A spectral density matrix estimator for stationary stochastic vector processes is studied. As the duration of the analyzed data tends to infinity, the probability distribution for this estimator at each frequency approaches a complex Wishart distribution with mean equal to an aliased version of the power spectral density at that frequency. It is shown that the spectral density matrix estimators corresponding to different frequencies are asymptotically statistically independent. These properties hold for general stationary vector processes, not only Gaussian processes, and they allow efficient calculation of updated probabilities when formulating a Bayesian model updating problem in the frequency domain using response data. A three-degree-of...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
Abstract. In this paper we consider the problem of obtaining a state space realization of a zero mea...
AbstractIn this paper, the spectral density estimation of a nonstationary class of stochastic proces...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
Abstract. In this paper we consider the problem of obtaining a state space realization of a zero mea...
AbstractIn this paper, the spectral density estimation of a nonstationary class of stochastic proces...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
In this paper we consider the problem of obtaining a state space realization of a zero mean gaussian...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
Spectral density built as Fourier transform of covariance sequence of stationary random process is ...
AbstractWeakly and strongly consistent nonparametric estimates, along with rates of convergence, are...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...