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FLDAS-Forecast

The Famine Early Warning Systems Network (FEWS NET) Land Data Assimilation System (FLDAS) Forecast model (FLDAS-Forecast, Hazra et al. 2023) is run over Africa and the Middle East and produces monthly forecasts at 0.25° spatial resolution out to 5 months over Africa and the Middle East (-20 to 60°E, -40 to 40°N). Forecasts are typically available by the 15th of the first forecast month. As a custom instance of the NASA Hydrological Forecast and Analysis System (NHyFAS, Arsenault et al. 2020), FLDAS-Forecast uses land surface models of Noah-MP (version 3.6) and NASA’s Catchment Model (CLSM, version 2.5), and HyMAP2 routing within the NASA Land Information System (LIS). Initial conditions for the FLDAS-Forecast model are generated by forcing the models with CHIRPS precipitation and MERRA-2 non-precipitation meteorological datasets. Two types of forecasts are generated: 1) North American Multi-Model Ensemble (NMME)-based forecasts using NMME precipitation and GEOS version 2 non-precipitation meteorological forecasts and 2) ensemble streamflow prediction method-based forecasts using CHIRPS and MERRA-2 meteorological datasets. FLDAS-Forecast hindcast and retrospective model outputs are available from 1982 to present by request. All indices (e.g., anomalies, percentiles, terciles) are calculated relative to January 1, 1991-December 31, 2020 hindcast climatology, with the exception of streamflow percentiles and terciles. Streamflow percentiles and terciles are calculated relative to January 1, 1991-December 31, 2020 retrospective model output. Please refer to the FLDAS Model Specification webpage for additional details on the FLDAS-Forecast system.

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Disclaimer:  The below figures and forecast information are provisionally provided as experimental, and these products are for reference only and at user-own discretion and risk.

Displaying Items 31 - 38 of 38

Precipitation-total: MENA
Forecast for Precipitation-total: MENAForecast for Precipitation-total: MENA

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Precipitation Anomaly (left) and Percentile (right) Forecasts

Variable:
Precipitation - Total
Streamflow : MENA
Forecast for  Streamflow : MENAForecast for  Streamflow : MENAForecast for  Streamflow : MENAForecast for  Streamflow : MENA

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Monthly Streamflow Percentile (upper left), Anomaly (upper right), Standardized anomaly (lower left) and Probability tercile (lower right) Forecasts

Variable:
Streamflow
Root Zone Soil Moisture: MENA
Forecast for  Root Zone Soil Moisture: MENAForecast for  Root Zone Soil Moisture: MENAForecast for  Root Zone Soil Moisture: MENA

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Monthly Root Zone Soil Moisture Percentile (upper left), Anomaly (upper right), and Standardized Anomaly (lower left) Forecasts

Variable:
Root Zone Soil Moisture
Probabilistic Forecasts for Root Zone Soil Moisture: MENA
Forecast for  Probabilistic Forecasts for Root Zone Soil Moisture: MENAForecast for  Probabilistic Forecasts for Root Zone Soil Moisture: MENA

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Monthly Root Zone Soil Moisture Forecast Probabilities for ESP (left) and NMME (right)

The likelihood of departure from normal maps above are based on hydrologic forecast ensembles comprised of 36 members (1982-2017) for ESP and all members for NMME. These maps indicate the forecast probability (in %) of the given hydrologic variable (e.g. root zone soil moisture) being in 'Above Normal' (>67 percentile), 'Normal' (between 33 to 67 percentile) and 'Below Normal' (<33 percentile).

Variable:
Root Zone Soil Moisture
3-Month Aggregate Root Zone Soil Moisture: MENA
Forecast for  3-Month Aggregate Root Zone Soil Moisture: MENAForecast for  3-Month Aggregate Root Zone Soil Moisture: MENAForecast for  3-Month Aggregate Root Zone Soil Moisture: MENA

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3-Month Aggregate Root Zone Soil Moisture Percentile (upper left), Anomaly (upper right), and Standardized Anomaly (lower left) Forecasts

Variable:
Root Zone Soil Moisture
Soil Percent Saturation : MENA
Forecast for  Soil Percent Saturation : MENAForecast for  Soil Percent Saturation : MENA

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Monthly Root Zone Soil (left) and Surface Soil (right) Percent Saturation Forecasts.

Percent saturation is calculated as 100*(volumetric soil moisture)/(volumetric soil porosity).

Variable:
Soil Percent Saturation
Surface Soil Moisture: MENA
Forecast for  Surface Soil Moisture: MENAForecast for  Surface Soil Moisture: MENAForecast for  Surface Soil Moisture: MENA

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Monthly Surface Soil Moisture Percentile (upper left), Anomaly (upper right), and Standardized Anomaly (lower left) Forecasts

Variable:
Surface Soil Moisture
3-Month Aggregate Surface Soil Moisture: MENA
Forecast for 3-Month Aggregate Surface Soil Moisture: MENAForecast for 3-Month Aggregate Surface Soil Moisture: MENAForecast for 3-Month Aggregate Surface Soil Moisture: MENA

Click on above figure for larger image.

3-Month Aggregate Surface Soil Moisture Percentile (upper left), Anomaly (upper right), and Standardized Anomaly (lower left) Forecasts

Variable:
Surface Soil Moisture

Contact: Abheera Hazra (UMD/ESSIC; NASA/GSFC), Kristi Arsenault (SAIC; NASA/GSFC) or S. Shukla (UCSB) for more information.

References

  • Arsenault, K.R., and Coauthors, 2020: The NASA hydrological forecast system for food and water security applications. Bull. Amer. Meteor. Soc., 101, E1007–E1025, https://doi.org/10.1175/BAMS-D-18-0264.1.
  • Shukla, S., and Coauthors, 2020: Improving early warning of drought-driven food insecurity in southern Africa using operational hydrological monitoring and forecasting products. Nat. Hazards Earth Syst. Sci., 20, 1187-1201, https://doi.org/10.5194/nhess-20-1187-2020

Original project details: The original project, Forecasting for Africa and the Middle East (FAME), was funded by the NASA Applied Sciences Program and included partners from NASA, USAID, USGS, UCSB, Johns Hopkins University, ICBA, and DoD/ERDC.  Details of the original project can be found here.