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mur-1km.xml
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mur-1km.xml
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<?xml version="1.0" encoding="UTF-8"?>
<catalog name="GHRSST Level 4 MUR Global Foundation Sea Surface Temperature Analysis (v4.1)"
xmlns="http://www.unidata.ucar.edu/namespaces/thredds/InvCatalog/v1.0"
xmlns:xlink="http://www.w3.org/1999/xlink"
xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance"
xsi:schemaLocation="http://www.unidata.ucar.edu/namespaces/thredds/InvCatalog/v1.0
http://www.unidata.ucar.edu/schemas/thredds/InvCatalog.1.0.6.xsd">
<!-- here we map an alias to an s3 bucket called "unidata-jpl-sandbox"
"mur-bucket" is the name of a profile containing aws credentials
"aws" is a generic host name used in the special case of S3
uncomment next line to use credentials file -->
<!-- datasetRoot path="mur-test" location="cdms3://mur-bucket@aws/unidata-jpl-sandbox" / -->
<!-- If using IAM to manage access to S3, use the following -->
<datasetRoot path="mur-test" location="cdms3:unidata-jpl-sandbox" />
<!-- local data -->
<datasetRoot path="mur-test-local" location="/data/" />
<!-- location is a path inside the docker container -->
<datasetRoot path="aggregations" location="/usr/local/tomcat/content/thredds/ncml_files" />
<dataset name="GHRSST Level 4 MUR Global Foundation Sea Surface Temperature 1km Analysis (v4.1)">
<metadata inherited="true">
<serviceName>obstoreGrid</serviceName>
<description>
A Group for High Resolution Sea Surface Temperature (GHRSST) Level 4
sea surface temperature analysis produced as a retrospective dataset
(four day latency) and near-real-time dataset (one day latency) at the
JPL Physical Oceanography DAAC using wavelets as basis functions in an
optimal interpolation approach on a global 0.01 degree grid. The
version 4 Multiscale Ultrahigh Resolution (MUR) L4 analysis is based
upon nighttime GHRSST L2P skin and subskin SST observations from
several instruments including the NASA Advanced Microwave Scanning
Radiometer-EOS (AMSR-E), the JAXA Advanced Microwave Scanning
Radiometer 2 on GCOM-W1, the Moderate Resolution Imaging
Spectroradiometers (MODIS) on the NASA Aqua and Terra platforms, the US
Navy microwave WindSat radiometer, the Advanced Very High Resolution
Radiometer (AVHRR) on several NOAA satellites, and in situ SST
observations from the NOAA iQuam project. The ice concentration data
are from the archives at the EUMETSAT Ocean and Sea Ice Satellite
Application Facility (OSI SAF) High Latitude Processing Center and are
also used for an improved SST parameterization for the high-latitudes.
The dataset also contains additional variables for some granules
including a SST anomaly derived from a MUR climatology and the temporal
distance to the nearest IR measurement for each pixel. This dataset is
funded by the NASA MEaSUREs program
(http://earthdata.nasa.gov/our-community/community-data-system-programs/measures-projects),
and created by a team led by Dr. Toshio M. Chin from JPL. It adheres to
the GHRSST Data Processing Specification (GDS) version 2 format
specifications. Use the file global metadata "history:" attribute to
determine if a granule is near-realtime or retrospective.
</description>
<documentation xlink:href="https://podaac.jpl.nasa.gov/dataset/MUR-JPL-L4-GLOB-v4.1"
xlink:title="PO.DAAC Dataset Landing Page"/>
<keyword>GHRSST</keyword>
<keyword>sea surface temperature</keyword>
<keyword>Level 4</keyword>
<keyword>sst</keyword>
<keyword>surface temperature</keyword>
<keyword>MUR</keyword>
<keyword>foundation SST</keyword>
<keyword>SST anomaly</keyword>
<keyword>anomaly</keyword>
<creator>
<name>JPL MUR MEaSUREs Project</name>
<contact url="http://mur.jpl.nasa.gov" email="[email protected]" />
</creator>
<geospatialCoverage>
<northsouth>
<start>-89.99</start>
<size>179.98</size>
<resolution>0.01</resolution>
<units>degrees_north</units>
</northsouth>
<eastwest>
<start>-179.99</start>
<size>359.99</size>
<resolution>0.01</resolution>
<units>degrees_east</units>
</eastwest>
</geospatialCoverage>
<dataType>Grid</dataType>
<dataFormat>NetCDF-4</dataFormat>
</metadata>
<!--
One month aggregation, scan based, defined in catalog
-->
<dataset name="January 2019 NcML Scan Aggregation"
ID="MUR-JPL-L4-GLOB-v4.1-2019-01"
urlPath="scan-aggregation/mur-2019-01.nc">
<metadata>
<timeCoverage>
<start>2021-01-01T00:00:00</start>
<end>2021-01-31T23:59:59</end>
</timeCoverage>
</metadata>
<netcdf xmlns="http://www.unidata.ucar.edu/namespaces/netcdf/ncml-2.2"
id="MUR-JPL-L4-GLOB-v4.1-2019-01"
enhance="all">
<aggregation dimName="time" type="joinExisting">
<scan location="cdms3:podaac-mur-access-study?MUR-JPL-L4-GLOB-v4.1"
dateFormatMark="MUR-JPL-L4-GLOB-v4.1/#yyyyMMdd"
suffix=".nc" />
</aggregation>
</netcdf>
</dataset> <!-- End of one month scan agg -->
</dataset>
</catalog>