The purpose of this paper is to evaluate a new operational procedure to produce half-hourly rainfall estimates at 0.18 spatial resolution. Rainfall is estimated using a neural networks (NN)–based approach utilizing passive microwave (PMW) and infrared satellite measurements. Several neural networks are tested, from multilayer perceptron to adaptative resonance theory architectures. The NN analytical selection process is explained. Halfhourly rain gauge data over Andalusia, Spain, are used for validation purposes. Several interpolation procedures are tested to transform point to areal measurements, including the maximum entropy estimation method. Rainfall estimations are also compared with Geostationary Operational Environmental Satellite pr...
Rainfall estimation from satellite infrared imagery using artificial neural network
A procedure for the estimation of rainfall rate, capitalizing on a radar-based raindrop size distrib...
This work presents a methodology for the short-term forecast of intense rainfall based on a neural n...
Abstract: Real-time rainfall monitoring is of great practical importance over the highly populated I...
This study explores using Passive Microwave (PMW) rainfall estimation for spatial and temporal adjus...
A new data fusion technique based on Artificial Neural Networks (ANN) for the design of a rainfall r...
This paper describes the development of a satellite precipitation algorithm designed to generate rai...
The term nowcast in hydrometeorology reflects the need for timely and accurate predictions of risky...
International audienceThe detection of rainfall remains a challenge for the monitoring of precipitat...
Satellite-based remotely sensed data have the potential to provide hydrologically relevant informati...
Infrared (IR) imagery collected by geostationary satellites provides useful information about the di...
Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial for ...
In this study, we develop and compare satellite rainfall retrievals based on generalized linear mode...
Abstract—Rainfall estimation based on radar measurements has been an important topic in radar meteor...
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Netwo...
Rainfall estimation from satellite infrared imagery using artificial neural network
A procedure for the estimation of rainfall rate, capitalizing on a radar-based raindrop size distrib...
This work presents a methodology for the short-term forecast of intense rainfall based on a neural n...
Abstract: Real-time rainfall monitoring is of great practical importance over the highly populated I...
This study explores using Passive Microwave (PMW) rainfall estimation for spatial and temporal adjus...
A new data fusion technique based on Artificial Neural Networks (ANN) for the design of a rainfall r...
This paper describes the development of a satellite precipitation algorithm designed to generate rai...
The term nowcast in hydrometeorology reflects the need for timely and accurate predictions of risky...
International audienceThe detection of rainfall remains a challenge for the monitoring of precipitat...
Satellite-based remotely sensed data have the potential to provide hydrologically relevant informati...
Infrared (IR) imagery collected by geostationary satellites provides useful information about the di...
Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial for ...
In this study, we develop and compare satellite rainfall retrievals based on generalized linear mode...
Abstract—Rainfall estimation based on radar measurements has been an important topic in radar meteor...
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Netwo...
Rainfall estimation from satellite infrared imagery using artificial neural network
A procedure for the estimation of rainfall rate, capitalizing on a radar-based raindrop size distrib...
This work presents a methodology for the short-term forecast of intense rainfall based on a neural n...