1 / 8

Seasonal to Decadal Predictability

Seasonal to Decadal Predictability. presented by Andrew Wittenberg with Tony Rosati, Shaoqing Zhang, You-Soon Chang, Rich Gudgel, Bill Stern, Tom Delworth, Gabe Vecchi, Whit Anderson, Fanrong Zeng, Rong Zhang. Key Questions.

judson
Download Presentation

Seasonal to Decadal Predictability

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Seasonal to Decadal Predictability presented by Andrew Wittenberg with Tony Rosati, Shaoqing Zhang, You-Soon Chang, Rich Gudgel, Bill Stern, Tom Delworth, Gabe Vecchi, Whit Anderson, Fanrong Zeng, Rong Zhang

  2. Key Questions • What seasonal-to-decadal predictability exists within the climate system? • What mechanisms impart predictability? • internal variability (e.g. ENSO, AMOC; slow ocean adjustment)‏ • natural forcings (solar variability, recent volcanoes)‏ • anthropogenic forcings (GHGs, aerosols) • Dependence on models/obs/initialization systems? • Societal relevance?

  3. Ensemble Coupled Data Assimilation (ECDA)‏ • Temporally-evolving PDF of climate state, subject to observations • Multivariate: maintains physical balance among state variables (T-S, geostrophy)‏ • Nonlinear evolution of climate PDF • Simultaneous adjustment of all components • Coupled initialization: minimizes shock to forecast model • Initial conditions for seasonal-decadal predictions • Validation for predictions and model development • Up-to-date analysis publicly available on GFDL website • http://www.gfdl.noaa.gov/ocean-data-assimilation • Active participation in CLIVAR/GSOP intercomparisons 2008 OAR Outstanding Paper Award: S. Zhang, M. J. Harrison, A. Rosati, and A. Wittenberg (MWR 2007)‏

  4. New assimilation dramatically improves ENSO forecasts NINO3 anomaly correlation 3D-variational assimilation Forecast Lead (months)‏ 1 3 5 7 9 11 0.6 J F M A M J J A S O N D Forecast Start Month Ensemble Coupled Data Assimilation Forecast Lead (months)‏ 1 3 5 7 9 11 GFDL participating in CTB/NCEP/ National MME, IRI and APCC J F M A M J J A S O N D Forecast Start Month

  5. Assimilation research to improve initialization • Multi-model ECDA: to mitigate model biases • Coupled model parameter estimation within ECDA • ECDA in high resolution CGCM • Impact of full-depth ARGO profilers

  6. Decadal potential predictability: Atlantic • How well does assimilation constrain the AMOC? • Sources of AMOC predictability? • Observing system: • Role of various components? • Impact of nonstationarity on AMOC predictability? Idealized “perfect model” experiments: ARGO outperforms XBT network, in both assimilation and forecast skill

  7. GFDL Decadal Prediction Research (in support of IPCC AR5)‏ • Does observational initialization enhance decadal climate projections? • ECDA (for initial conditions )‏ • Coupled reanalysis, 1970-present • “Workhorse” CM2.1 model from IPCC AR4 [2009] • Decadal hindcasts, 1980-present (10 members)‏ • Decadal predictions, 2001 onward (10 members) • Experimental high-res model (if scientifically warranted) [2010] • Decadal predictions, 2001 onward (10 members) • CM3 model for IPCC AR5 [2010, tentative] • Decadal predictions, 2001 onward (10 members)‏

  8. Summary • Developing advanced assimilation using coupled climate models • Detecting climate change, with estimates of uncertainty • Improving understanding of predictability at seasonal-to-decadal time scales • Foundation for development of a NOAA capability for decadal predictions

More Related