Aim of this paper is to give recommendation for work with methods used for estimation of coefficients of autoregressive process. We applied Monte Carlo simulations to investigate performance of Burg, Yule-Walker and covariance methods. Evaluation of precision of spectral estimation is done with focus on signal length and lag order. The results are presented in graphical form and briefly discussed. Taking these results into account, Yule-Walker method shows better performance in case of long length signals and in case of overvalued lag order. Burg and covariance methods provide better results in case of short length signal and undervalued lag order
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
In this thesis, the problem of estimating the autoregressive (AR) parameters of a wide sense station...
Abstract: This paper deals with the hypothesis testing for the mean of the stationary vector autoreg...
AbstractAutoregressive models are important in describing the behaviour of the observed time series....
In order to develop a method capable of determining the time variant spectrum of time series, variou...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
The Yule-Walker (YW) method for autoregressive (AR) estimation uses lagged-product (LP) autocorrelat...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
Autoregressive spectral analysis depends on the method used for estimating the autoregressive parame...
The sample autocorrelation function is defined by the mean lagged products (LPs) of random observati...
Estimating the autoregressive parameters from noisy observations has been addressed by various autho...
A good parametric spectral estimator requires an accurate estimate of the sum of AR coefficients, ho...
The most commonly used method for estimating the time domain parameters of an autoregressive process...
The exact statistics of the estimated reflection coefficients for an autoregressive process are diff...
Estimating the parameters of the autoregressive (AR) random process is a problem that has been well-...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
In this thesis, the problem of estimating the autoregressive (AR) parameters of a wide sense station...
Abstract: This paper deals with the hypothesis testing for the mean of the stationary vector autoreg...
AbstractAutoregressive models are important in describing the behaviour of the observed time series....
In order to develop a method capable of determining the time variant spectrum of time series, variou...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
The Yule-Walker (YW) method for autoregressive (AR) estimation uses lagged-product (LP) autocorrelat...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
Autoregressive spectral analysis depends on the method used for estimating the autoregressive parame...
The sample autocorrelation function is defined by the mean lagged products (LPs) of random observati...
Estimating the autoregressive parameters from noisy observations has been addressed by various autho...
A good parametric spectral estimator requires an accurate estimate of the sum of AR coefficients, ho...
The most commonly used method for estimating the time domain parameters of an autoregressive process...
The exact statistics of the estimated reflection coefficients for an autoregressive process are diff...
Estimating the parameters of the autoregressive (AR) random process is a problem that has been well-...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
In this thesis, the problem of estimating the autoregressive (AR) parameters of a wide sense station...
Abstract: This paper deals with the hypothesis testing for the mean of the stationary vector autoreg...