Publication | Closed Access
CHAOS AND WEATHER FORECASTING: THE ROLE OF THE UNSTABLE SUBSPACE IN PREDICTABILITY AND STATE ESTIMATION PROBLEMS
43
Citations
96
References
2011
Year
Forecasting MethodologyEngineeringWeather ForecastingHigh-dimensional ChaosData AssimilationNumerical Weather PredictionUncertainty QuantificationAtmospheric ScienceSystems EngineeringNonlinear Time SeriesMeteorologyChaos TheoryGeographyForecastingPredictabilityClimatologyData Assimilation AlgorithmsChaotic SystemsAtmospheric Predictability
In the first part of this paper, we review some important results on atmospheric predictability, from the pioneering work of Lorenz to recent results with operational forecasting models. Particular relevance is given to the connection between atmospheric predictability and the theory of Lyapunov exponents and vectors. In the second part, we briefly review the foundations of data assimilation methods and then we discuss recent results regarding the application of the tools typical of chaotic systems theory described in the first part to well established data assimilation algorithms, the Extended Kalman Filter (EKF) and Four Dimensional Variational Assimilation (4DVar). In particular, the Assimilation in the Unstable Space (AUS), specifically developed for application to chaotic systems, is described in detail.
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