Since the implementation of EFAS version 5.4 (XXX 2025) and GloFAS v4.3 (YYY 2025), the same design of products are used for the sub-seasonal range in EFAS and GloFAS. This means, the previous EFAS sub-seasonal products were replaced by the new ones, while for GloFAS the sub-seasonal products are newly introduced.
The new sub-seasonal products cover calendar weekly periods (i.e. always Monday-Sunday) as lead time. The forecast signal is derived from the relationship between the calendar weekly mean river discharge and the climatological distribution of the possible weekly mean values. The fixed calendar weeks, as forecast lead times, will allow the users to compare forecasts from different runs, as the verification period is fixed onto the calendar weeks. So, the evolution of the subsequent daily sub-seasonal forecast runs (always at 00 UTC) can be monitored by looking at the exact same verification periods.
The generation of the sub-seasonal products rely on three major components, listed below:
Component-1. Real time forecasts
This part is the hydrological forecasts produced in real time. This will give the actual predicted conditions for the sub-seasonal products that will be compared to the climatologies to derive the forecast anomaly and uncertainty. In the following, we describe the characteristics of these real time forecast simulations. Where appropriate, the difference between EFAS and GloFAS is specified. If there is no EFAS/GloFAS mentioned, then the method is identical between the two forecast systems:
- Hydrological model used: LISFLOOD (LINK!)
- Meteorological forcing used: the combination of the 9km (horizontal resolution) ECMWF ensemble forecasts (LINK!) and the 36km ECMWF sub-seasonal forecasts (LINK!) from the previous day
- The low-resolution sub-seasonal forcing is taken from the previous available forecast run, simply because of timing, as the sub-seasonal meteo forecasts for the same day are only available with several hours delay after the high-resolution forecasts.
- The high- and low-resolution forcing is currently combined by a simple mechanical blending by using the high-resolution meteorological forcing for days 1-15, while the low-resolution meteorological forcing for days 16-45, for each of the 51 ensemble members.
- The blending can create inconsistencies locally over complex orographical areas, due to the resolution change at day15, and also there could be some smaller inconsistencies between the ensemble because of the forcing change from 15 to 16 day, due to the mechanical blending which will mix different weather conditions from the low- and high-resolution meteorological data. However, overall as an ensemble of 51 scenarios, the blending not expected to lead to any larger discontinuities.
- Number of ensemble members: 51 ensemble members (one unperturbed and 50 perturbed) to represent the equally likely forecast scenarios of the future.
- River resolution: 1 arcmin (~1.5 km) in EFAS abd 3 arcmin (~5 km) in GloFAS .
- Run frequency: Forecasts are generated daily at 00 UTC.
- Lead time: 45 days (1080 hours). Only 45 days, as although the low-resolution sub-seasonal meteo forecasts run out to 46 days, we can only rely on the 1-day-old (yesterday's) run, which means we can only run the simulations to 45 days ahead.
- Forecast steps: 6-hourly in EFAS and 24-hourly in GloFAS.
- Forecast hydrological initialisation: From a fillup simulation forced with the shortest-range ENS-Control (unperturbed member of the ECMWF ensemble forecast) meteorological conditions.
Component-2. Reforecasts
The sub-seasonal products rely on range-dependent climatologies that change with the forecast lead time. The climatologies are produced from a large set of hydrological reforecasts. In the following, we describe the characteristics of these reforecast simulations. Where appropriate, the difference between EFAS and GloFAS is specified. If there is no EFAS/GloFAS mentioned, then the method is identical between the two systems:
- Hydrological model used: LISFLOOD (LINK!)
- Meteorological forcing used: the combination of the 9km (horizontal resolution) ECMWF ensemble forecasts (LINK!) and the 36km ECMWF sub-seasonal forecasts (LINK!) from the same run
- The low-resolution sub-seasonal and high-resolution medium-range forcings are taken from the same forecast run date. The timing of the availability of the low-resolution forecasts is not an issue here, as these reforecasts are only produced retrospectively without any time constraint.
- The high- and low-resolution forcing is currently combined by a simple mechanical blending by using the high resolution meteorological forcing for days 1-15, while the low-resolution meteorological forcing for days 16-46, for each of the 11 ensemble members.
- The blending can create inconsistencies locally over very complex orographical areas, due to the resolution change at day15, and also there could be some smaller inconsistencies between the ensemble because of the forcing change from 15 to 16 day, due to the mechanical blending which will mix different weather conditions from the low- and high-resolution meteorological data. However, overall as an ensemble of 11 scenarios, this will not be expected to lead to any larger discontinuities.
- Number of ensemble members: 11 ensemble members (one unperturbed and 10 perturbed) to represent the equally likely forecast scenarios of the future.
- River resolution: 1 arcmin (~1.5 km) in EFAS and 3 arcmin (~5 km) in GloFAS.
- Run frequency: Forecasts are generated always for the past 20 years. Before 12 Nov 2024, they were generated twice-weekly on Mondays and Thursdays (at 00 UTC), while from 12 Nov 2024 they are generated on given days of the months, i.e. 1, 5, 9, 13, 17, 21, 25 and 29 (excluding 29 Feb).
- Lead time: 46 days (1104 hours).
- Forecast steps: 6-hourly in EFAS and 24-hourly in GloFAS.
- Forecast hydrological initialisation: From the monitoring hydrological simulation, forced with gridded meteorological observations in EFAS and ERA5 meteorological reanalysis data in GloFAS.
Component-3. Climatologies
The sub-seasonal products rely on range-dependent climatologies, that change with the forecast lead time, and which are produced from the hydrological reforecasts. The climatologies will give the reference point for the different anomaly categories applied in the sub-seasonal range. These reference points are some of the specific quantiles from the climate distribution, such as the 10th and 90th percentile values. In the following we describe the main characteristics of the climatologies. Where appropriate, the difference between EFAS and GloFAS is specified. If there is no EFAS/GloFAS mentioned, then the method is identical between the two systems:
- We currently produce climate files for each reforecast run date, so in total 8*12-1 = 95 dates in a calendar year with 1/5/9/13/17/21/25/29 of each month, excluding 29 Feb.
- For each of these climate dates, there will be climate files for each possible daily lead time of the sub-seasonal range. Here, not only calendar weeks are considered, but all possible 7-day lead times, starting from days1-7, then days2-8, ..., out to days 40-46 (40 possible lead times). This way, the weekly mean climatology for all possible lead times will be available, and so for each real time forecast the right climatology can be used, with the correct lead time in days, depending on which day of the week the real time forecast run happens (i.e. which corresponding climate lead time to choose in order to get to the calendar weeks). For example, if the sub-seasonal forecast run is a Wednesday, then the first lead time will be the following Monday-Sunday and the corresponding climatology will have the lead time of days6-12. However, if the forecast date is on Monday, then the first lead time will be days1-7 in the climatology, etc.
- Climate sample: For the sub-seasonal, we have 20 years of reforecasts with run dates roughly twice a week. For the climate sample, always 3 run dates are used, the actual climate data we generate the climate for and one reforecast date before and after. For example, when generating the climate sample for 15 December 2024, all reforecasts produced for 11, 15 and 19 December will be used in the climate sample from years 2004-2023 (so, 11 Dec 2004, 11 Dec 2025, ... 11 Dec 2023, then 15 Dec 2004, 15 Dec 2025, ..., 15 Dec 2023, then 19 Dec 2004, 19 Dec 2005, ..., 19 Dec 2023). All ensemble members are considered to be independent, and the total climate sample size is 3*20*11 = 660, with reforecast values for each river pixel.
- Climate distribution: Climate percentiles are produced from 1 to 99, where the 1st percentile is the value that is exceeded 99% of the time, while the 99th percentile will be the value the reforecasts will exceed only 1% of the time. These climate percentiles will be specific to 40 possible lead times from days1-7 to days 40-46 and similarly specific to all reforecast run dates.
Generation of the forecast anomaly and uncertainty signal
In a sub-seasonal forecast, especially at the the longer ranges, the day-to-day variability of the river flow, with prediction of the actual expected flood severities, can not be expected due to the very high uncertainties. What is possible, is to rather give an indication of the river discharge anomalies and confidence in those predicted anomalies. As the forecast range increases, the uncertainty will also generally increase and with it the sharpness of the forecast will gradually decrease and more and more often the forecast is just going to show the climatologically expected conditions with some possible positive or negative shift.
The generation of the sub-seasonal forecast signal is reflective of this and was designed to deliver a simple to understand categorical information on the anomalies and uncertainties present in the forecast, relative to the underlying weekly-mean-discharge-based climatology. The methodology to compute the anomaly and uncertainty information for the weekly mean sub-seasonal ensemble forecast is described on the page below. This page is generic and describes the procedure for any river pixel and for both the sub-seasonal and seasonal systems.
Sub-seasonal prodcuts
There are two sub-seasonal layers available on the EFAS and GloFAS websites, listed below:
Product no-1: Seasonal outlook
This product highlights the forecast signal on the rivers, including all river pixels above 50 km2 in EFAS and above 250 km2 in GloFAS. The forecast signal is indicated by colouring. The colours represent the forecast anomaly and uncertainty categories, with 5 anomaly and 3 uncertainty sub-categories, in total with 15 different types of forecast signal. Each (large enough area) river pixel will be coloured all the time, as there is always a forecast signal, even a no signal (i.e. perfectly normal condition) is going to be indicated.
Each forecast lead time is going to be individually plotted in the layer, with the control panel allowing the option to navigate/animate, the users being able to go back and force within the forecast horizon and check each forecast weekly lead time.
Details about the layer can be found in the generic description of the river network summary layer for both the sub-seasonal and seasonal, as the structure and most features are the same across the two systems here: Placeholder sub-seasonal and seasonal forecast products
Product no-2: Seasonal outlook - basins
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