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Epidemiological Forecasting with Model Reduction of Compartmental Models. Application to the COVID-19 pandemic

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 نشر من قبل Olga Mula
 تاريخ النشر 2020
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We propose a forecasting method for predicting epidemiological health series on a two-week horizon at the regional and interregional resolution. The approach is based on model order reduction of parametric compartmental models, and is designed to accommodate small amount of sanitary data. The efficiency of the method is shown in the case of the prediction of the number of infected and removed people during the two pandemic waves of COVID-19 in France, which have taken place approximately between February and November 2020. Numerical results illustrate the promising potential of the approach.



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