Author_Institution :
Fac. of EE & Comput. Sci., Univ. of Maribor, Maribor, Slovenia
Abstract :
The paper analyses autoregressive moving-average (ARMA) system identification method. This method belongs to higher-order statistical methods of a linear algebra type, showing a unique feature that the method works for any kind of model, i.e. MA, AR, or ARMA, and that the model´s order (p, q) need not be known in advance. Our analyses of the ARMA approach proved that there is a class of systems not being identifiable. All these systems having poles si; i = 1,..., p, and at least one zero of type of (si1 si2 ... Sik-1)-1; i1, i2,..., ik-1 ϵ (1,..., p) cannot be identified by ARMA w-slices using kth-order cumulante, no matter whether with single cumulante, linear combination of cumulante, 1-D slices, or multidimensional slices. The analytical result is backed by simulations. Finally, we propose a procedure of verification of ARMA identifiability and an extension of ARMA w-slice in order to assure the identifiability.
Keywords :
algebra; autoregressive moving average processes; higher order statistics; 1D slice; ARMA system identification method; ARMA w-slice method; autoregressive moving-average system identification method; higher-order cumulant; higher-order statistical method; kth-order cumulant; linear algebra type; multidimensional slice; Autoregressive processes; Higher order statistics; Linear algebra; Manganese; Noise; Poles and zeros;