Date: Fri, 29 Mar 2024 09:57:53 +0000 (UTC)
Message-ID: <1560182899.25.1711706273150@dcconf.dc.onc>
Subject: Exported From Confluence
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For time series scalar plots.<=
/em>
All
When this option is selected, all sensors available to the instrument or=
location shall be included in the requested data product.
This is the default option.
Oceans 3.0 API filt=
er: dpo_sensorstoinclude=3D0
State of Environm=
ent sensors only
When this option is selected, a filter is applied so that only a specifi=
c set of sensors are included in the requested data product. The included s=
ensors generally consist of sensors that represent an environmental propert=
y such as temperature, salinity, ice draft, etc. Non-standard, comprom=
ised or uncorrected sensors are excluded. See here.
Oceans 3.0 API filt=
er: dpo_sensorstoinclude=3D1
File-name mode field
If the sensors to include option is set State of Environment sensors onl=
y, 'stateEnvSensorsOnly' is added to the file-name. 'stateEnvPlot' is =
added instead, if the search type is also 'Variables by Location'.
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