Title :
Non-causal ARMA model identification by maximizing the kurtosis
Author :
Vauttoux, J.-L. ; Carpentier, E. Le
Author_Institution :
CNRS, Nantes, France
Abstract :
The problem of estimating the parameters of a noncausal ARMA system, driven by an unobservable input noise is addressed. We propose a method based on a generalized version of the prediction error minimum variance approach and on the maximum kurtosis properties. Firstly, a spectrally equivalent (SE) model is identified with the generalized minimum variance approach. Secondly, the kurtosis allows us to identify the phase of the true model by localizing its zeros and poles from the SE model. Finally, we propose a new method which is a closed-loop form of the preceding method allowing to improve the accuracy of the parameter estimation and to obtain a better reconstruction of the estimated model phase. Simulation results seem to confirm the good behavior of the proposed methods compared to methods using higher order statistics
Keywords :
autoregressive moving average processes; parameter estimation; poles and zeros; prediction theory; spectral analysis; white noise; closed-loop form; generalized minimum variance approach; higher order statistics; kurtosis maximization; noncausal ARMA model identification; parameter estimation; poles; prediction error minimum variance approach; reconstruction; simulations; spectrally equivalent model; unobservable input noise; zeros; Convolution; Covariance matrix; Higher order statistics; Parameter estimation; Phase estimation; Poles and zeros; Predictive models; White noise;
Conference_Titel :
Higher-Order Statistics, 1997., Proceedings of the IEEE Signal Processing Workshop on
Conference_Location :
Banff, Alta.
Print_ISBN :
0-8186-8005-9
DOI :
10.1109/HOST.1997.613522