Rainfall is a key parameter for understanding the water cycle. An accurate rainfall measurement is vital in the development of hydrological models. By means of indirect measurement, satellites can nowadays estimate the rainfall around the world. However, these measurements are not always accurate. As a first approach to generate a bias-corrected rainfall estimate using satellite data, the performance of Gaussian process and Bayesian regression is studied. The results show Gaussian process as the better option for this dataset but leave place to improvements on both modelling strategies
Results of numerous evaluation studies indicated that satellite-rainfall products are contaminated w...
Accurate estimation of precipitation patterns is essential for the modeling of hydrological systems ...
The overarching goal of the research described in this study is to improve uses of satellite rainfal...
Advances in remote sensing have led to the use of satellite-derived rainfall products to complement ...
The provision of high resolution near real-time rainfall data has made satellite rainfall products v...
Estimating precipitation over large spatial areas remains a challenging problem for hydrologists. Sp...
With the advances in remote sensing technology, satellite-based rainfall estimates are gaining attra...
Precipitation is a crucial input variable for hydrological and climate studies. Rain gauges can prov...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
International audienceSatellite rainfall estimates (SRE) with high spatial and temporal resolution a...
International audienceWe propose a method for estimating the parameters in a latent Gaussian field u...
Rainfall-runoff modelling is a useful tool for water resources management. This study presents a sim...
A revised Bayesian algorithm for estimating surface rain rate, convective rain proportion, and laten...
The potential for satellite rainfall estimates to drive hydrological models has been long understood...
Results of numerous evaluation studies indicated that satellite-rainfall products are contaminated w...
Accurate estimation of precipitation patterns is essential for the modeling of hydrological systems ...
The overarching goal of the research described in this study is to improve uses of satellite rainfal...
Advances in remote sensing have led to the use of satellite-derived rainfall products to complement ...
The provision of high resolution near real-time rainfall data has made satellite rainfall products v...
Estimating precipitation over large spatial areas remains a challenging problem for hydrologists. Sp...
With the advances in remote sensing technology, satellite-based rainfall estimates are gaining attra...
Precipitation is a crucial input variable for hydrological and climate studies. Rain gauges can prov...
Parameter estimation in rainfall-runoff models is affected by uncertainties in the measured input/ou...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
International audienceSatellite rainfall estimates (SRE) with high spatial and temporal resolution a...
International audienceWe propose a method for estimating the parameters in a latent Gaussian field u...
Rainfall-runoff modelling is a useful tool for water resources management. This study presents a sim...
A revised Bayesian algorithm for estimating surface rain rate, convective rain proportion, and laten...
The potential for satellite rainfall estimates to drive hydrological models has been long understood...
Results of numerous evaluation studies indicated that satellite-rainfall products are contaminated w...
Accurate estimation of precipitation patterns is essential for the modeling of hydrological systems ...
The overarching goal of the research described in this study is to improve uses of satellite rainfal...