Title :
Obtaining order in a world of chaos [signal processing]
Author :
Abarbanel, Henry D I ; Frison, Ted W. ; Tsimring, Lev Sh
fDate :
5/1/1998 12:00:00 AM
Abstract :
Measurements of a physical or biological system result in a time series, s(t)=s(t0+nτs)=s(n) sampled at intervals of τs and initiated at t0. When a signal can be represented as a superposition of sine waves with different amplitudes, its characteristics can be adequately described by Fourier coefficients of amplitude and phase. In these circumstances, linear and Fourier based methods for extracting information from the signal are appropriate and powerful. However, the signal may be generated by a nonlinear system. The waveform can be irregular and continuous and broadband in the frequency domain. The signal is noise-like, but is deterministic and may be chaotic. More information than the Fourier coefficients is required to describe the signal. This article describes methods for distinguishing chaotic signals from noise, and how to utilize the properties of a chaotic signal for classification, prediction, and control
Keywords :
chaos; control theory; medical signal processing; noise; nonlinear control systems; pattern classification; prediction theory; signal representation; signal sampling; time series; time-domain analysis; waveform analysis; biological system; broadband waveform; chaos; chaotic signals; classification; continuous waveform; deterministic signal; frequency domain; irregular waveform; noise-like signal; nonlinear control; nonlinear system; physical system; prediction; sampling; signal processing; time domain analysis; time series; Capacitors; Chaos; Extraterrestrial measurements; Feedback circuits; Feedback loop; Nonlinear equations; Orbits; Predictive models; State-space methods; Voltage;
Journal_Title :
Signal Processing Magazine, IEEE