We present a new data set of attributes for 671 catchments in the contiguous United States (CONUS) minimally impacted by human activities. This complements the daily time series of meteorological forcing and streamflow provided by Newman et al. (2015b). To produce this extension, we synthesized diverse and complementary data sets to describe six main classes of attributes at the catchment scale: topography, climate, streamflow, land cover, soil, and geology. The spatial variations among basins over the CONUS are discussed and compared using a series of maps. The large number of catchments, combined with the diversity of the attributes we extracted, makes this new data set well suited for large-sample studies and comparative hydrol...
A key step in data-driven environmental modelling, including for hydrological purposes, is input var...
We introduce the first catchment dataset for large sample studies in Chile. This dataset includes 5...
Catchments are hydrological units that exhibit unique but distinct features that greatly contribute ...
We present a new data set of attributes for 671 catchments in the contiguous United States (CONUS) m...
We introduce the first large-scale catchment attributes and meteorological time series dataset of co...
This paper presents the Australian edition of the Catchment Attributes and Meteorology for Large-sam...
This is the Australian edition of the Catchment Attributes and Meteorology for Large-sample Studies ...
International audienceTo facilitate reproducible hydrological research and support model testing and...
We present the first large-sample catchment hydrology dataset for Great Britain, CAMELS-GB (Catchmen...
This is a preview of the CAMELS-BR dataset (Catchment Attributes and MEteorology for Large-sample St...
We introduce a new catchment dataset for large-sample hydrological studies in Brazil. This dataset e...
This is a pre-release, while the dataset and corresponding publication is under revision. CAMELS-CH...
Data underpins our knowledge and understanding of the hydrological system; they are used to drive, t...
We introduce the first catchment dataset for large sample studies in Chile. This dataset includes 51...
We introduce the first large-scale catchment attributes and meteorological time series dataset of co...
A key step in data-driven environmental modelling, including for hydrological purposes, is input var...
We introduce the first catchment dataset for large sample studies in Chile. This dataset includes 5...
Catchments are hydrological units that exhibit unique but distinct features that greatly contribute ...
We present a new data set of attributes for 671 catchments in the contiguous United States (CONUS) m...
We introduce the first large-scale catchment attributes and meteorological time series dataset of co...
This paper presents the Australian edition of the Catchment Attributes and Meteorology for Large-sam...
This is the Australian edition of the Catchment Attributes and Meteorology for Large-sample Studies ...
International audienceTo facilitate reproducible hydrological research and support model testing and...
We present the first large-sample catchment hydrology dataset for Great Britain, CAMELS-GB (Catchmen...
This is a preview of the CAMELS-BR dataset (Catchment Attributes and MEteorology for Large-sample St...
We introduce a new catchment dataset for large-sample hydrological studies in Brazil. This dataset e...
This is a pre-release, while the dataset and corresponding publication is under revision. CAMELS-CH...
Data underpins our knowledge and understanding of the hydrological system; they are used to drive, t...
We introduce the first catchment dataset for large sample studies in Chile. This dataset includes 51...
We introduce the first large-scale catchment attributes and meteorological time series dataset of co...
A key step in data-driven environmental modelling, including for hydrological purposes, is input var...
We introduce the first catchment dataset for large sample studies in Chile. This dataset includes 5...
Catchments are hydrological units that exhibit unique but distinct features that greatly contribute ...