Surrogate Models for Rainfall Nowcasting
Naty Citlali Cabrera-Guti\'errez, Hadrien God\'e, Jean-Christophe, Jouhaud, Mohamed Chafik Bakkay, Valentin Kivachuk Burd\'a, Florian Dupuy,, Maud-Alix Mader, Olivier Mestre, Guillaume Oller, Mathieu Serrurier,, Micha\"el Zamo

TL;DR
This paper develops surrogate models for rainfall nowcasting that replicate complex physical models with higher temporal resolution and reduced computation time, using POD combined with Kriging or Random Forest.
Contribution
It introduces two novel surrogate modeling approaches for rainfall forecasting that improve resolution and efficiency over existing physical models.
Findings
Surrogate models closely match Arome-NWC forecasts.
Models achieve 1-minute resolution, surpassing 15-minute intervals.
Calculation times are significantly reduced.
Abstract
Nowcasting (or short-term weather forecasting) is particularly important in the case of extreme events as it helps prevent human losses. Many of our activities, however, also depend on the weather. Therefore, nowcasting has shown to be useful in many different domains. Currently, immediate rainfall forecasts in France are calculated using the Arome-NWC model developed by M\'et\'eo-France, which is a complex physical model. Arome-NWC forecasts are stored with a 15 minute time interval. A higher time resolution is, however, desirable for other meteorological applications. Complex model calculations, such as Arome-NWC, can be very expensive and time consuming. A surrogate model aims at producing results which are very close to the ones obtained using a complex model, but with largely reduced calculation times. Building a surrogate model requires only a few calculations with the real model.…
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Taxonomy
TopicsHydrology and Watershed Management Studies · Hydrological Forecasting Using AI · Meteorological Phenomena and Simulations
