Detailed hydrometeorological data from the mountain rain-to-snow transition zone are present for water years 2004 through 2014. The Johnston Draw watershed (1.8 km2), ranging from 1497 – 1869 m in elevation, is a sub-watershed of the Reynolds Creek Experimental Watershed (RCEW) in southwestern Idaho. The dataset includes continuous hourly hydrometeorological variables across a 372 m elevation gradient, on north- and south-facing slopes, including air temperature, relative humidity and snow depth from 11 sites in the watershed. Hourly measurements of solar radiation, precipitation, wind speed and direction, and soil moisture and temperature are available at selected stations. The dataset includes hourly stream discharge measured at the watershed outlet. These data provide the scientific community with a unique dataset useful for forcing and validating models in interdisciplinary studies and will allow for better representation and understanding of the complex processes that occur in the rain-to-snow transition zone.
This version of the data set fixes errors in all data files and supersedes the earlier datasets https://doi.org/10.15482/USDA.ADC/1258769 and https://doi.org/10.15482/USDA.ADC/1245163.
climate, hydrology, ecology, transition zone, Reynolds Creek, Idaho, CZO, agroecosystems & environment, water, weather, soil
XML is in ISO-19115 geographic metadata format, compatible with ESRI Geoportal Server.
Citation for This Dataset
S. E. Godsey, D. Marks, P. Kormos, M. Seyfried, Enslin, C., J. McNamara and T. Link, 2017, Eleven years of mountain weather, snow, soil moisture and stream flow data from the rain-snow transition zone - the Johnston Draw catchment, Reynolds Creek Experimental Watershed and Critical Zone Observatory, USA, Ag Data Commons, USDA Agricultural Library, http://dx.doi.org/10.15482/USDA.ADC/1402076.
Citation for This Webpage
Godsey, Sarah E.; Marks, Danny G.; Kormos, Patrick R.; Seyfried, Mark S.; Enslin, Clarissa L.; McNamara, James P.; Link, Timothy E. (2014). "CZO Dataset: Johnston Draw - Climate, Meteorology, Hydropedologic Properties (2003-2014)." Retrieved 24 Feb 2020, from http://criticalzone.org/reynolds/data/dataset/5203/
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