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Article Dans Une Revue Advances in Geosciences Année : 2006

Artificial neural-network technique for precipitation nowcasting from satellite imagery

Résumé

The term nowcasting reflects the need of timely and accurate predictions of risky situations related to the development of severe meteorological events. In this work the objective is the very short term prediction of the rainfall field from geostationary satellite imagery entirely based on neural network approach. The very short-time prediction (or nowcasting) process consists of two steps: first, the infrared radiance field measured from geostationary satellite (Meteosat 7) is projected ahead in time (30 min or 1 h); secondly, the projected radiances are used to estimate the rainfall field by means of a calibrated microwave-based combined algorithm. The methodology is discussed and its accuracy is quantified by means of error indicators. An application to a satellite observation of a rainfall event over Central Italy is finally shown and evaluated.
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Dates et versions

hal-00296833 , version 1 (18-06-2008)

Identifiants

  • HAL Id : hal-00296833 , version 1

Citer

G. Rivolta, F. S. Marzano, E. Coppola, M. Verdecchia. Artificial neural-network technique for precipitation nowcasting from satellite imagery. Advances in Geosciences, 2006, 7, pp.97-103. ⟨hal-00296833⟩

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