GCOOS Metocean: Historical collections
   
Brought to you by NOAA NMFS SWFSC ERD    

ERDDAP > tabledap > Subset ?

Dataset Title:  "Deepwater CTD - 87g1116.ctd.nc - 27.67N, -93.25W - 1987-11-21" Subscribe RSS
Institution:  Texas A&M University, Department of Oceanography   (Dataset ID: deepwater_87g1116_ctd)
Information:  Summary ? | License ? | FGDC | ISO 19115 | Metadata | Background (external link) | Data Access Form | Files | Make a graph

Select a subset:      (Current number of distinct combinations of matching data: 56)
Make as many selections as you want, in any order. Each selection changes the other options (and the map and data below) accordingly.

    depth ?  =  m   56 options
    temperature ?  =  degree_C   51 options
    salinity ?  =  PSU   46 options
    oxygen ?  =  milliliters per liter   7 options
    nitrite ?  =  micromols per liter   6 options
    nitrate ?  =  micromols   11 options
    phosphate ?  =  micromols per liter   10 options
    silicate ?  =  micromols per liter   13 options
    salinity2 ?  =  PSU   2 options
    qualityFlag ?  =  1 option: 0.0

View:      Map of All Related Data ?      Distinct Data Counts ?     Distinct Data ?      Related Data Counts ?     Related Data ?

 
Map of All Related Data ?   (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.
 


Distinct Data Counts ?

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)  

depth temperature salinity oxygen nitrite nitrate phosphate silicate salinity2 qualityFlag
m degree_C PSU milliliters per liter micromols per liter micromols micromols per liter micromols per liter PSU
3.0 24.097999572753906 36.44900131225586 4.800000190734863 0.03999999910593033 0.05999999865889549 0.009999999776482582 3.4000000953674316 -99.0 0.0
7.0 24.113000869750977 36.448001861572266 4.797999858856201 0.029999999329447746 0.07000000029802322 0.009999999776482582 2.619999885559082 -99.0 0.0
12.0 24.12700080871582 36.448001861572266 4.791999816894531 0.029999999329447746 0.07000000029802322 0.009999999776482582 2.5399999618530273 -99.0 0.0
17.0 24.128999710083008 36.44599914550781 -99.0 0.09000000357627869 0.05000000074505806 0.07999999821186066 2.7100000381469727 -99.0 0.0
22.0 24.135000228881836 36.446998596191406 4.756999969482422 0.05999999865889549 0.07999999821186066 0.05000000074505806 2.4200000762939453 -99.0 0.0
27.0 24.136999130249023 36.446998596191406 4.793000221252441 0.03999999910593033 0.12999999523162842 0.05999999865889549 2.3399999141693115 -99.0 0.0
32.0 24.136999130249023 36.446998596191406 -99.0 0.05999999865889549 11.100000381469727 0.6100000143051147 5.5 -99.0 0.0
37.0 24.136999130249023 36.446998596191406 -99.0 0.05999999865889549 11.199999809265137 0.6100000143051147 5.539999961853027 -99.0 0.0
42.0 24.136999130249023 36.44599914550781 -99.0 0.03999999910593033 15.300000190734863 0.8100000023841858 6.650000095367432 -99.0 0.0
47.0 24.136999130249023 36.446998596191406 -99.0 0.05000000074505806 15.300000190734863 0.8399999737739563 7.019999980926514 -99.0 0.0
52.0 24.134000778198242 36.44599914550781 -99.0 0.029999999329447746 16.5 0.8799999952316284 7.510000228881836 -99.0 0.0
56.0 24.135000228881836 36.44599914550781 -99.0 0.05000000074505806 19.200000762939453 1.0499999523162842 9.989999771118164 -99.0 0.0
63.0 24.104999542236328 36.44300079345703 0.0
67.0 23.513999938964844 36.41400146484375 0.0
72.0 22.14299964904785 36.39500045776367 0.0
77.0 21.665000915527344 36.374000549316406 0.0
82.0 20.75200080871582 36.36899948120117 0.0
87.0 20.072999954223633 36.35499954223633 0.0
93.0 19.82200050354004 36.36899948120117 0.0
97.0 19.590999603271484 36.375 0.0
102.0 19.26300048828125 36.367000579833984 0.0
107.0 18.834999084472656 36.36199951171875 0.0
112.0 18.413999557495117 36.345001220703125 0.0
118.0 17.98900032043457 36.31800079345703 0.0
122.0 17.757999420166016 36.305999755859375 0.0
128.0 17.520999908447266 36.28200149536133 0.0
133.0 17.297000885009766 36.26100158691406 0.0
137.0 17.097000122070312 36.23899841308594 0.0
142.0 16.999000549316406 36.22700119018555 0.0
147.0 16.926000595092773 36.224998474121094 0.0
152.0 16.836999893188477 36.2130012512207 0.0
158.0 16.70199966430664 36.198001861572266 0.0
162.0 16.614999771118164 36.18600082397461 0.0
167.0 16.55299949645996 36.17900085449219 0.0
172.0 16.514999389648438 36.17499923706055 0.0
177.0 16.485000610351562 36.17100143432617 0.0
182.0 16.31800079345703 36.14699935913086 0.0
187.0 16.110000610351562 36.11899948120117 0.0
192.0 16.05900001525879 36.11399841308594 0.0
197.0 15.928999900817871 36.095001220703125 0.0
202.0 15.807999610900879 36.07600021362305 0.0
207.0 15.779999732971191 36.07099914550781 0.0
212.0 15.741000175476074 36.066001892089844 0.0
217.0 15.710000038146973 36.0620002746582 0.0
222.0 15.70300006866455 36.06100082397461 0.0
227.0 15.682999610900879 36.05799865722656 0.0
233.0 15.66100025177002 36.05400085449219 0.0
237.0 15.635000228881836 36.04999923706055 0.0
242.0 15.604000091552734 36.04499816894531 0.0
248.0 15.545000076293945 36.02899932861328 0.0
252.0 15.348999977111816 36.00600051879883 0.0
257.0 15.175999641418457 35.979000091552734 0.0
262.0 15.142000198364258 35.97600173950195 0.0
267.0 15.138999938964844 35.97600173950195 0.0
272.0 15.116000175476074 35.97100067138672 0.0
276.0 15.08899974822998 35.96699905395508 0.0

In total, there are 56 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.
 


Related Data Counts ?

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.


 
ERDDAP, Version 2.23
Disclaimers | Privacy Policy | Contact