The problem of estimation of a stochastic linear system has been a matter of active research for the last years. One of the simplest models considers a ‘black box’ with some input and a certain output. The input may be single or multiple and there is the same choice for the output. This generates a great amount of models that can be considered. The sphere of applications of these models is very extensive, ranging from signal processing and automatic control to econometrics (errors-in-variables models). In this paper a time-invariant continuous linear system is considered with a real-valued impulse response function. We assume that impulse function is square-integrable. Input signal is supposed to be Gaussian stationary stochastic process wi...
International audienceThis paper reexamines the asymptotic performance analysis of second-order meth...
We consider the problem of estimating the autocorrelation operator of an autoregressive Hilbertian p...
In system identification, different methods are often classified as parametric or non-parametric met...
The problem of estimation of a stochastic linear system has been a matter of active research for the...
The problem of estimation of a stochastic linear system has been a matter of active research for the...
This paper proposes a new recursive least-squares (RLS) estimation algorithm for an impulse response...
One of the applications of cross-spectral estimation of stationary time series, developed some five ...
In this paper, the impulse response of a given continuous-time system using MATLAB is presented. The...
AbstractLet {xt} (t = 0, ±1, ±2, ...) be a linear process, xt = ϵt + b(l) ϵt − 1 + · · ·, where {ϵt}...
This article proposes an alternative methodology to estimate impulse response functions without impo...
In the theory of stochastic differential equations, it is commonly assumed that the forcing function...
This paper investigates the impulse response estimation of linear time-invariant (LTI) systems when ...
Intrigued by some recent results on impulse response estimation by kernel and nonparametric techniqu...
In this paper, we consider function-indexed normalized weighted integrated periodograms for equidist...
Stochastic system identification is of great interest in the areas of control and communication. In ...
International audienceThis paper reexamines the asymptotic performance analysis of second-order meth...
We consider the problem of estimating the autocorrelation operator of an autoregressive Hilbertian p...
In system identification, different methods are often classified as parametric or non-parametric met...
The problem of estimation of a stochastic linear system has been a matter of active research for the...
The problem of estimation of a stochastic linear system has been a matter of active research for the...
This paper proposes a new recursive least-squares (RLS) estimation algorithm for an impulse response...
One of the applications of cross-spectral estimation of stationary time series, developed some five ...
In this paper, the impulse response of a given continuous-time system using MATLAB is presented. The...
AbstractLet {xt} (t = 0, ±1, ±2, ...) be a linear process, xt = ϵt + b(l) ϵt − 1 + · · ·, where {ϵt}...
This article proposes an alternative methodology to estimate impulse response functions without impo...
In the theory of stochastic differential equations, it is commonly assumed that the forcing function...
This paper investigates the impulse response estimation of linear time-invariant (LTI) systems when ...
Intrigued by some recent results on impulse response estimation by kernel and nonparametric techniqu...
In this paper, we consider function-indexed normalized weighted integrated periodograms for equidist...
Stochastic system identification is of great interest in the areas of control and communication. In ...
International audienceThis paper reexamines the asymptotic performance analysis of second-order meth...
We consider the problem of estimating the autocorrelation operator of an autoregressive Hilbertian p...
In system identification, different methods are often classified as parametric or non-parametric met...