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ERDDAP
Easier access to scientific data |
Brought to you by NOAA NMFS SWFSC ERD |
| Dataset Title: | GLIDERS_MISSIONS_2024 Apr_Jun_v2
|
| Institution: | University of South Florida (Dataset ID: GLIDERS_2024_04_06_V2) |
| Information: | Summary
| License
| FGDC
| ISO 19115
| Metadata
| Background
| Data Access Form
| Files
| Make a graph
|
(Refine the map and/or download the image)
To view the map, check View : Map of All Related Data above.
WARNING: This may involve lots of data.
For some datasets, this may be slow.
Consider using this only when you need it and
have selected a small subset of the data.
To view the counts of distinct combinations of the variables listed above,
check View : Distinct Data Counts above and select a value for one of the variables above.
Distinct Data
(Metadata)
(Refine the data subset and/or download the data)
| trajectory |
|---|
| maracoos_05-20240619T1716 |
| mote-dora-20240418T0000 |
| mote-SeaXplorer-20240521T0000 |
| NG656-20240613T0000 |
| osu592-20240521T1537 |
| osu592-20240521T1549 |
| OSU686-20240412T0000 |
| ru23-20240401T1646 |
| ru29-20240419T1430 |
| ru32-20240429T1543 |
| ru39-20240429T1522 |
| ru40-20240429T1528 |
| ru43-20240612T1658 |
| sbu01-20240402T1429 |
| sg249-20240411T1937 |
| SG678-M14JUN2024 |
| unit_1148-20240607T0000 |
| unit_1152-20240606T0000 |
| unit_307-20240607T0000 |
| usf-jaialai-20240415T0000 |
| usf-jaialai-20240625T0000 |
In total, there are 21 rows of distinct combinations of the variables listed above.
All of the rows are shown above.
To change the maximum number of rows displayed, change View : Distinct Data above.
To view the related data counts,
check View : Related Data Counts above and select a value for one of the variables above.
WARNING: This may involve lots of data.
For some datasets, this may be slow.
Consider using this only when you need it and
have selected a small subset of the data.
Related Data
(Metadata)
(Refine the data subset and/or download the data)
To view the related data, change View : Related Data above.
WARNING: This may involve lots of data. For some datasets, this may be slow. Consider using this only when you need it and have selected a small subset of the data.