method for identifying FIR models in the presence of input and output noise. ...
This paper describes a method for identifying FIR models in the presence of input and output noise. ...
none3This paper proposes an efficient algorithm for identifying FIR models when also the input is as...
none1noThis paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear d...
This paper describes a new approach for identifying FIR models from a finite number of measurements,...
This paper describes a new approach for identifying FIR models from a finite number of measurements,...
This paper describes a new approach for identifying FIR models from a finite number of measurements,...
In this paper, by assuming that the ratio between the output noise variance and the input noise vari...
In this paper the problem of finite impulse response (FIR) filtering with noisy input-output data is...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
A simple algorithm is developed for unbiased parameter identification of autoregressive (AR) signals...
Copyright © 2013 T. J. Moir. This is an open access article distributed under the Creative Commons A...