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Statistical methods
Gridpp supports a number of basic statistical methods for gridded forecasts. Many of these methods can be represented by a calibration curve.
The function apply_curve
performs this adjustment. The curve itself can be constructed by using various methods.
adjusted_fcst = gridpp.apply_curve(input, curve, policy_below, policy_above)
where input
is either a scalar, a 1D vector, or a 2D vector; curve
is a calibration curve; and policy_below
and policy_above
define how to treat inputs that are outside the domain of the calibration curve (see Extrapolation curve below).
Quantile mapping uses the relationship between historical forecasts and a reference dataset. A curve is created by sorting the forecast and reference points.
curve = gridpp.quantile_mapping_curve(ref, fcst)
where fcst
is a 1D vector of forecast samples and ref
is a 1D vector of reference samples
Here is an example:
input = 275
fcst = [250, 270, 290, 310]
ref = [240, 275, 290, 305]
curve gridpp.quantile_mapping_curve(ref, fcst)
adjusted = gridpp.apply_curve(input, curve, gridpp.OneToOne, gridpp.OneToOne)
The extrapolation policy specifies how values are extrapolated outside the domain of the curve. The following extrapolation policies are supported:
Policy | Description |
---|---|
gridpp.OneToOne |
A one-to-one line is used outside the domain |
gridpp.MeanSlope |
The slope between the two extreme points on the curve is used to extrapolate |
gridpp.NearstSlope |
The slope between the two lowest points is used below the curve (similarly for the two highest points) |
gridpp.Zero |
A slope of 0 outside the curve |