Title :
Diffusional approach in time series analysis
Author :
Giona, M. ; Morgavi, G. ; Ridella, S.
Author_Institution :
Dept. of Chem. Eng., Rome Univ., Italy
Abstract :
The identification and prediction of complex series, arising from random or chaotic evolution is one of the main problem in signal processing. The classical way of distinguishing periodic vs. chaotic and chaotic (deterministic) vs. random time series is strongly related to the definition of dynamical invariants such a Ljapunov exponents and metric entropy (a instability parameters) or generalised fractal dimensions (as a measure of the metric complexity). The evaluation of these parameters, using Takens´ reconstruction approach implies a long and memory expensive time series processing. This work analyses diffusional identification models, and shows that the diffusional approach in time series processing can lead to practical and meaningful results which improve the analysis of complex and chaotic signals. The principle of the diffusional analysis is related to the temporal behaviour of the correlation function associated to the fluctuation induced by the time series to the motions of a probe particle
Keywords :
chaos; filtering and prediction theory; identification; series (mathematics); signal processing; Ljapunov exponents; Takens´ reconstruction approach; chaotic evolution; complex series; correlation function; diffusional analysis; diffusional identification; generalised fractal dimensions; identification; metric entropy; prediction; signal processing; temporal behaviour; time series analysis; Chaos; Entropy; Fluctuations; Fractals; Motion analysis; Probes; Signal analysis; Signal processing; Time measurement; Time series analysis;
Conference_Titel :
Circuits and Systems, 1991. Conference Proceedings, China., 1991 International Conference on
Conference_Location :
Shenzhen
DOI :
10.1109/CICCAS.1991.184287