Satellite-based remotely sensed data have the potential to provide hydrologically relevant information about spatially and temporally varying physical variables. A methodology for estimating such variables from multichannel remotely sensed data is presented; the approach is based on a modified counterpropagation neural network (MCPN) and is both effective and efficient at building complex nonlinear input-output function mappings from large amounts of data. An application to high-resolution estimation of the spatial and temporal variation of surface rainfall using geostationary satellite infrared and visible imagery is presented. Test results also indicate that spatially and temporally sparse ground-based observations can be assimilated via ...
Motivated by a real world problem, this study develops a neural network approach to identify and eva...
Abstract—Rainfall estimation based on radar measurements has been an important topic in radar meteor...
Artificial neural networks are used to identify the relationship between weather radar observations ...
Infrared (IR) imagery collected by geostationary satellites provides useful information about the di...
Neural networks (NNs) have been successfully used in the environmental sciences over the last two de...
This paper describes the development of a satellite precipitation algorithm designed to generate rai...
Remotely sensed data from satellites has the potential to provide spatially and temporally relevant ...
The purpose of this paper is to evaluate a new operational procedure to produce half-hourly rainfall...
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Netwo...
The term nowcast in hydrometeorology reflects the need for timely and accurate predictions of risky...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
Rainfall estimation from satellite infrared imagery using artificial neural network
Recent research has shown that neural network techniques can be used successfully for ground rainfal...
This study explores using Passive Microwave (PMW) rainfall estimation for spatial and temporal adjus...
Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial for ...
Motivated by a real world problem, this study develops a neural network approach to identify and eva...
Abstract—Rainfall estimation based on radar measurements has been an important topic in radar meteor...
Artificial neural networks are used to identify the relationship between weather radar observations ...
Infrared (IR) imagery collected by geostationary satellites provides useful information about the di...
Neural networks (NNs) have been successfully used in the environmental sciences over the last two de...
This paper describes the development of a satellite precipitation algorithm designed to generate rai...
Remotely sensed data from satellites has the potential to provide spatially and temporally relevant ...
The purpose of this paper is to evaluate a new operational procedure to produce half-hourly rainfall...
A system for Precipitation Estimation from Remotely Sensed Information using Artificial Neural Netwo...
The term nowcast in hydrometeorology reflects the need for timely and accurate predictions of risky...
A satellite-based rainfall estimation algorithm, Precipitation Estimation from Remotely Sensed Infor...
Rainfall estimation from satellite infrared imagery using artificial neural network
Recent research has shown that neural network techniques can be used successfully for ground rainfal...
This study explores using Passive Microwave (PMW) rainfall estimation for spatial and temporal adjus...
Accurate measurement of rainfall distribution at various spatial and temporal scales is crucial for ...
Motivated by a real world problem, this study develops a neural network approach to identify and eva...
Abstract—Rainfall estimation based on radar measurements has been an important topic in radar meteor...
Artificial neural networks are used to identify the relationship between weather radar observations ...