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Detection and predictive modeling of chaos in finite hydrological time series
2005
Nonlinear Processes in Geophysics
The ability to detect the chaotic signal from a finite time series observation of hydrologic systems is addressed in this paper. The presence of random and seasonal components in hydrological time series, like rainfall or runoff, makes the detection process challenging. Tests with simulated data demonstrate the presence of thresholds, in terms of noise to chaotic-signal and seasonality to chaoticsignal ratios, beyond which the set of currently available tools is not able to detect the chaotic
doi:10.5194/npg-12-41-2005
fatcat:qcqaut726nhcvgwett7dpjew7a