∂Y root mean sq [ Rwanda CPT NextGen 0p25 GFDL-CM2p1-aer04 xValPred ] : ∂Y cross-validated data
Rwanda CPT NextGen 0p25 GFDL-CM2p1-aer04 xValPred xValPred
∂Y cross-validated from SOURCES: the IRI/LDEO collection of climate data.
Independent Variables (Grids)
- Forecast Lead Time in Months
- grid: /L (months) ordered [ (2.5)] :grid
- S
- grid: /S (months since 1960-01-01) ordered (0000 1 Jan 1983) to (0000 1 Dec 2009) by 1.0 N= 324 pts :grid
- Latitude (latitude)
- grid: /Y (degree_north) ordered (1.25S) to (2.75S) by 0.25 N= 7 pts :grid
Other Info
- CE
- null
- CS
- null
- datatype
- realarraytype
- file_missing_value
- -999.0
- missing_value
- NaN
- pointwidth
- 0
- units
- 0.0572957795130823 meter radian-1 north
- history
- $partialdiff sub Y$ root mean sq [ Rwanda CPT NextGen 0p25 GFDL-CM2p1-aer04 xValPred ]
- Averaged in T with overlapping interval 3
Averaged over X[28E, 31E] minimum 0.0% data present
Last updated: Thu, 12 Dec 2019 21:15:33 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 S
Y
- Differentiate along S
Y
- Take differences along S
Y
Average over
S
Y
|
S Y
|
RMS (root mean square with mean *not* removed) over
S
Y
|
S Y
|
RMSA (root mean square with mean removed) over
S
Y
|
S Y
|
Maximum over
S
Y
|
S Y
|
Minimum over
S
Y
|
S Y
|
Detrend (best-fit-line) over
S
Y
|
S Y
|
Note on units