rank histograms – measuring the reliability of an ensemble forecast

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Rank Histograms – measuring the reliability of an ensemble forecast. You cannot verify an ensemble forecast with a single observation. The more data you have for verification, (as is true in general for other statistical measures) the more certain you are. - PowerPoint PPT Presentation

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Page 1: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 2: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 3: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 4: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 5: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 6: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 7: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 8: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 9: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 10: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 11: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 12: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 13: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 14: Rank Histograms  – measuring the reliability of an ensemble forecast
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Page 16: Rank Histograms  – measuring the reliability of an ensemble forecast
Page 17: Rank Histograms  – measuring the reliability of an ensemble forecast

Rank Histograms – measuring the reliability of an ensemble forecast

• You cannot verify an ensemble forecast with a single observation.

• The more data you have for verification, (as is true in general for other statistical measures) the more certain you are.

• Rare events (low probability) require more data to verify => as do systems with many ensemble members.

From Barb Brown

Page 18: Rank Histograms  – measuring the reliability of an ensemble forecast

From Tom Hamill

Page 19: Rank Histograms  – measuring the reliability of an ensemble forecast

Troubled Rank Histograms

Slide from Matt Pocernic

1 2 3 4 5 6 7 8 9 10Ensemble #

1 2 3 4 5 6 7 8 9 10Ensemble #

Coun

ts0

1020

30

Coun

ts0

1020

30

Page 20: Rank Histograms  – measuring the reliability of an ensemble forecast

From Tom Hamill

Page 21: Rank Histograms  – measuring the reliability of an ensemble forecast

From Tom Hamill

Page 22: Rank Histograms  – measuring the reliability of an ensemble forecast

From Tom Hamill

Page 23: Rank Histograms  – measuring the reliability of an ensemble forecast

From Tom Hamill

Page 24: Rank Histograms  – measuring the reliability of an ensemble forecast

From Tom Hamill

Page 25: Rank Histograms  – measuring the reliability of an ensemble forecast

Example of Quantile Regression (QR)

Our application

Fitting T quantiles using QR conditioned on:

1) Ranked forecast ens

2) ensemble mean

3) ensemble median

4) ensemble stdev

5) Persistence

R package: quantreg

Page 26: Rank Histograms  – measuring the reliability of an ensemble forecast

T [K

]

Timeforecastsobserved

Regressor set: 1. reforecast ens2. ens mean3. ens stdev 4. persistence 5. LR quantile (not shown)

Prob

abili

ty/°

K

Temperature [K]

climatologicalPDF

Step I: Determineclimatological quantiles

Step 2: For each quan, use “forward step-wisecross-validation” to iteratively select best subsetSelection requirements: a) QR cost function minimum, b) Satisfy binomial distribution at 95% confidenceIf requirements not met, retain climatological “prior”

1.

3.2.

4.

Step 3: segregate forecasts into differing ranges of ensemble dispersion and refit models (Step 2) uniquely for each range

Time

forecasts

T [K

]

I. II. III. II. I.Pr

obab

ility

/°K

Temperature [K]

ForecastPDF

prior

posterior

Final result: “sharper” posterior PDFrepresented by interpolated quans

Page 27: Rank Histograms  – measuring the reliability of an ensemble forecast

RPS =1

n−1CDFfc,i −CDFobs,i( )

2

i=1

n

Rank Probability Scorefor multi-categorical or continuous variables

Page 28: Rank Histograms  – measuring the reliability of an ensemble forecast

Scatter-plot and Contingency Table

Does the forecast detect correctly temperatures above 18 degrees ?

Slide from Barbara Casati

BS =1n

yi −oi( )2

i=1

n

Brier Score

y = forecasted event occurenceo = observed occurrence (0 or 1)i = sample # of total n samples

=> Note similarity to MSE

Page 29: Rank Histograms  – measuring the reliability of an ensemble forecast

Other post-processing approaches …1) Bayesian Model Averaging (BMA) –

Raftery et al (1997)

2) Analogue approaches –Hopson and Webster, J. Hydromet (2010)

3) Kalman Filter with analogues –Delle Monache et al (2010)

4) Quantile regression –Hopson and Hacker, MWR (under review)

5) quantile-to-quantile (quantile matching) approach –Hopson and Webster J. Hydromet (2010)

… many others

Page 30: Rank Histograms  – measuring the reliability of an ensemble forecast

Quantile Matching: another approach when matched forecasts-observationpairs are not available => useful for climate change studies

2004 Brahmaputra Catchment-averaged Forecasts-black line satellite observations-colored lines ensemble forecasts-Basic structure of catchment rainfall similar for both forecasts and observations-But large relative over-bias in forecasts

ECMWF 51-member EnsemblePrecipitation Forecasts comparedTo observations

Page 31: Rank Histograms  – measuring the reliability of an ensemble forecast

Pmax

25th 50th 75th 100th

PfcstPrec

ipita

tion

Quantile

Pmax

25th 50th 75th 100th

Padj

Quantile

Forecast Bias Adjustment - done independently for each forecast grid

(bias-correct the whole PDF, not just the median)

Model Climatology CDF “Observed” Climatology CDF

In practical terms …

Precipitation 0 1m

ranked forecasts

Precipitation 0 1m

ranked observations

Hopson and Webster (2010)

Page 32: Rank Histograms  – measuring the reliability of an ensemble forecast

Brahmaputra Corrected Forecasts Original Forecast

Corrected Forecast

=> Now observed precipitation within the “ensemble bundle”

Bias-corrected Precipitation Forecasts