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Simulation of extreme heat waves with empirical importance sampling

Pascal Yiou, Aglaé Jézéquel

2020Geoscientific model development44 citationsDOIOpen Access PDF

Abstract

Abstract. Simulating ensembles of extreme events is a necessary task to evaluate their probability distribution and analyze their meteorological properties. Algorithms of importance sampling have provided a way to simulate trajectories of dynamical systems (like climate models) that yield extreme behavior, like heat waves. Such algorithms also give access to the return periods of such events. We present an adaptation based on circulation analogues of importance sampling to provide a data-based algorithm that simulates extreme events like heat waves in a realistic way. This algorithm is a modification of a stochastic weather generator, which gives more weight to trajectories with higher temperatures. This presentation outlines the methodology using European heat waves and illustrates the spatial and temporal properties of simulations.

Topics & Concepts

Sampling (signal processing)Heat waveComputer scienceGenerator (circuit theory)Extreme value theoryMeteorologyClimate changeGeologyMathematicsStatisticsGeographyPhysicsPower (physics)Computer visionQuantum mechanicsFilter (signal processing)OceanographyClimate variability and modelsHydrology and Drought AnalysisMeteorological Phenomena and Simulations
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