Don’t bleach chaotic data
- 1 October 1993
- journal article
- Published by AIP Publishing in Chaos: An Interdisciplinary Journal of Nonlinear Science
- Vol. 3 (4) , 771-782
- https://doi.org/10.1063/1.165936
Abstract
A common first step in time series signal analysis involves digitally filtering the data to remove linear correlations. The residual data is spectrally white (it is "bleached"), but in principle retains the nonlinear structure of the original time series. It is well known that simple linear autocorrelation can give rise to spurious results in algorithms for estimating nonlinear invariants, such as fractal dimension and Lyapunov exponents. In theory, bleached data avoids these pitfalls. But in practice, bleaching obscures the underlying deterministic structure of a low-dimensional chaotic process. This appears to be a property of the chaos itself, since nonchaotic data are not similarly affected. The adverse effects of bleaching are demonstrated in a series of numerical experiments on known chaotic data. Some theoretical aspects are also discussed.Keywords
All Related Versions
This publication has 38 references indexed in Scilit:
- Lyapunov Spectrum of the Maps Generating Identical AttractorsEurophysics Letters, 1993
- Chaos and Nonlinear Dynamics: Application to Financial MarketsThe Journal of Finance, 1991
- EmbedologyJournal of Statistical Physics, 1991
- Studies in astronomical time series analysis. IV - Modeling chaotic and random processes with linear filtersThe Astrophysical Journal, 1990
- Acausal filters for chaotic signalsPhysical Review A, 1990
- An introduction to chaotic and random time series analysisInternational Journal of Imaging Systems and Technology, 1989
- Measuring filtered chaotic signalsPhysical Review A, 1988
- Spurious dimension from correlation algorithms applied to limited time-series dataPhysical Review A, 1986
- A Tukey nonadditivity-type test for time series nonlinearityBiometrika, 1985
- DIAGNOSTIC CHECKING ARMA TIME SERIES MODELS USING SQUARED‐RESIDUAL AUTOCORRELATIONSJournal of Time Series Analysis, 1983