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A0453
Title: Generative machine learning methods for multivariate ensemble postprocessing Authors:  Sebastian Lerch - Karlsruhe Institute of Technology (Germany) [presenting]
Abstract: Ensemble weather forecasts based on multiple runs of numerical weather prediction models show systematic errors and require postprocessing. Accurately modeling multivariate dependencies is crucial in many practical applications, and various approaches to multivariate postprocessing have been proposed where ensemble predictions are first postprocessed separately in each margin, and multivariate dependencies are then restored via copulas. These two-step methods share common key limitations, particularly the difficulty of including additional predictors in modelling the dependencies. The novel multivariate postprocessing method is based on generative machine learning to address these challenges. In this new class of nonparametric data-driven distributional regression models, samples from the multivariate forecast distribution are directly obtained as a generative neural network output. The generative model is trained by optimizing a proper scoring rule, which measures the discrepancy between the generated and observed data, conditional on exogenous input variables. The method does not require parametric assumptions on univariate distributions or multivariate dependencies and allows for incorporating arbitrary predictors. In two case studies on multivariate temperature and wind speed forecasting at weather stations over Germany, our generative model shows significant improvements over state-of-the-art methods and particularly improves the representation of spatial dependencies.