Gridded satellite precipitation datasets are useful in hydrological applications as they cover large regions with high density. However, they are not accurate in the sense that they do not agree with ground-based measurements. An established means for improving their accuracy is to correct them by adopting machine learning algorithms. This correction takes the form of a regression problem, in which the ground-based measurements have the role of the dependent variable and the satellite data are the predictor variables, together with topography factors (e.g., elevation). Most studies of this kind involve a limited number of machine learning algorithms and are conducted for a small region and for a limited time period. Thus, the results obtain...
It is evident that reliable hydrologic prediction and water resource management are still a challeng...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...
Gridded satellite precipitation datasets are useful in hydrological applications as they cover large...
Merging satellite products and ground-based measurements is often required for obtaining precipitati...
Merging satellite products and ground-based measurements is often required for obtaining precipitati...
Reliable precipitation measurement is a crucial component in hydrologic studies. Although satellite-...
Despite satellite-based precipitation products (SPPs) providing a worldwide span with a high spatial...
Knowing the actual precipitation in space and time is critical in hydrological modelling application...
Summarization: Precipitation plays a significant role to energy exchange and material circulation in...
This paper examines the spatial error structures of eight precipitation estimates derived from four ...
This paper examines the spatial error structures of eight precipitation estimates derived from four ...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Gridded precipitation data with a high spatiotemporal resolution are of great importance for studies...
It is evident that reliable hydrologic prediction and water resource management are still a challeng...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...
Gridded satellite precipitation datasets are useful in hydrological applications as they cover large...
Merging satellite products and ground-based measurements is often required for obtaining precipitati...
Merging satellite products and ground-based measurements is often required for obtaining precipitati...
Reliable precipitation measurement is a crucial component in hydrologic studies. Although satellite-...
Despite satellite-based precipitation products (SPPs) providing a worldwide span with a high spatial...
Knowing the actual precipitation in space and time is critical in hydrological modelling application...
Summarization: Precipitation plays a significant role to energy exchange and material circulation in...
This paper examines the spatial error structures of eight precipitation estimates derived from four ...
This paper examines the spatial error structures of eight precipitation estimates derived from four ...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Precipitation as an essential component of the hydrologic cycle has a great importance to be measure...
Gridded precipitation data with a high spatiotemporal resolution are of great importance for studies...
It is evident that reliable hydrologic prediction and water resource management are still a challeng...
To estimate rainfall from remote sensing data, three machine learning-based regression models, K-Nea...
Partitioning precipitation into rain and snow is of pivotal importance in hydrological models. Error...