Vz. Marmarelis, IDENTIFICATION OF NONLINEAR BIOLOGICAL-SYSTEMS USING LAGUERRE EXPANSIONS OF KERNELS, Annals of biomedical engineering, 21(6), 1993, pp. 573-589
Identification of nonlinear dynamic systems using the Volterra-Wiener
approach requires the estimation of system kernels from input-output d
ata. A kernel estimation technique, originally proposed by Wiener (195
8) and recently studied by Ogura (1986), employs Laguerre expansions o
f the kernels and estimates the unknown expansion coefficients via tim
e-averaging of covariance samples. This paper presents another impleme
ntation of the technique which utilizes least-squares fitting instead
of covariance time-averaging and provides for the proper selection of
the intrinsic Laguerre parameter ''alpha''. Results from simulation ex
amples demonstrate that this implementation can yield accurate kernel
estimates up to 3rd-order from short input-output data records. Furthe
rmore, it is shown that this implementation remains effective in the p
resence of noise and when the spectral characteristics of the input si
gnal deviate somewhat from the theoretical requirements of whiteness.
The computational requirements and the overall performance of this tec
hnique compare favorably to existing methods, especially in cases wher
e the system kernels can be represented with a relatively small number
of Laguerre basis functions.