It is widely acknowledged that radar-based estimates of rainfall are affected by uncertainties (e.g., mis-calibration, beam blockage, anomalous propagation, and ground clutter) which are both systematic and random in nature. Improving the characterization of these errors would yield better understanding and interpretations of results from studies in which these estimates are used as inputs (e.g., hydrologic modeling) or initial conditions (e.g., rainfall forecasting). Building on earlier efforts, the authors apply a data-driven multiplicative model in which the relationship between true rainfall and radar rainfall can be described in terms of the product of a systematic and random component. The systematic component accounts for conditional...
International audienceRadar rainfall data are affected by several types of error. Beside the error i...
Accurate spatial and temporal distribution of rainfall is important for hydrological applications. R...
This dissertation includes two parts. Part 1 develops a geostatistical method to calibrate Texas Nex...
It is widely acknowledged that radar-based estimates of rainfall are affected by uncertainties (e.g....
Key Points A significant potential source of error exists in mosaicked radar-rainfall maps. Differen...
Weather radars have significantly improved our ability to measure and understand rainfall processes,...
International audienceBecause rainfall constitutes the main source of water for the terrestrial hydr...
The application of radar quantitative precipitation estimation (QPE) to hydrology and water quality ...
Radar rainfall nowcasts are subject to many sources of uncertainty and these uncertainties change wi...
This study explores the scale effects of radar rainfall accumulation fields generated using the new ...
Recent years have witnessed significant advances in development of operational radar-rainfall produc...
The performance of distributed hydrological models depends on the resolution, both spatial and tempo...
The accuracy of spatial precipitation estimates with relatively high spatiotemporal resolution is of...
The prediction uncertainty of a hydrologic model is closely related to model formulation and the unc...
International audienceAs rainfall constitutes the main source of water for the terrestrial hydrologi...
International audienceRadar rainfall data are affected by several types of error. Beside the error i...
Accurate spatial and temporal distribution of rainfall is important for hydrological applications. R...
This dissertation includes two parts. Part 1 develops a geostatistical method to calibrate Texas Nex...
It is widely acknowledged that radar-based estimates of rainfall are affected by uncertainties (e.g....
Key Points A significant potential source of error exists in mosaicked radar-rainfall maps. Differen...
Weather radars have significantly improved our ability to measure and understand rainfall processes,...
International audienceBecause rainfall constitutes the main source of water for the terrestrial hydr...
The application of radar quantitative precipitation estimation (QPE) to hydrology and water quality ...
Radar rainfall nowcasts are subject to many sources of uncertainty and these uncertainties change wi...
This study explores the scale effects of radar rainfall accumulation fields generated using the new ...
Recent years have witnessed significant advances in development of operational radar-rainfall produc...
The performance of distributed hydrological models depends on the resolution, both spatial and tempo...
The accuracy of spatial precipitation estimates with relatively high spatiotemporal resolution is of...
The prediction uncertainty of a hydrologic model is closely related to model formulation and the unc...
International audienceAs rainfall constitutes the main source of water for the terrestrial hydrologi...
International audienceRadar rainfall data are affected by several types of error. Beside the error i...
Accurate spatial and temporal distribution of rainfall is important for hydrological applications. R...
This dissertation includes two parts. Part 1 develops a geostatistical method to calibrate Texas Nex...