Publication | Closed Access
Nonlinear modeling of chaotic time series: Theory and applications
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1990
Year
Unknown Venue
Forecasting MethodologyNonlinear ModelsEngineeringData ScienceChaos TheoryPredictive AnalyticsNonlinear ModelingHigh-dimensional ChaosNonlinear DynamicsNonlinear ProcessForecastingStatisticsNonlinear Time Series
We review recent developments in the modeling and prediction of nonlinear time series. In some cases apparent randomness in time series may be due to chaotic behavior of a nonlinear but deterministic system. In such cases it is possible to exploit the determinism to make short term forecasts that are much more accurate than one could make from a linear stochastic model. This is done by first reconstructing a state space, and then using nonlinear function approximation methods to create a dynamical model. Nonlinear models are valuable not only as short term forecasters, but also as diagnostic tools for identifying and quantifying low-dimensional chaotic behavior. During the past few years methods for nonlinear modeling have developed rapidly, and have already led to several applications where nonlinear models motivated by chaotic dynamics provide superior predictions to linear models. These applications include prediction of fluid flows, sunspots, mechanical vibrations, ice ages, measles epidemics and human speech. 162 refs., 13 figs.