∫dtime mean mean ∂lon ∂lat ∂time [ UY precipitacion ] : ∂lon ∂lat ∂time Precipitacion data
precipitacion partial_time partial_lat partial_lat partial_lon partial_lon partial_lon partial_lon partial_lon
∂lon ∂lat ∂time Precipitacion from UY: PRECM_UY_v1p1: Gridded precipitation dataset at 30 km. It corresponds to Experiment No. 3 in the documentation.
Independent Variables (Grids)
- time
- grid: /time (months since 1960-01-01) ordered (16 Jan 1925 - 15 Feb 1925) to (16 Nov 2009 - 15 Dec 2009) by 1.0 N= 1019 pts :grid
Other Info
- bufferwordsize
- 8
- CE
- null
- CS
- null
- datatype
- doublearraytype
- file_missing_value
- -999.0
- missing_value
- NaN
- units
- 39.3936762001409 meter radian-2 north year-1
- history
- $integral dtime$ mean mean $partialdiff sub lon$ $partialdiff sub lat$ $partialdiff sub time$ [ UY precipitacion ]
- Averaged over lon[58.85526W, 53.64474W] minimum 0.0% data present
Averaged over lat[35.8587S, 29.6413S] minimum 0.0% data present
References
Muñoz, ?~A.G., González, P., Baethgen, W.,: Gridded precipitation dataset ff
or Uruguay. Version 1.1
Last updated: Sun, 02 Jun 2024 17:51:42 GMT
Filters
Here are some filters that are useful for manipulating data. There
are actually many more available, but they have to be entered
manually. See
Ingrid
Function Documentation for more information.
- Monthly Climatology calculates
a monthly climatology by averaging over all years.
- anomalies calculates the difference
between the (above) monthly climatology and the original data.
- Integrate along time
- Differentiate along time
- Take differences along time
Average over
time
|
RMS (root mean square with mean *not* removed) over
time
|
RMSA (root mean square with mean removed) over
time
|
Maximum over
time
|
Minimum over
time
|
Detrend (best-fit-line) over
time
|
Note on units