100+ datasets found
  1. d

    CIMIS Weather Station Data

    • catalog.data.gov
    • data.cnra.ca.gov
    • +1more
    Updated Nov 27, 2024
    + more versions
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    California Department of Water Resources (2024). CIMIS Weather Station Data [Dataset]. https://catalog.data.gov/dataset/cimis-weather-station-data-e3fb1
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    Dataset updated
    Nov 27, 2024
    Dataset provided by
    California Department of Water Resources
    Description

    Weather Data collected by CIMIS automatic weather stations. The data is available in CSV format. Station data include measured parameters such as solar radiation, air temperature, soil temperature, relative humidity, precipitation, wind speed and wind direction as well as derived parameters such as vapor pressure, dew point temperature, and grass reference evapotranspiration (ETo).

  2. b

    Weather Station Data for 2023

    • data.biosaline.org
    Updated Oct 4, 2023
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    (2023). Weather Station Data for 2023 [Dataset]. https://data.biosaline.org/dataset/weather-station-data-2023
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    Dataset updated
    Oct 4, 2023
    License

    Open Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
    License information was derived automatically

    Description

    Daily air temperature data collected at ICBA Weather Station in 2023.

  3. d

    Dickerson Weather Station Data

    • catalog.data.gov
    • data.montgomerycountymd.gov
    • +1more
    Updated Jul 12, 2025
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    data.montgomerycountymd.gov (2025). Dickerson Weather Station Data [Dataset]. https://catalog.data.gov/dataset/dickerson-weather-station-data
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    Dataset updated
    Jul 12, 2025
    Dataset provided by
    data.montgomerycountymd.gov
    Description

    This dataset include the Dickerson Weather Station Data. The hourly wind and temperature data are periodically used for Air Quality Dispersion Modeling work for the Resource Recovery Facility, as well as ambient monitoring and health risk studies associated with this facility. The air quality modeling results identify the locations of maximum impacts from Resource Recovery Facility stack emissions. The wind data help us investigate residents' reports of odors possibly coming from the Composting or Resource Recovery Facilities. Update Frequency : Daily

  4. SEAN weather station data download - 2021 (WC_F)

    • catalog.data.gov
    Updated May 2, 2025
    + more versions
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    National Park Service (2025). SEAN weather station data download - 2021 (WC_F) [Dataset]. https://catalog.data.gov/dataset/sean-weather-station-data-download-2021-wc-f
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    Dataset updated
    May 2, 2025
    Dataset provided by
    National Park Servicehttp://www.nps.gov/
    Description

    The cumulative collection of RAWS station observations in Campbell Scientific .DAT format. It is extracted from the station datalogger during each visit to each site. Multiple years are stored in a ring buffer in the station and the entire buffer is captured on each visit. No data corrections are directly applied to this Processing Level 0 product.

  5. World Weather Records

    • ncei.noaa.gov
    • data.cnra.ca.gov
    • +2more
    Updated May 31, 2017
    + more versions
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    NOAA National Centers for Environmental Information (NCEI) (2017). World Weather Records [Dataset]. http://doi.org/10.7289/v5222rt1
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    Dataset updated
    May 31, 2017
    Dataset provided by
    National Centers for Environmental Informationhttps://www.ncei.noaa.gov/
    National Oceanic and Atmospheric Administrationhttp://www.noaa.gov/
    Time period covered
    Jan 1, 1755 - Present
    Area covered
    Continent > South America, Geographic Region > Oceania, Continent > Antarctica, geographic bounding box, Continent > North America, Continent > Asia, Continent > North America > Central America, Continent > Africa, Continent > Europe, Continent > Australia/New Zealand
    Description

    World Weather Records (WWR) is an archived publication and digital data set. WWR is meteorological data from locations around the world. Through most of its history, WWR has been a publication, first published in 1927. Data includes monthly mean values of pressure, temperature, precipitation, and where available, station metadata notes documenting observation practices and station configurations. In recent years, data were supplied by National Meteorological Services of various countries, many of which became members of the World Meteorological Organization (WMO). The First Issue included data from earliest records available at that time up to 1920. Data have been collected for periods 1921-30 (2nd Series), 1931-40 (3rd Series), 1941-50 (4th Series), 1951-60 (5th Series), 1961-70 (6th Series), 1971-80 (7th Series), 1981-90 (8th Series), 1991-2000 (9th Series), and 2001-2011 (10th Series). The most recent Series 11 continues, insofar as possible, the record of monthly mean values of station pressure, sea-level pressure, temperature, and monthly total precipitation for stations listed in previous volumes. In addition to these parameters, mean monthly maximum and minimum temperatures have been collected for many stations and are archived in digital files by NCEI. New stations have also been included. In contrast to previous series, the 11th Series is available for the partial decade, so as to limit waiting period for new records. It begins in 2010 and is updated yearly, extending into the entire decade.

  6. G

    Weather Station Data

    • dataverse.orc.gmu.edu
    tsv
    Updated Apr 10, 2025
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    David Kepplinger; Daniel Hanley; Jonathan Auerbach; Jamie Roth; David Kepplinger; Daniel Hanley; Jonathan Auerbach; Jamie Roth (2025). Weather Station Data [Dataset]. http://doi.org/10.13021/ORC2020/PH5YXL
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    tsv(19484880), tsv(13695443)Available download formats
    Dataset updated
    Apr 10, 2025
    Dataset provided by
    George Mason University Dataverse
    Authors
    David Kepplinger; Daniel Hanley; Jonathan Auerbach; Jamie Roth; David Kepplinger; Daniel Hanley; Jonathan Auerbach; Jamie Roth
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    Outdoor Temperature(°C) Outdoor Humidity(%) Dew Point(°C) Feels Like (°C) Wind(km/h) Gust(km/h) Wind Direction(°) ABS Pressure(hPa) REL Pressure(hPa) Solar Rad.(w/m2) UVI Hourly Rain(mm) Event Rain(mm) Daily Rain(mm) Weekly Rain(mm) Monthly Rain(mm) Yearly Rain(mm)

  7. b

    Weather Station Data for 2024

    • data.biosaline.org
    Updated Apr 24, 2024
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    (2024). Weather Station Data for 2024 [Dataset]. https://data.biosaline.org/dataset/weather-station-data-for-2024
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    Dataset updated
    Apr 24, 2024
    License

    Open Data Commons Attribution License (ODC-By) v1.0https://www.opendatacommons.org/licenses/by/1.0/
    License information was derived automatically

    Description

    Daily air temperature data collected at ICBA Weather Station in 2024.

  8. d

    Weather station data, St. Louis, Missouri

    • catalog.data.gov
    • data.usgs.gov
    Updated Jul 6, 2024
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    U.S. Geological Survey (2024). Weather station data, St. Louis, Missouri [Dataset]. https://catalog.data.gov/dataset/weather-station-data-st-louis-missouri
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    Dataset updated
    Jul 6, 2024
    Dataset provided by
    U.S. Geological Survey
    Area covered
    Missouri, St. Louis
    Description

    The text file "Weather Station Data, St. Louis, Missouri.txt" contains hourly data collected by a Campbell Scientific ET107 weather station located in St. Louis, Missouri. Data were collected from November 29, 2019 through September 17, 2020. Weather station data sets include wind speed, in meters per second; wind direction, in degrees; rainfall, in inches; average air temperature, in degrees Celsius; maximum air temperature, in degrees Celsius; minimum air temperature, in degrees Celsius; average relative humidity, in percent; average solar radiation, in Watts per square meter; and computed potential evapotranspiration, in mm.

  9. PestCast Weather Station Data

    • data.ucar.edu
    ascii
    Updated Dec 26, 2024
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    Agriculture and Natural Resources (ANR), University of California (2024). PestCast Weather Station Data [Dataset]. http://doi.org/10.26023/1WT3-N8E9-EY0E
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    asciiAvailable download formats
    Dataset updated
    Dec 26, 2024
    Dataset provided by
    University Corporation for Atmospheric Research
    Authors
    Agriculture and Natural Resources (ANR), University of California
    Time period covered
    Mar 1, 2006 - Apr 30, 2006
    Area covered
    Description

    This data set contains 15-min, hourly and daily resolution surface meteorological data from a number of stations in the California PestCast weather station network. PestCast is a project of the University of California Statewide IPM Program and the California Environmental Protection Agency Department of Pesticide Regulation. This data set includes all stations in the T-REX region that measured 15-min or hourly meteorological parameters. The daily stations in Inyo County are also included. The data are in comma-delimite ASCII.

  10. K

    World Weather Stations

    • koordinates.com
    csv, dwg, geodatabase +6
    Updated Aug 26, 2016
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    US Department of the Interior (DOI) (2016). World Weather Stations [Dataset]. https://koordinates.com/layer/13361-world-weather-stations/
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    mapinfo mif, kml, geodatabase, mapinfo tab, dwg, pdf, csv, geopackage / sqlite, shapefileAvailable download formats
    Dataset updated
    Aug 26, 2016
    Dataset authored and provided by
    US Department of the Interior (DOI)
    Area covered
    World,
    Description

    Current METAR weather stations and associated weather conditions based on Meteorological Terminal Aviation Routine Weather Report (METAR) data collected globally from either airports or permanent weather observation stations by NOAA’s NWS Aviation Weather Center (http://www.aviationweather.gov/metar). IGEMS reads this source data and updates the layer every 10 minutes.

    This layer is a component of Interior Geospatial Emergency Management System (IGEMS) General Data.

    This map presents the geospatial locations and additional information for global tide monitoring stations, and U.S. stream gages, weather stations and DOI managed lands. This map is part of the Interior Geospatial Emergency Management System (IGEMS) and is supported by the DOI Office of Emergency Management. This map contains data from a variety of public data sources, including non-DOI data, and information about each of these data providers, including specific data source and update frequency is available at: http://igems.doi.gov.

    © DOI Office of Emergency Management

  11. Z

    ClimateForecasts: Globally Observed Environmental Data for 15,504 Weather...

    • data.niaid.nih.gov
    • zenodo.org
    Updated Mar 26, 2025
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    Kindt, Roeland (2025). ClimateForecasts: Globally Observed Environmental Data for 15,504 Weather Station Locations [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_10726088
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    Dataset updated
    Mar 26, 2025
    Dataset authored and provided by
    Kindt, Roeland
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    ClimateForecasts is a database that provides environmental data for 15,504 weather station locations and 49 environmental variables, including 38 bioclimatic variables, 8 soil variables and 3 topographic variables. Data were extracted from the same 30 arc-seconds global grid layers that were prepared when making the TreeGOER (Tree Globally Observed Environmental Ranges) database that is available from https://doi.org/10.5281/zenodo.7922927. Details on the preparations of these layers are provided by Kindt, R. (2023). TreeGOER: A database with globally observed environmental ranges for 48,129 tree species. Global Change Biology 29: 6303–6318. https://onlinelibrary.wiley.com/doi/10.1111/gcb.16914. A similar extraction process was used for the CitiesGOER database that is also available from Zenodo via https://zenodo.org/doi/10.5281/zenodo.8175429.

    ClimateForecasts (as the CitiesGOER) was designed to be used together with TreeGOER and possibly also with the GlobalUsefulNativeTrees database (Kindt et al. 2023) to allow users to filter suitable tree species based on environmental conditions of the planting site. One example of combining data from these different sets in the R statistical environment is available from this Rpub: https://rpubs.com/Roeland-KINDT/1114902.

    The identities including the geographical coordinates of weather stations were sourced from Meteostat, specifically by downloading (17-FEB-2024) the ‘lite dump’ data set with information for active weather stations only. Two weather stations where the country could not be determined from the ISO 3166-1 code of ‘XA’ were removed. If weather stations had the same name, but occurred in different ISO 3166-2 regions, this region code was added to the name of the weather station between square brackets. Afterwards duplicates (weather stations of the same name and region) were manually removed.

    Bioclimatic variables for future climates correspond to the median values from 24 Global Climate Models (GCMs) for Shared Socio-Economic Pathway (SSP) 1-2.6 for the 2050s (2041-2060), from 21 GCMs for SSP 3-7.0 for the 2050s and from 13 GCMs for SSP 5-8.5 for the 2090s. Similar methods were used to calculate these median values as in the case studies for the TreeGOER manuscript (calculations were partially done via the BiodiversityR::ensemble.envirem.run function and with downscaled bioclimatic and monthly climate 2.5 arc-minutes future grid layers available from WorldClim 2.1).

    Maps were added in version 2024.03 where locations of weather stations were shown on a map of the Climatic Moisture Index (CMI). These maps were created by a similar process as in the TreeGOER Global Zones Atlas from the environmental raster layers used to create the TreeGOER via the terra package (Hijmans et al. 2022, version 1.7-46) in the R 4.2.1 environment. Added country boundaries were obtained from Natural Earth as Admin 0 – countries vector layers (version 5.1.1). Also added after obtaining them from Natural Earth were Admin 0 – Breakaway, Disputed areas (version 5.1.0, coloured yellow in the atlas) and Roads (version 5.0.0, coloured red in the atlas). For countries where the GlobalUsefulNativeTrees database included subnational levels, boundaries were added and depicted as dot-dash lines. These subnational levels correspond to level 3 boundaries in the World Geographical Scheme for Recording Plant Distributions. These were obtained from https://github.com/tdwg/wgsrpd. Check Brummit 2001 for details such as the maps shown at the end of this document.

    Maps for version 2024.07 modified the dimensions of the sheets to those used in version 2024.06 of the TreeGOER Global Zones Atlas. Another modification was the inclusion of Natural Earth boundaries for Lakes (version 5.0.0, coloured darkblue in the atlas).

    Version 2024.10 includes a new data set that documents the location of the city locations in Holdridge Life Zones. Information is given for historical (1901-1920), contemporary (1979-2013) and future (2061-2080; separately for RCP 4.5 and RCP 8.5) that are available for download from DRYAD and were created for the following article: Elsen et al. 2022. Accelerated shifts in terrestrial life zones under rapid climate change. Global Change Biology, 28, 918–935. https://doi.org/10.1111/gcb.15962. Version 2024.10 further includes Holdridge Life Zones for the climates available from the previously included climates, calculating biotemperatures and life zones with similar methods as used by Holdridge (1947; 1967) and Elsen et al. (2022) (for future climates, median values were determined first for monthly maximum and minimum temperatures across GCMs ). The distributions of the 48,129 species documented in TreeGOER across the Holdridge Life Zones are given in this Zenodo archive: https://zenodo.org/records/14020914.

    Version 2024.11 includes a new data set that documents the location of the weather stations in Köppen-Geiger climate zones. Information is given for historical (1901-1930, 1931-1960, 1961-1990) and future (2041-2070 and 2071-2099) climates, with for the future climates seven scenarios each (SSP 1-1.9, SSP 1-2.6, SSP 2-4.5, SSP 3-7.0, SSP 4-3.4, SSP 4-6.0 and SSP 5-8.5). This data set was created from raster layers available via: Beck, H.E., McVicar, T.R., Vergopolan, N. et al. High-resolution (1 km) Köppen-Geiger maps for 1901–2099 based on constrained CMIP6 projections. Sci Data 10, 724 (2023). https://doi.org/10.1038/s41597-023-02549-6.

    Version 2025.03 includes extra columns for the baseline, 2050s and 2090s datasets that partially correspond to climate zones used in the GlobalUsefulNativeTrees database. One of these zones are the Whittaker biome types, available as a polygon from the plotbiomes package (see also here). Whittaker biome types were extracted with similar R scripts as described by Kindt 2025 (these were also used to calculate environmental ranges of TreeGOER species, as archived here).

    Version 2025.03 further includes information for the baseline climate on the steady state water table depth, obtained from a 30 arc-seconds raster layer calculated by the GLOBGM v1.0 model (Verkaik et al. 2024).

    When using ClimateForecasts in your work, cite this depository and the following:

    Fick, S. E., & Hijmans, R. J. (2017). WorldClim 2: New 1‐km spatial resolution climate surfaces for global land areas. International Journal of Climatology, 37(12), 4302–4315. https://doi.org/10.1002/joc.5086

    Title, P. O., & Bemmels, J. B. (2018). ENVIREM: An expanded set of bioclimatic and topographic variables increases flexibility and improves performance of ecological niche modeling. Ecography, 41(2), 291–307. https://doi.org/10.1111/ecog.02880

    Poggio, L., de Sousa, L. M., Batjes, N. H., Heuvelink, G. B. M., Kempen, B., Ribeiro, E., & Rossiter, D. (2021). SoilGrids 2.0: Producing soil information for the globe with quantified spatial uncertainty. SOIL, 7(1), 217–240. https://doi.org/10.5194/soil-7-217-2021

    Kindt, R. (2023). TreeGOER: A database with globally observed environmental ranges for 48,129 tree species. Global Change Biology, 00, 1–16. https://onlinelibrary.wiley.com/doi/10.1111/gcb.16914.

    Meteostat (2024) Weather stations: Lite dump with active weather stations. https://github.com/meteostat/weather-stations (accessed 17-FEB-2024)

    When using information from the Holdridge Life Zones, also cite:

    Elsen, P. R., Saxon, E. C., Simmons, B. A., Ward, M., Williams, B. A., Grantham, H. S., Kark, S., Levin, N., Perez-Hammerle, K.-V., Reside, A. E., & Watson, J. E. M. (2022). Accelerated shifts in terrestrial life zones under rapid climate change. Global Change Biology, 28, 918–935. https://doi.org/10.1111/gcb.15962

    When using information from Köppen-Geiger climate zones, also cite:

    Beck, H.E., McVicar, T.R., Vergopolan, N., Berg, A., Lutsko, N.J., Dufour, A., Zeng, Z., Jiang, X., van Dijk, A.I. and Miralles, D.G. 2023. High-resolution (1 km) Köppen-Geiger maps for 1901–2099 based on constrained CMIP6 projections. Sci Data 10, 724. https://doi.org/10.1038/s41597-023-02549-6

    When using information on the Whittaker biome types, also cite:

    Ricklefs, R. E., Relyea, R. (2018). Ecology: The Economy of Nature. United States: W.H. Freeman.

    Whittaker, R. H. (1970). Communities and ecosystems.

    Valentin Ștefan, & Sam Levin. (2018). plotbiomes: R package for plotting Whittaker biomes with ggplot2 (v1.0.0). Zenodo. https://doi.org/10.5281/zenodo.7145245

    When using information on the steady state water table depth, also cite:

    Verkaik, J., Sutanudjaja, E. H., Oude Essink, G. H., Lin, H. X., & Bierkens, M. F. (2024). GLOBGM v1. 0: a parallel implementation of a 30 arcsec PCR-GLOBWB-MODFLOW global-scale groundwater model. Geoscientific Model Development, 17(1), 275-300. https://gmd.copernicus.org/articles/17/275/2024/

    The development of ClimateForecasts and its partial integration in version 2024.03 of the GlobalUsefulNativeTrees database was supported by the Darwin Initiative to project DAREX001 of Developing a Global Biodiversity Standard certification for tree-planting and restoration, by Norway’s International Climate and Forest Initiative through the Royal Norwegian Embassy in Ethiopia to the Provision of Adequate Tree Seed Portfolio project in Ethiopia, by the Green Climate Fund through the IUCN-led Transforming the Eastern Province of Rwanda through Adaptation project and through the Readiness proposal on Climate Appropriate Portfolios of Tree Diversity for Burkina Faso, by the Bezos Earth Fund to the Quality Tree Seed for Africa in Kenya and Rwanda project and by the German International Climate Initiative (IKI) to the regional tree seed programme on The Right Tree for the Right Place for the Right Purpose in Africa.

  12. d

    Data from: High Altitude Weather Station Data at USGS Benchmark Glaciers

    • catalog.data.gov
    • s.cnmilf.com
    Updated Jul 6, 2024
    + more versions
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    U.S. Geological Survey (2024). High Altitude Weather Station Data at USGS Benchmark Glaciers [Dataset]. https://catalog.data.gov/dataset/high-altitude-weather-station-data-at-usgs-benchmark-glaciers
    Explore at:
    Dataset updated
    Jul 6, 2024
    Dataset provided by
    United States Geological Surveyhttp://www.usgs.gov/
    Description

    Since the late 1950s, the USGS has maintained a long-term glacier mass-balance program at three North American glaciers. Measurements began on South Cascade Glacier, WA in 1958, expanding to Gulkana and Wolverine glaciers, AK in 1966, and later Sperry Glacier, MT in 2005. Additional measurements have been made on Lemon Creek Glacier, AK to compliment data collected by the Juneau Icefield Research Program (JIRP; Pelto and others, 2013). Direct field measurements are combined with weather data and imagery analyses to estimate the seasonal and annual mass balance at each glacier in both a conventional and reference surface format (Cogley and others, 2011). High-altitude measurements of meteorological data have been collected since the beginning of the USGS Benchmark Glacier Program adjacent to glaciers in order to support related science. This portion of the data release includes select weather data that has received basic quality control and assurance. Data is released at three different levels of processing, level 0, 1 and 2. Level 0 data contains compiled raw data, before QC procedures are applied, at the original timestep recorded by the instrument. Level 1 data has received a plausible value check, and minimal manual error identification (e.g. errors noted on field visits). Level 2 data has been through more extensive quality control procedures and is provided at both the original instrument timestep as well as aggregated hourly and daily values. However, beyond the procedures detailed in this document, no additional steps have been taken to manually assure quality of the data. Data outside the main record of temperature and precipitation at each site should be considered preliminary, and be utilized with increased scrutiny.

  13. i04 CIMIS Weather Stations

    • data.ca.gov
    Updated May 29, 2025
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    California Department of Water Resources (2025). i04 CIMIS Weather Stations [Dataset]. https://data.ca.gov/dataset/i04-cimis-weather-stations
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    geojson, kml, csv, zip, arcgis geoservices rest api, htmlAvailable download formats
    Dataset updated
    May 29, 2025
    Dataset authored and provided by
    California Department of Water Resourceshttp://www.water.ca.gov/
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description
    The California Irrigation Management Information System (CIMIS) currently manages over 145 active weather stations throughout the state. Archived data is also available for 85 additional stations that have been disconnected from the network for various reasons. CIMIS stations provide hourly records of solar radiation, precipitation, air temperature, air humidity, and wind speed. Most of the CIMIS stations produce estimates of reference evapotranspiration (ETo) for the station location and their immediate surroundings, often in agricultural areas. The Department of Water Resources operates CIMIS as a free resource to help California to manage water resources more efficiently. CIMIS weather stations collect weather data on a minute-by-minute basis. Hourly data reflects the previous hour's 60 minutes of readings. Hourly and daily values are calculated and stored in the dataloggers. A computer at the DWR headquarters in Sacramento calls every station starting at midnight Pacific Standard Time (PST) and retrieves data at predetermined time intervals. At the time of this writing, CIMIS data is retrieved from the stations every hour. When there is a communication problem between the polling server and any given station, the server skips that station and calls the next station in the list. After all other stations have reported, the polling server again polls the station with the communication problem. The interrogation continues into the next day until all of the station data have been transmitted. CIMIS data processing involves checking the accuracy of the measured weather data for quality, calculating reference evapotranspiration (ETo/ETr) and other intermediate parameters, flagging measured and calculated parameters, and storing the data in the CIMIS database. Evapotranspiration (ET) is a loss of water to the atmosphere by the combined processes of evaporation from soil and plant surfaces and transpiration from plants. Reference evapotranspiration is ET from standardized grass or alfalfa surfaces over which the weather stations are sitting. The standardization of grass or alfalfa surfaces for a weather station is required because ET varies depending on plant (type, density, height) and soil factors and it is difficult, if not impossible, to measure weather parameters under all sets of conditions. Irrigators have to use crop factors, known as crop coefficients (Kc), to convert ET from the standardized reference surfaces into an actual evapotranspiration (ETc) by a specific crop. For more information go to https://cimis.water.ca.gov/.

    The associated data are considered DWR enterprise GIS data, which meet all appropriate requirements of the DWR Spatial Data Standards, specifically the DWR Spatial Data Standard version 3.3, dated April 13, 2022. DWR makes no warranties or guarantees —either expressed or implied — as to the completeness, accuracy, or correctness of the data. DWR neither accepts nor assumes liability arising from or for any incorrect, incomplete, or misleading subject data. Comments, problems, improvements, updates, or suggestions should be forwarded to GIS@water.ca.gov.
  14. G

    GC-Net Level 1 historical automated weather station data

    • dataverse.geus.dk
    • search.dataone.org
    csv, txt
    Updated Mar 25, 2025
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    Steffen, K.; Vandecrux, B.; Houtz, D.; Abdalati, W.; Bayou, N.; Box, J.E.; Colgan, W.T.; Espona Pernas, L.; Griessinger, N.; Haas-Artho, D.; Heilig, A.; Hubert, A.; Iosifescu Enescu, I.; Johnson-Amin, N.; Karlsson, N.B.; Kurup Buchholz, R.; McGrath, D.; Cullen, N.J.; Naderpour, R.; Molotch, N.P.; Pedersen, A.Ø.; Perren, B.; Philipps, T.; Plattner, G.-K.; Proksch, M.; Revheim, M.K.; Særrelse, M.; Schneebli, M.; Sampson, K.; Starkweather, S.; Steffen, S.; Stroeve, J.; Watler, B.; Winton, Ø.A.; Zwally, J.; Ahlstrøm, A.; Steffen, K.; Vandecrux, B.; Houtz, D.; Abdalati, W.; Bayou, N.; Box, J.E.; Colgan, W.T.; Espona Pernas, L.; Griessinger, N.; Haas-Artho, D.; Heilig, A.; Hubert, A.; Iosifescu Enescu, I.; Johnson-Amin, N.; Karlsson, N.B.; Kurup Buchholz, R.; McGrath, D.; Cullen, N.J.; Naderpour, R.; Molotch, N.P.; Pedersen, A.Ø.; Perren, B.; Philipps, T.; Plattner, G.-K.; Proksch, M.; Revheim, M.K.; Særrelse, M.; Schneebli, M.; Sampson, K.; Starkweather, S.; Steffen, S.; Stroeve, J.; Watler, B.; Winton, Ø.A.; Zwally, J.; Ahlstrøm, A. (2025). GC-Net Level 1 historical automated weather station data [Dataset]. http://doi.org/10.22008/FK2/VVXGUT
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    csv(44273878), csv(63179753), csv(883920), csv(2363115), csv(2669761), csv(1194583), csv(71442400), csv(28666187), csv(73228016), csv(3042130), txt(8192), csv(21071204), csv(73189214), csv(3024142), csv(2040989), csv(15816020), csv(607384), csv(539855), csv(27752), csv(326975), csv(1376324), csv(1604049), csv(70919), csv(2632516), csv(72063508), csv(67865271), csv(3395879), csv(3108), csv(65914436), csv(2307729), csv(72638211), csv(32978041), csv(63722510), csv(52353631), csv(89152), csv(3045919), csv(5136044), csv(1959655), csv(84097), csv(2179815), csv(1492941), csv(7670225), csv(6668139), csv(102693), csv(2748462), csv(259733), csv(2572973), csv(3002398), csv(6080273), csv(5077850), csv(3155963), csv(56831395), csv(141605), csv(3850499), csv(162941), csv(212933), csv(55435063), csv(2826422), csv(36065384), csv(658844), csv(10510304), csv(216470), csv(443353), csv(2974022), csv(61600490), csv(3668), csv(1853776), csv(133928), csv(278272), csv(12799193), csv(2390182)Available download formats
    Dataset updated
    Mar 25, 2025
    Dataset provided by
    GEUS Dataverse
    Authors
    Steffen, K.; Vandecrux, B.; Houtz, D.; Abdalati, W.; Bayou, N.; Box, J.E.; Colgan, W.T.; Espona Pernas, L.; Griessinger, N.; Haas-Artho, D.; Heilig, A.; Hubert, A.; Iosifescu Enescu, I.; Johnson-Amin, N.; Karlsson, N.B.; Kurup Buchholz, R.; McGrath, D.; Cullen, N.J.; Naderpour, R.; Molotch, N.P.; Pedersen, A.Ø.; Perren, B.; Philipps, T.; Plattner, G.-K.; Proksch, M.; Revheim, M.K.; Særrelse, M.; Schneebli, M.; Sampson, K.; Starkweather, S.; Steffen, S.; Stroeve, J.; Watler, B.; Winton, Ø.A.; Zwally, J.; Ahlstrøm, A.; Steffen, K.; Vandecrux, B.; Houtz, D.; Abdalati, W.; Bayou, N.; Box, J.E.; Colgan, W.T.; Espona Pernas, L.; Griessinger, N.; Haas-Artho, D.; Heilig, A.; Hubert, A.; Iosifescu Enescu, I.; Johnson-Amin, N.; Karlsson, N.B.; Kurup Buchholz, R.; McGrath, D.; Cullen, N.J.; Naderpour, R.; Molotch, N.P.; Pedersen, A.Ø.; Perren, B.; Philipps, T.; Plattner, G.-K.; Proksch, M.; Revheim, M.K.; Særrelse, M.; Schneebli, M.; Sampson, K.; Starkweather, S.; Steffen, S.; Stroeve, J.; Watler, B.; Winton, Ø.A.; Zwally, J.; Ahlstrøm, A.
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    GC-Net Level 1 automated weather station data In Memory of Dr. Konrad (Koni) Steffen Author: B. Vandecrux Contact: bav@geus.dk Last update: 2023-09-01 Citation Steffen, K.; Vandecrux, B.; Houtz, D.; Abdalati, W.; Bayou, N.; Box, J.; Colgan, L.; Espona Pernas, L.; Griessinger, N.; Haas-Artho, D.; Heilig, A.; Hubert, A.; Iosifescu Enescu, I.; Johnson-Amin, N.; Karlsson, N. B.; Kurup Buchholz, R.; McGrath, D.; Cullen, N.J.; Naderpour, R.; Molotch, N.P.; Pederson, A. Ø.; Perren, B.; Philipps, T.; Plattner, G.K.; Proksch, M.; Revheim, M. K.; Særrelse, M.; Schneebli, M.; Sampson, K.; Starkweather, S.; Steffen, S.; Stroeve, J.; Watler, B.; Winton, Ø. A.; Zwally, J.; Ahlstrøm, A., 2023, "GC-Net Level 1 automated weather station data", https://doi.org/10.22008/FK2/VVXGUT, GEUS Dataverse, V3 as described and processed by: Vandecrux, B., Box, J. E., Ahlstrøm, A. P., Andersen, S. B., Bayou, N., Colgan, W. T., Cullen, N. J., Fausto, R. S., Haas-Artho, D., Heilig, A., Houtz, D. A., How, P., Iosifescu Enescu, I., Karlsson, N. B., Kurup Buchholz, R., Mankoff, K. D., McGrath, D., Molotch, N. P., Perren, B., Revheim, M. K., Rutishauser, A., Sampson, K., Schneebeli, M., Starkweather, S., Steffen, S., Weber, J., Wright, P. J., Zwally, H. J., and Steffen, K.: The historical Greenland Climate Network (GC-Net) curated and augmented Level 1 dataset, Earth Syst. Sci. Data, 15, 5467–5489, https://doi.org/10.5194/essd-15-5467-2023, 2023. Description The Greenland Climate Network (GC-Net) is a set of Automatic Weather Stations (AWS) set up and managed by the late Prof. Dr. Konrad (Koni) Steffen on the Greenland Ice Sheet (GrIS). This first station, "Swiss Camp" or the "ETH-CU" camp, was initiated in 1990 by A. Ohmura et al. (1991, 1992) with K. Steffen taking over the site from 1995 and expending the network from that year to 31 stations at 30 sites in Greenland (Steffen et al., 1996, 2001). The GC-Net was supported by multiple NASA, NOAA, and NSF grants throughout the years, and then supported by WSL in the later years. These data were previously hosted by the Cooperative Institute for Research in Environmental Sciences (CIRES) in Boulder, Colorado. Provided in this dataset are the 25 two-level stations from 24 sites on the Greenland ice sheet and 3 experimental stations in Antarctica. The remaining 6 Greenland stations have a different design and will be added once quality checked. Although the GC-Net AWS transmitted their data near-real time through satellite communication, the present dataset was made from uncorrupted datalogger files, retrieved every 1-2 years during maintenance. Full dataset description publication will be forthcoming. The Geological Survey of Denmark and Greenland (GEUS) has undertaken the continuation of multiple GC-Net sites through the Programme for Monitoring of the Greenland Ice Sheet (PROMICE.dk). The level 1 data is provided in the newly described csv-compatible NEAD format, which is a csv file with added metadata header. The format is documented at https://doi.org/10.16904/envidat.187 and a python package is available to read and write NEAD files: https://github.com/GEUS-Glaciology-and-Climate/pyNEAD . The GC-Net stations measure: - Air temperature from four sensors at two heights above the surface - Relative humidity at two heights above the surface - Wind speed and direction at two heights above the surface - Air pressure - Surface height from two sonic sounders - Incoming and outgoing shortwave radiation - Net radiation (long- and short-wave)* - Firn or ice temperatures at 10 levels below the surface In the L1 dataset, these measurements are cleaned from sensor, station or logger malfunctions, adjusted and/or filtered when and where possible. Additionally, the L1 dataset contains the following derived variables: - Surface height (corrected from the shifts in sonic sounder height) - Instrument heights (derived from sonic sounder height and station geometry) - Inter- or extrapolated temperature, relative humidity and wind speed at respectively 2, 2, and 10 m above the surface - Estimated depth of the subsurface temperature measurements (adjusted for snow accumulation, ice ablation and instrument replacement) - Interpolated firn or ice temperature at 10 m below the surface - Calculated solar an azimuth angles - Sensible and latent heat fluxes calculated after Steffen and Demaria (1996) Important links: - The level 1 processing scripts and discussion page for Q&A and issue reporting (under "issues" tab) is available at: https://github.com/GEUS-Glaciology-and-Climate/GC-Net-level-1-data-processing - The level 0 data (from which the L1 data was built from) is available at: https://www.doi.org/10.16904/envidat.1. - The compilation of handheld GPS coordinates for each site and for multiple years is available here: Vandecrux, B. and Box, J.E.: GC-Net AWS observed and estimated positions (Version v1) [Data set]. Zenodo....

  15. d

    Surface Meteorological Station - PNNL Short Tower, Rufus - Raw Data

    • catalog.data.gov
    • data.openei.org
    Updated Apr 26, 2022
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    Wind Energy Technologies Office (WETO) (2022). Surface Meteorological Station - PNNL Short Tower, Rufus - Raw Data [Dataset]. https://catalog.data.gov/dataset/surface-meteorological-station-pnnl-10m-sonic-physics-site-10-reviewed-data
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    Dataset updated
    Apr 26, 2022
    Dataset provided by
    Wind Energy Technologies Office (WETO)
    Description

    Overview In support of the Wind Forecasting Improvement Project, Pacific Northwest National Laboratory (PNNL) deployed surface meteorological stations in Oregon. Data Details A PNNL computer is used as the base station to download the meteorological data acquired by the data logger at each site via a cellular modem. The data collected will be made available to the National Oceanic and Atmospheric Administration each hour and used to support the short-term forecasting project by providing an independent evaluation of the added value of new data to meteorological forecasts. Each meteorological station consists of a solar-powered data acquisition system and wind speed, wind direction, temperature, humidity, barometric pressure, and solar radiation sensors on a 3-m tower. Specifically, the stations are comprised of the following instruments and equipment: Campbell Scientific CM6 Tripod Campbell Scientific CR10X Measurement and Control System R.M. Young 05106 Wind Monitor Vaisala HMP45C Temperature and Humidity Probe Vaisala PTB101B Barometric Pressure Sensor Li-Cor LI200X Pyranometer RavenXT Cellular Modem The data logger is used to sample, at 1-second intervals, the horizontal wind speed and direction at 3 meters above ground level (AGL); the air temperature, relative humidity, barometric pressure, and solar radiation at 2 meters AGL; and the logger temperature and power supply. The logger outputs the 1-minute averages of these measurements to final storage and power on the cellular modem, so the data can be retrieved and downloaded to a base station computer. The data are archived as 1-hour comma-delimited ASCII files (see "Table 2. Format of the WFIP2 Comma-delimited ASCII Data Files" in wfip2-met-data.pdf). All dates and times in the file names and data records are in UTC and denote the end of the 1-minute average. Data Quality Data for each primary measurement at every site are automatically plotted daily and reviewed about every three days. Instrument outages or events are reported with the Instrument and Model Data Problem Log at: .

  16. Stuttgart local weather data archive

    • catalog.data.gov
    • agdatacommons.nal.usda.gov
    • +3more
    Updated Apr 21, 2025
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    Agricultural Research Service (2025). Stuttgart local weather data archive [Dataset]. https://catalog.data.gov/dataset/stuttgart-local-weather-data-archive-b86fa
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    Dataset updated
    Apr 21, 2025
    Dataset provided by
    Agricultural Research Servicehttps://www.ars.usda.gov/
    Area covered
    Stuttgart
    Description

    Weather data from two weather stations at Stuttgart Rice Research and Extension center are archived. Current air temperature, relative humidity, wind speed, solar radiation and soil temperature data are provided by station and are displayed and archived either hourly or daily. Historical weather data goes back to 2008. Resources in this dataset:Resource Title: Weather Station Data. File Name: Web Page, url: https://www.ars.usda.gov/southeast-area/stuttgart-ar/dale-bumpers-national-rice-research-center/docs/weather-station-data/

  17. t

    Current TexMesonet Weather Station Data - Texas Water Data Hub

    • txwaterdatahub.org
    Updated Apr 6, 2023
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    (2023). Current TexMesonet Weather Station Data - Texas Water Data Hub [Dataset]. https://txwaterdatahub.org/dataset/current-texmesonet-weather-station-data
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    Dataset updated
    Apr 6, 2023
    Area covered
    Texas
    Description

    Most recent data from Texas Water Development Board (TWDB) weather stations as part of the TexMesonet — a statewide hydrometeorological observation data collection network. All TWDB stations collect real-time data on rainfall, temperature, soil moisture, and soil temperature. Some stations also monitor atmospheric pressure, wind speed and directions, gusts, relative humidity, and solar radiation.

  18. CIMIS Weather Station Data

    • data.ucar.edu
    ascii
    Updated Dec 26, 2024
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    California Irrigation Management Information System (CIMIS) (2024). CIMIS Weather Station Data [Dataset]. http://doi.org/10.26023/ECJN-RTD9-020X
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    asciiAvailable download formats
    Dataset updated
    Dec 26, 2024
    Dataset provided by
    University Corporation for Atmospheric Research
    Authors
    California Irrigation Management Information System (CIMIS)
    Time period covered
    Mar 1, 2006 - Apr 30, 2006
    Area covered
    Description

    This data set contains hourly resolution surface meteorological data from the California Irrigation Management Information System (CIMIS) weather stations. CIMIS is a program in the Office of Water Use Efficiency (OWUE) in the California Department of Water Resources. The network includes over 120 weather stations in the state of California. The data are in comma-delimited ASCII.

  19. e

    Weather station data from three locations at Lake Sunapee (NH, USA), July...

    • portal.edirepository.org
    • search-demo.dataone.org
    • +1more
    csv, xlsx, zip
    Updated May 20, 2022
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    Bethel Steele; Kathleen Weathers (2022). Weather station data from three locations at Lake Sunapee (NH, USA), July 2019 – December 2021 [Dataset]. http://doi.org/10.6073/pasta/5dfcfd6c88eb8f4f674ef3f8fcff9d72
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    csv(9339088 bytes), csv(9276413 bytes), xlsx(23282 bytes), csv(9764129 bytes), csv(371 bytes), zip(26109 bytes)Available download formats
    Dataset updated
    May 20, 2022
    Dataset provided by
    EDI
    Authors
    Bethel Steele; Kathleen Weathers
    Time period covered
    Jul 1, 2019 - Dec 31, 2021
    Area covered
    Variables measured
    source, BP_flag, SR_flag, UV_flag, Latitude, SiteName, SiteType, Longitude, StationID, rain_flag, and 34 more
    Description

    Davis weather stations, owned and operated by the Lake Sunapee Protective Association (LSPA), were installed at three locations near the shoreline of Lake Sunapee (NH, USA) in July 2019. These stations collect data at 30-minute intervals for a number of weather and meteorological variables continuously throughout the year. In addition to the measured variables, a number of derived variables are also recorded at the same time intervals. Data are manually downloaded from Davis’s WeatherLink website every quarter, then collated and QAQC’d to remove any obvious outliers or recording errors in the R programming language.

  20. Roches Point Monthly Weather Station Data

    • data.gov.ie
    • cloud.csiss.gmu.edu
    • +2more
    Updated May 8, 2018
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    data.gov.ie (2018). Roches Point Monthly Weather Station Data [Dataset]. https://data.gov.ie/dataset/roches-point-monthly-weather-station-data
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    Dataset updated
    May 8, 2018
    Dataset provided by
    data.gov.ie
    Area covered
    Roches Point
    Description

    This dataset contains monthly elements measured at our synoptic station in Roches Point, Co Cork.The file is updated monthly. Values for each month include: Precipitation Amount, Mean Air Temperature, Maximum Air Temperature (C), Minimum Air Temperature, Mean Maximum Temperature, Mean Minimum Temperature, Grass Minimum Temperature, Mean Wind Speed, Highest Gust, Sunshine duration.

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California Department of Water Resources (2024). CIMIS Weather Station Data [Dataset]. https://catalog.data.gov/dataset/cimis-weather-station-data-e3fb1

CIMIS Weather Station Data

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27 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Nov 27, 2024
Dataset provided by
California Department of Water Resources
Description

Weather Data collected by CIMIS automatic weather stations. The data is available in CSV format. Station data include measured parameters such as solar radiation, air temperature, soil temperature, relative humidity, precipitation, wind speed and wind direction as well as derived parameters such as vapor pressure, dew point temperature, and grass reference evapotranspiration (ETo).

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