Rainfall fields estimation over a catchment area is an important stage in many hydrological applications. In this context, weather radars have several advantages because a single-site can scan a vast area with very high temporal and spatial resolution. The construction of weather radar systems with dual polarization capability allowed progress on radar rainfall estimation and its hydro-meteorological applications. For these applications of radar data it is necessary to remove the ground clutter contamination with an algorithm based on the backscattering signal variance of the differential reflectivity. The calibration of the GDSTM model (Gaussian Displacements Spatial-Temporal Model), a cluster stochastic generation model in continuous space and time, is herewith presented. In this model, storms arrive in a Poisson process in time with cells occurring in each storm that cluster in space and time. The model is calibrated, using data collected by the weather radar Polar 55C located in Rome, inside a square area of 132 × 132 km2, with the radar at the centre. The GDSTM is fitted to sequences of radar images with a time interval between the PPIs scans of 5 min. A generalized method of moment procedure is used for parameter estimation. For the validation of the ability of the model to reproduce internal structure of rain event, a geo-morphological rainfall-runoff model, based on width function (WFIUH), was calibrated using simulated and observed data. Several rainfall fields are generated with the stochastic model and later they are used as input of the WFIUH model so that the forecast discharges can be compared to the observed ones.

Rainfall stochastic modeling for runoff forecasting / Russo, Fabio; Lombardo, Federico; Napolitano, Francesco; E., Gorgucci. - In: PHYSICS AND CHEMISTRY OF THE EARTH. - ISSN 1474-7065. - ELETTRONICO. - 31(18):(2006), pp. 1252-1261. [10.1016/j.pce.2006.06.002]

Rainfall stochastic modeling for runoff forecasting

RUSSO, FABIO
;
LOMBARDO, FEDERICO;NAPOLITANO, Francesco;
2006

Abstract

Rainfall fields estimation over a catchment area is an important stage in many hydrological applications. In this context, weather radars have several advantages because a single-site can scan a vast area with very high temporal and spatial resolution. The construction of weather radar systems with dual polarization capability allowed progress on radar rainfall estimation and its hydro-meteorological applications. For these applications of radar data it is necessary to remove the ground clutter contamination with an algorithm based on the backscattering signal variance of the differential reflectivity. The calibration of the GDSTM model (Gaussian Displacements Spatial-Temporal Model), a cluster stochastic generation model in continuous space and time, is herewith presented. In this model, storms arrive in a Poisson process in time with cells occurring in each storm that cluster in space and time. The model is calibrated, using data collected by the weather radar Polar 55C located in Rome, inside a square area of 132 × 132 km2, with the radar at the centre. The GDSTM is fitted to sequences of radar images with a time interval between the PPIs scans of 5 min. A generalized method of moment procedure is used for parameter estimation. For the validation of the ability of the model to reproduce internal structure of rain event, a geo-morphological rainfall-runoff model, based on width function (WFIUH), was calibrated using simulated and observed data. Several rainfall fields are generated with the stochastic model and later they are used as input of the WFIUH model so that the forecast discharges can be compared to the observed ones.
2006
rainfall fields; weather radar; flood forecasting
01 Pubblicazione su rivista::01a Articolo in rivista
Rainfall stochastic modeling for runoff forecasting / Russo, Fabio; Lombardo, Federico; Napolitano, Francesco; E., Gorgucci. - In: PHYSICS AND CHEMISTRY OF THE EARTH. - ISSN 1474-7065. - ELETTRONICO. - 31(18):(2006), pp. 1252-1261. [10.1016/j.pce.2006.06.002]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/360599
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