Estimating the parameters of the autoregressive (AR) random process is a problem that has been well-studied. In many applications, only noisy measurements of AR process are available. The effect of the additive noise is that the system can be modeled as an AR model with colored noise, even when the measurement noise is white, where the correlation matrix depends on the AR parameters. Because of the correlation, it is expedient to compute using multiple stacked observations. Performing a weighted least-squares estimation of the AR parameters using an inverse covariance weighting can provide significantly better parameter estimates, with improvement increasing with the stack depth. The estimation algorithm is essentially a vector RLS adaptive...
This paper presents a new type of improved least-squares (ILS) algorithm for adaptive parameter esti...
A method for autoregressive (AR) modeling of stationary stochastic signals has previously been propo...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
A great deal of interest has been paid to the estimation of time-varying autoregressive (TVAR) param...
A great deal of interest has been paid to the time-varying autoregressive (TVAR) parameter tracking,...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
AbstractAutoregressive models are important in describing the behaviour of the observed time series....
Abstract — This paper focuses on bias compensation estima-tion of autoregressive (AR) process in the...
This paper is concerned with parameter estimation of autoregressive (AR) signals from noisy observat...
Abstract. I n a number of applications involving the processing of noisy signals, it is desirable to...
We consider the problem of estimating the parameters of autoregressive (AR) processes in the presenc...
Estimating the autoregressive parameters from noisy observations has been addressed by various autho...
A method for autoregressive (AR) modeling of stationary stochastic signals has been proposed based o...
Albeit several least-squares (LS) based methods have been developed for noisy autoregressive (AR) si...
This paper presents a new type of improved least-squares (ILS) algorithm for adaptive parameter esti...
A method for autoregressive (AR) modeling of stationary stochastic signals has previously been propo...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...
This paper considers the problem of estimating the parameters of an autoregressive (AR) process in p...
A great deal of interest has been paid to the estimation of time-varying autoregressive (TVAR) param...
A great deal of interest has been paid to the time-varying autoregressive (TVAR) parameter tracking,...
A common approach in modeling signals in many engineering applications consists in adopting autoregr...
AbstractAutoregressive models are important in describing the behaviour of the observed time series....
Abstract — This paper focuses on bias compensation estima-tion of autoregressive (AR) process in the...
This paper is concerned with parameter estimation of autoregressive (AR) signals from noisy observat...
Abstract. I n a number of applications involving the processing of noisy signals, it is desirable to...
We consider the problem of estimating the parameters of autoregressive (AR) processes in the presenc...
Estimating the autoregressive parameters from noisy observations has been addressed by various autho...
A method for autoregressive (AR) modeling of stationary stochastic signals has been proposed based o...
Albeit several least-squares (LS) based methods have been developed for noisy autoregressive (AR) si...
This paper presents a new type of improved least-squares (ILS) algorithm for adaptive parameter esti...
A method for autoregressive (AR) modeling of stationary stochastic signals has previously been propo...
none3This paper deals with the problem of identifying autoregressive models in presence of additive ...