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Sub-seasonal to Seasonal Prediction (1-90 days) - A Seamless Approach

Sub-seasonal to Seasonal Prediction (1-90 days) - A Seamless Approach. Gilbert Brunet WWRP/JSC Chair Environment Canada. WWRP/THORPEX, WCRP Kick off meeting on Sub-seasonal to Seasonal Prediction (Geneva, 2-3 December 2011). An Earth-System Prediction Initiative.

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Sub-seasonal to Seasonal Prediction (1-90 days) - A Seamless Approach

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  1. Sub-seasonal to Seasonal Prediction (1-90 days) - A Seamless Approach Gilbert Brunet WWRP/JSC Chair Environment Canada WWRP/THORPEX, WCRP Kick off meeting on Sub-seasonal to Seasonal Prediction (Geneva, 2-3 December 2011)

  2. An Earth-SystemPrediction Initiative • An Earth-System Prediction Initiative for the Twenty-First Century (Shapiro et al.) • Addressing the Complexity of the Earth System (Nobre et al.) • Toward a New Generation of World Climate Research and Computing Facilities (Shukla et al.) • Collaboration of the Weather and Climate Communities to Advance Subseasonal-to-Seasonal Prediction (G. Brunet, M. Shapiro, B. Hoskins, Mitch Moncrieff, Randal Dole, G. Kiladis, B. Kirtman, A. Lorenc, R. Morss, S. Polavarapu, D. Rogers, J. Schaake and J. Shukla

  3. Centres participating in the WMO Long Range Forecast Verification Systemhttp://www.bom.gov.au/wmo/lrfvs/index.html • WMO Commission for Basic System prediction time range definitions • MEDIUM-RANGE WEATHER FORECASTING: • BEYOND 72 HOURS AND UP TO 240 HOURS DESCRIPTION OF WEATHER PARAMETERS • EXTENDED-RANGE WEATHER FORECASTING: • BEYOND 10 DAYS AND UP TO 30 DAYS DESCRIPTION OF WEATHER PARAMETERS, USUALLY AVERAGED AND EXPRESSED AS A DEPARTURE FROM CLIMATE VALUES FOR THAT PERIOD. • LONG-RANGE FORECASTING: • FROM 30 DAYS UP TO TWO YEARS • CLIMATE FORECASTING: • BEYOND TWO YEARS

  4. Predicting the Low Frequency Variability • The low frequency variability (AO, PNA, Atlantic blockings, …) controls significantly the distribution of high-impact weather (like the Atlantic storm track and equatorial westerly duct) • Baroclinic variability (80%) Low frequency variability • (dim. ~ 12, 20%) Medium-range forecasting the 500hPa height with the ECMWF deterministic prediction system Extended-range forecasting of the NAO with the Canadian GEM Monthly ensemble prediction System

  5. Collaboration of the Weather and Climate Communities to Advance Subseasonal-to-Seasonal Prediction: Research Issues • The multi-scale organisation of tropical convection and its two-way interaction with the global circulation; • Data assimilation for coupled models as a prediction and validation tool for weather and climate research; • Seamless weather/climate prediction with Multi-model Ensemble Prediction Systems (MEPSs); • Utilization of sub-seasonal predictions for social and economic benefits.

  6. % Forecasting-system improvement at ECMWF Updated from Simmons & Hollingsworth (2002) Acknowledgements to A. Simmons Historical trend % Historical re-forecast project trend using re-analyses

  7. North America Z500 RMSE for the control experiments and latest upgrades of the MSC global analysis-forecast system (January and February 2007) Acknowledgements to S. Laroche

  8. Data assimilation for coupled models as a prediction and validation tool for weather and climate research • Promote research towards the development of a composite data assimilation system, applying different assimilation steps to different scales (weather to climate time-scales) and components (atmosphere, land, ocean, atmospheric composition) of the total Earth system model; • Promote the need to test climate models in a deterministic prediction mode, as started within Transpose-AMIP. The seasonal prediction time frame provides a valuable opportunity to do this; • Promote the use of advanced data assimilation methodologies for parameter estimation, both in weather and climate models, through close collaboration with model developers to interpret assimilation results; • Promote interdisciplinary research on data assimilation methods appropriate for the next generation of re-analysis projects aimed at developing historical records for climate studies.

  9. Seamless weather/climate prediction with Ensemble Prediction Systems(EPSs) • Terms of reference for collaboration between WCRP CLIVAR Climate-system Historical Forecast Project (CHFP) and the THORPEX Interactive Grand Global Ensemble (TIGGE) must be establish for experimentation and data sharing for sub-seasonal to seasonal historical forecasts ( weeks to season) including the required infrastructure. • The requirements for both ensemble prediction methods and greatly increased spatial resolution imply substantial future requirements for computational power and for data storage and delivery capacity. • Development and use of ensemble based modeling methods in order to improve probabilistic estimates of the likelihood of high-impact events.

  10. MJO connection to Canadian surface air temperature: high-impact weather? Lagged winter SAT anomaly in Canada Significant warm anomaly in central and eastern Canada 1-2 pentads after MJO phase 3

  11. Utilization of Sub-Seasonal and Seasonal Predictions for Social and Economic Development • A need for closer ties between weather and climate research: • Understanding how information at the weather/climate interface, including uncertainty, connects with decision-making • There is also a great need for much easier access to forecast data by the user community. These need to be available in special user-oriented products. How to achieve this service? • The post-processing techniques that are needed by many users may require an archive of past forecasts (e.g. for water cycle applications). Some user applications require an archive of re-forecasts from fixed models for periods as long as 20 years or more.

  12. WWRP

  13. Sub-seasonal to seasonal prediction The Report from the Workshop on “Sub-seasonal to Seasonal Prediction” (Met Office, Exeter 1 to 3 December 2010) has been published to the web (http://www.wmo.int/pages/prog/arep/wwrp/new/documents/recommendations_final.pdf • The major Workshop recommendation was that a Project for sub-seasonal to seasonal prediction research should be established • Planning Group should include representatives from WWRP-THORPEX, WCRP, CBS and CCl and their relevant programme bodies. • The first task for the Planning Group should be the preparation of an Implementation Plan , which is consistent with the contents of the Workshop Report and Recommendations. • 9

  14. Sub-seasonal contd. The Implementation Plan should give high priority to: • Sponsorship of a few international research activities • The establishment of collaboration and co-ordination between operational centres undertaking sub-seasonal prediction to: • ensure, where possible, consistency between operational approaches to enable the production of data bases of operational sub-seasonal predictions to support the application of standard verification procedures and a wide-ranging programme of research • Facilitating the wide-spread research use of the data collected for the CHFP - Climate-system Historical Forecast Project (and its associate projects), TIGGE and YOTC for research • The establishment of a series of regular Workshops on sub-seasonal to seasonal prediction • 10

  15. Sub-seasonal to Seasonal Prediction Initiative Planning Group • Planning Group Co-Chair 1 Frédéric Vitart ECMWF (WWRP) Co-Chair 2 Andrew Robertson IRI (WCRP) Arun Kumar CPC/NCEP Harry Hendon CAWCR CSIRO/BoM Yuhei Takaya JMA Hai Lin EC Alberto Arribas UKMO June-Yi Lee IPRC Duane Waliser NASA Hyun-Kyung Kim KMA Ben Kirtman IGES/COLA • Liaison Group Carolina Vera WCRP JSC Liaison Richard Graham UKMO CBS12 Jean-Pierre Ceron Meteo-France CCL Barbara Brown SERA/Verification • Consultant David Anderson

  16. Thank You Merci

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