5 datasets found
  1. A

    Sea Surface Temperature (SST) Standard Deviation of Long-term Mean,...

    • data.amerigeoss.org
    • data.ioos.us
    • +1more
    wcs, wms, xml
    Updated Jul 15, 2019
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    ioos (2019). Sea Surface Temperature (SST) Standard Deviation of Long-term Mean, 2000-2013 - Hawaii [Dataset]. https://data.amerigeoss.org/pt_PT/dataset/sea-surface-temperature-sst-standard-deviation-of-long-term-mean-2000-2013-hawaii
    Explore at:
    wcs, wms, xmlAvailable download formats
    Dataset updated
    Jul 15, 2019
    Dataset provided by
    ioos
    Area covered
    Hawaii
    Description

    Sea surface temperature (SST) plays an important role in a number of ecological processes and can vary over a wide range of time scales, from daily to decadal changes. SST influences primary production, species migration patterns, and coral health. If temperatures are anomalously warm for extended periods of time, drastic changes in the surrounding ecosystem can result, including harmful effects such as coral bleaching. This layer represents the standard deviation of SST (degrees Celsius) of the weekly time series from 2000-2013.

    Three SST datasets were combined to provide continuous coverage from 1985-2013. The concatenation applies bias adjustment derived from linear regression to the overlap periods of datasets, with the final representation matching the 0.05-degree (~5-km) near real-time SST product. First, a weekly composite, gap-filled SST dataset from the NOAA Pathfinder v5.2 SST 1/24-degree (~4-km), daily dataset (a NOAA Climate Data Record) for each location was produced following Heron et al. (2010) for January 1985 to December 2012. Next, weekly composite SST data from the NOAA/NESDIS/STAR Blended SST 0.1-degree (~11-km), daily dataset was produced for February 2009 to October 2013. Finally, a weekly composite SST dataset from the NOAA/NESDIS/STAR Blended SST 0.05-degree (~5-km), daily dataset was produced for March 2012 to December 2013.

    The standard deviation of the long-term mean SST was calculated by taking the standard deviation over all weekly data from 2000-2013 for each pixel.

  2. W

    Sea Surface Temperature (SST) Maximum Monthly Climatological Mean, 1985-2013...

    • cloud.csiss.gmu.edu
    • data.ioos.us
    • +2more
    wcs, wms, xml
    Updated Jul 22, 2019
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    IOOS (2019). Sea Surface Temperature (SST) Maximum Monthly Climatological Mean, 1985-2013 - Hawaii [Dataset]. https://cloud.csiss.gmu.edu/uddi/es_AR/dataset/2b0caa4f-c7f1-4674-8a5d-d76d32a75f93
    Explore at:
    xml, wms, wcsAvailable download formats
    Dataset updated
    Jul 22, 2019
    Dataset provided by
    IOOS
    Area covered
    Hawaii
    Description

    Sea surface temperature (SST) plays an important role in a number of ecological processes and can vary over a wide range of time scales, from daily to decadal changes. SST influences primary production, species migration patterns, and coral health. If temperatures are anomalously warm for extended periods of time, drastic changes in the surrounding ecosystem can result, including harmful effects such as coral bleaching. This layer represents the maximum of the monthly mean climatology of SST (degrees Celsius) from 1985-2013.

    Three SST datasets were combined to provide continuous coverage from 1985-2013. The concatenation applies bias adjustment derived from linear regression to the overlap periods of datasets, with the final representation matching the 0.05-degree (~5-km) near real-time SST product. First, a weekly composite, gap-filled SST dataset from the NOAA Pathfinder v5.2 SST 1/24-degree (~4-km), daily dataset (a NOAA Climate Data Record) for each location was produced following Heron et al. (2010) for January 1985 to December 2012. Next, weekly composite SST data from the NOAA/NESDIS/STAR Blended SST 0.1-degree (~11-km), daily dataset was produced for February 2009 to October 2013. Finally, a weekly composite SST dataset from the NOAA/NESDIS/STAR Blended SST 0.05-degree (~5-km), daily dataset was produced for March 2012 to December 2013.

    An SST climatology was first calculated by taking the average of the 5-km weekly SST data for each month, and then averaging for all same-months (e.g., January) over the 1985-2013 time period.

  3. A

    Sea Surface Temperature (SST) Average Annual Frequency of Anomalies,...

    • data.amerigeoss.org
    • data.ioos.us
    • +1more
    wcs, wms, xml
    Updated Jul 15, 2019
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    ioos (2019). Sea Surface Temperature (SST) Average Annual Frequency of Anomalies, 2000-2013 - Hawaii [Dataset]. https://data.amerigeoss.org/fi/dataset/sea-surface-temperature-sst-average-annual-frequency-of-anomalies-2000-2013-hawaii
    Explore at:
    wms, xml, wcsAvailable download formats
    Dataset updated
    Jul 15, 2019
    Dataset provided by
    ioos
    Area covered
    Hawaii
    Description

    Sea surface temperature (SST) plays an important role in a number of ecological processes and can vary over a wide range of time scales, from daily to decadal changes. SST influences primary production, species migration patterns, and coral health. If temperatures are anomalously warm for extended periods of time, drastic changes in the surrounding ecosystem can result, including harmful effects such as coral bleaching. This layer represents the annual average frequency of anomalies of SST from 2000-2013, with values presented as fraction of a year.

    Three SST datasets were combined to provide continuous coverage from 1985-2013. The concatenation applies bias adjustment derived from linear regression to the overlap periods of datasets, with the final representation matching the 0.05-degree (~5-km) near real-time SST product. First, a weekly composite, gap-filled SST dataset from the NOAA Pathfinder v5.2 SST 1/24-degree (~4-km), daily dataset (a NOAA Climate Data Record) for each location was produced following Heron et al. (2010) for January 1985 to December 2012. Next, weekly composite SST data from the NOAA/NESDIS/STAR Blended SST 0.1-degree (~11-km), daily dataset was produced for February 2009 to October 2013. Finally, a weekly composite SST dataset from the NOAA/NESDIS/STAR Blended SST 0.05-degree (~5-km), daily dataset was produced for March 2012 to December 2013.

    The SST average annual frequency of anomalies was calculated by taking the average number of weeks that exceeded the maximum monthly climatological SST value from 2000-2013 for each pixel.

  4. A

    Sea Surface Temperature (SST) Average Annual Maximum Anomaly, 2000-2013 -...

    • data.amerigeoss.org
    • data.ioos.us
    • +2more
    wcs, wms, xml
    Updated Jul 15, 2019
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    IOOS (2019). Sea Surface Temperature (SST) Average Annual Maximum Anomaly, 2000-2013 - Hawaii [Dataset]. https://data.amerigeoss.org/nl/dataset/sea-surface-temperature-sst-average-annual-maximum-anomaly-2000-2013-hawaii
    Explore at:
    xml, wcs, wmsAvailable download formats
    Dataset updated
    Jul 15, 2019
    Dataset provided by
    IOOS
    Area covered
    Hawaii
    Description

    Sea surface temperature (SST) plays an important role in a number of ecological processes and can vary over a wide range of time scales, from daily to decadal changes. SST influences primary production, species migration patterns, and coral health. If temperatures are anomalously warm for extended periods of time, drastic changes in the surrounding ecosystem can result, including harmful effects such as coral bleaching. This layer represents the annual average of the maximum anomaly of SST (degrees Celsius) from 2000-2013.

    Three SST datasets were combined to provide continuous coverage from 1985-2013. The concatenation applies bias adjustment derived from linear regression to the overlap periods of datasets, with the final representation matching the 0.05-degree (~5-km) near real-time SST product. First, a weekly composite, gap-filled SST dataset from the NOAA Pathfinder v5.2 SST 1/24-degree (~4-km), daily dataset (a NOAA Climate Data Record) for each location was produced following Heron et al. (2010) for January 1985 to December 2012. Next, weekly composite SST data from the NOAA/NESDIS/STAR Blended SST 0.1-degree (~11-km), daily dataset was produced for February 2009 to October 2013. Finally, a weekly composite SST dataset from the NOAA/NESDIS/STAR Blended SST 0.05-degree (~5-km), daily dataset was produced for March 2012 to December 2013.

    The SST average annual maximum anomaly was calculated by taking the average of the annual maximum SST values in exceedance of the maximum monthly climatological SST from 2000-2013 for each pixel.

  5. A

    Sea Surface Temperature (SST) Long-term Mean, 2000-2013 - Hawaii

    • data.amerigeoss.org
    • data.ioos.us
    • +1more
    wcs, wms, xml
    Updated Jul 15, 2019
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    IOOS (2019). Sea Surface Temperature (SST) Long-term Mean, 2000-2013 - Hawaii [Dataset]. https://data.amerigeoss.org/dataset/sea-surface-temperature-sst-long-term-mean-2000-2013-hawaiib4e7b
    Explore at:
    wcs, wms, xmlAvailable download formats
    Dataset updated
    Jul 15, 2019
    Dataset provided by
    IOOS
    Area covered
    Hawaii
    Description

    Sea surface temperature (SST) plays an important role in a number of ecological processes and can vary over a wide range of time scales, from daily to decadal changes. SST influences primary production, species migration patterns, and coral health. If temperatures are anomalously warm for extended periods of time, drastic changes in the surrounding ecosystem can result, including harmful effects such as coral bleaching. This layer represents the mean SST (degrees Celsius) of the weekly time series from 2000-2013.

    Three SST datasets were combined to provide continuous coverage from 1985-2013. The concatenation applies bias adjustment derived from linear regression to the overlap periods of datasets, with the final representation matching the 0.05-degree (~5-km) near real-time SST product. First, a weekly composite, gap-filled SST dataset from the NOAA Pathfinder v5.2 SST 1/24-degree (~4-km), daily dataset (a NOAA Climate Data Record) for each location was produced following Heron et al. (2010) for January 1985 to December 2012. Next, weekly composite SST data from the NOAA/NESDIS/STAR Blended SST 0.1-degree (~11-km), daily dataset was produced for February 2009 to October 2013. Finally, a weekly composite SST dataset from the NOAA/NESDIS/STAR Blended SST 0.05-degree (~5-km), daily dataset was produced for March 2012 to December 2013.

    The SST long-term mean was calculated by taking the average of all weekly data from 2000-2013 for each pixel.

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Share
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Click to copy link
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Close
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ioos (2019). Sea Surface Temperature (SST) Standard Deviation of Long-term Mean, 2000-2013 - Hawaii [Dataset]. https://data.amerigeoss.org/pt_PT/dataset/sea-surface-temperature-sst-standard-deviation-of-long-term-mean-2000-2013-hawaii

Sea Surface Temperature (SST) Standard Deviation of Long-term Mean, 2000-2013 - Hawaii

Explore at:
wcs, wms, xmlAvailable download formats
Dataset updated
Jul 15, 2019
Dataset provided by
ioos
Area covered
Hawaii
Description

Sea surface temperature (SST) plays an important role in a number of ecological processes and can vary over a wide range of time scales, from daily to decadal changes. SST influences primary production, species migration patterns, and coral health. If temperatures are anomalously warm for extended periods of time, drastic changes in the surrounding ecosystem can result, including harmful effects such as coral bleaching. This layer represents the standard deviation of SST (degrees Celsius) of the weekly time series from 2000-2013.

Three SST datasets were combined to provide continuous coverage from 1985-2013. The concatenation applies bias adjustment derived from linear regression to the overlap periods of datasets, with the final representation matching the 0.05-degree (~5-km) near real-time SST product. First, a weekly composite, gap-filled SST dataset from the NOAA Pathfinder v5.2 SST 1/24-degree (~4-km), daily dataset (a NOAA Climate Data Record) for each location was produced following Heron et al. (2010) for January 1985 to December 2012. Next, weekly composite SST data from the NOAA/NESDIS/STAR Blended SST 0.1-degree (~11-km), daily dataset was produced for February 2009 to October 2013. Finally, a weekly composite SST dataset from the NOAA/NESDIS/STAR Blended SST 0.05-degree (~5-km), daily dataset was produced for March 2012 to December 2013.

The standard deviation of the long-term mean SST was calculated by taking the standard deviation over all weekly data from 2000-2013 for each pixel.

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