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Ensemble forecasting (AIFS - ENS) brings an ability to quantify uncertainty and to identify possible extremes in the evolution. An ensemble of the AI forecast procedure can be executed because AI forecasting is rapid and cheap to run. At present AIFS - ENS has 50 members and is run at six hour intervals. However there is potential for much larger and/or more frequent ensembles. Essentially each ensemble member is similar to AIFS single.
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In addition to points for consideration outlined in the AIFS single section
AIFS - ENS forecasts:
- High-quality ensemble forecasts that outperform ECMWF’s traditional physics-based ensemble system in medium-range forecasts on most accuracy and reliability scores.
- Very fast and economical to produce a forecast sequence.
- The principle for construction of meteograms and charts is very similar to that used by IFS ensembles.
- Individual ensemble members do not exhibit the smoothing seen in AIFS-SIngle and have similar levels of forecast activity to IFS. This is because the CRPS loss function does not encourage smoothing.
- AIFS - ENS control verifies better than AIFS - ENS members (possibly with 6-12h gain).
- Are currently little bit over-dispersive.
- Very small totals can appear in the precipitation fields far too often. This will be fixed in upcoming cycles.
- Physical consistency in the output is unlikely to be as good as with IFS. This is being investigated.
- Cloud fields appear very "blocky" after T+0. This is being investigated.
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- When a variable level is nominally underground - e.g. for mean sea level pressure in very mountainous areas, or 1000hPa or even 850hPa temperature in very mountainous areas, extreme unrealistic values can develop in the course of a forecast, in some or all ensemble members. In turn this can manifest as extreme ensemble spread in that particular variable. One problem area is the Andes, but there are others too. These 'glitches' do not always happen, and their onset is not always at the same lead time (e.g. Fig2).
- Some extreme weather events appear less intense than IFS ensemble (e.g. windstorms).
- Temperature extremes are more consistently handled, generally beating classical NWP forecasts.
- The AIFS - ENS contrail has a slight advantage over other AIFS - ENS members because it starts from unperturbed initial conditions. However, because of the ML training it contains model uncertainty. It is not the same as IFS ensemble control (Ex-HRES).
- Extremes are better identified than with AIFS-Single.
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Fig2.1.6.2.2-1: An example of an AIFS - ENS meteogram for Warsaw DT00UTC 26 Jun 2025. The plots are in standard box and whisker form and includes the AIFS - ENS control. The AIFS single is shown as a continuous blue line. Note AIFS single departs outside the AIFS - ENS box and whisker in places. This may be due to the difference in the ML derivation of the algorithms for AIFS single and AIFS - ENS.
FIG2.1.6.2.2-2: An example of AIFS - ENS chart output from AIFS - ENS mean and spread VT12UTC 30 Jun 2025, DT12UTC 24 Jun 2025. Large uncertainty over the southern Andes as high as 8-14C locally. This can be due to 1000hPa contour lying below the model surface in mountainous areas.
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