Publication | Open Access
Nonparametric forecasting of low-dimensional dynamical systems
107
Citations
12
References
2015
Year
Forecasting MethodologyDiscrete Shift MapsProbabilistic ForecastingEngineeringNonparametric Modeling ApproachData ScienceChaos TheoryPredictive AnalyticsStochastic Dynamical SystemHigh-dimensional ChaosGalerkin ProjectionForecastingNonparametric ForecastingStochastic Differential EquationNonlinear Time Series
This paper presents a nonparametric modeling approach for forecasting stochastic dynamical systems on low-dimensional manifolds. The key idea is to represent the discrete shift maps on a smooth basis which can be obtained by the diffusion maps algorithm. In the limit of large data, this approach converges to a Galerkin projection of the semigroup solution to the underlying dynamics on a basis adapted to the invariant measure. This approach allows one to quantify uncertainties (in fact, evolve the probability distribution) for nontrivial dynamical systems with equation-free modeling. We verify our approach on various examples, ranging from an inhomogeneous anisotropic stochastic differential equation on a torus, the chaotic Lorenz three-dimensional model, and the Niño-3.4 data set which is used as a proxy of the El Niño Southern Oscillation.
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