This paper addresses the task of identifying the parameters of a linear object in the presence of non-Gaussian interference. The identification algorithm is a gradient procedure for minimizing the combined functional. The combined functional, in turn, consists of the fourth-degree functional and a modular functional, whose weights are set using a mixing parameter. Such a combination of functionals makes it possible to obtain estimates that demonstrate robust properties. We have determined the conditions for the convergence of the applied procedure in the mean and root-mean-square measurements in the presence of non-Gaussian interference. In addition, expressions have been obtained to determine the optimal values of the algorithm's parameter...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
A kernel-based nonparametric approach to identification of linear systems in the presence of bounded...
In modern robust control, control system analysis and design are based on a nominal plant model and ...
The problem of identification of non-stationary parameters of a linear object, which can be describe...
The study deals with the problem of identification of non-stationary parameters of a linear object w...
The study deals with the problem of identification of non-stationary parameters of a linear object w...
Identification or model reduction of a linear system can be done in the time or in the frequency dom...
Abstract: In this paper new robust nonlinear model construction algorithms for a large class of line...
Abstract – In this paper, it is proved that calculations in identification models described in liter...
This paper is concerned with linear algorithms for identification in H∞ which have been studied in [...
The estimation of unknown excitation or input signals from measured response is essentially the solu...
In this paper, we consider the inverse problem of restoring an unknown signal or image, knowing the ...
In linear system identification problems, it is important to reveal and exploit any specific intrins...
In this paper new robust nonlinear model construction algorithms for a large class of linear-in-the-...
A problem which often arises in statistical signal processing is the detection of a parameterized si...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
A kernel-based nonparametric approach to identification of linear systems in the presence of bounded...
In modern robust control, control system analysis and design are based on a nominal plant model and ...
The problem of identification of non-stationary parameters of a linear object, which can be describe...
The study deals with the problem of identification of non-stationary parameters of a linear object w...
The study deals with the problem of identification of non-stationary parameters of a linear object w...
Identification or model reduction of a linear system can be done in the time or in the frequency dom...
Abstract: In this paper new robust nonlinear model construction algorithms for a large class of line...
Abstract – In this paper, it is proved that calculations in identification models described in liter...
This paper is concerned with linear algorithms for identification in H∞ which have been studied in [...
The estimation of unknown excitation or input signals from measured response is essentially the solu...
In this paper, we consider the inverse problem of restoring an unknown signal or image, knowing the ...
In linear system identification problems, it is important to reveal and exploit any specific intrins...
In this paper new robust nonlinear model construction algorithms for a large class of linear-in-the-...
A problem which often arises in statistical signal processing is the detection of a parameterized si...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
A kernel-based nonparametric approach to identification of linear systems in the presence of bounded...
In modern robust control, control system analysis and design are based on a nominal plant model and ...