P. Laguna et al., THE ADAPTIVE LINEAR COMBINER WITH A PERIODIC-IMPULSE REFERENCE INPUT AS A LINEAR COMB FILTER, Signal processing, 48(3), 1996, pp. 193-203
In this paper we present a particularization of the adaptive linear co
mbiner (ALC) filter structure, that results in a linear time-invariant
comb filter suitable for the estimation of periodic signals and repet
itive time-locked signals. The ALC is used in its transversal form, an
d the reference input is a periodic unitary-impulse train signal. When
the LMS algorithm is used we show that the structure results in a sim
ple and efficient linear time-invariant comb filter, taking as output
the output of the ALC. This comb filter has lobe widths proportional t
o the mu gain parameter of the LMS algorithm, and the separation betwe
en lobes is controlled by the period L of the periodic impulse train.
We have also analyzed this filter when applied to estimate repetitive
signals time-locked to a stimulus, and we show that the effect of a te
mporal misalignment in the determination of the stimulus results in a
low-pass filtering effect, with cut-off frequency inversely proportion
al to the dispersion of the impulse estimation. This effect is special
ly important when the time occurrence of the stimulus is not directly
accessible and needs to be estimated from some 'noise affected' proced
ures, as in Electrocardiographic signals. The filter is also shown to
be equivalent to a time-sequenced adaptive filter with one weight. Fin
ally, an application to somatosensory evoked potentials estimation is
presented.