In this study, we develop and compare satellite rainfall retrievals based on generalized linear models and artificial neural networks. Both approaches are used in classification mode in a first step to identify the precipitating areas (precipitation detection) and in regression mode in a second step to estimate the rainfall intensity at the ground (rain rate). The input predictors are geostationary satellite infrared (IR) brightness temperatures and Satellite Application Facility (SAF) nowcasting products which consist of cloud properties, such as cloud top height and cloud type. Additionally, a set of auxiliary location-describing input variables is employed. The output predictand is the ground-based instantaneous rain rate provided by the...
Data from geosynchronous Earth-orbiting (GEO) satellites equipped with visible (VIS) and infrared (I...
Satellite precipitation estimation at high spatial and temporal resolutions is beneficial for resear...
Accurate and timely precipitation estimates are critical for monitoring and forecasting natural disa...
In this study, we develop and compare satellite rainfall retrievals based on generalized linear mode...
A new data fusion technique based on Artificial Neural Networks (ANN) for the design of a rainfall r...
Precipitation estimation from satellite information (VISIBLE , IR, or microwave) is becoming increas...
Neural networks (NNs) have been successfully used in the environmental sciences over the last two de...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
The consequences of global warming include changes in rainfall patterns and increase in flood risks ...
Infrared (IR) imagery collected by geostationary satellites provides useful information about the di...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Precipitation with high spatial and temporal resolution can improve the defense capability of meteor...
114-127 An algorithm for the retrieval of rainfall has been developed from the radiometric measureme...
Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial for ...
The term nowcast in hydrometeorology reflects the need for timely and accurate predictions of risky...
Data from geosynchronous Earth-orbiting (GEO) satellites equipped with visible (VIS) and infrared (I...
Satellite precipitation estimation at high spatial and temporal resolutions is beneficial for resear...
Accurate and timely precipitation estimates are critical for monitoring and forecasting natural disa...
In this study, we develop and compare satellite rainfall retrievals based on generalized linear mode...
A new data fusion technique based on Artificial Neural Networks (ANN) for the design of a rainfall r...
Precipitation estimation from satellite information (VISIBLE , IR, or microwave) is becoming increas...
Neural networks (NNs) have been successfully used in the environmental sciences over the last two de...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
The consequences of global warming include changes in rainfall patterns and increase in flood risks ...
Infrared (IR) imagery collected by geostationary satellites provides useful information about the di...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Precipitation with high spatial and temporal resolution can improve the defense capability of meteor...
114-127 An algorithm for the retrieval of rainfall has been developed from the radiometric measureme...
Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial for ...
The term nowcast in hydrometeorology reflects the need for timely and accurate predictions of risky...
Data from geosynchronous Earth-orbiting (GEO) satellites equipped with visible (VIS) and infrared (I...
Satellite precipitation estimation at high spatial and temporal resolutions is beneficial for resear...
Accurate and timely precipitation estimates are critical for monitoring and forecasting natural disa...