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Real-Time ROMS Ensembles and adaptive sampling guidance during ASAP

Real-Time ROMS Ensembles and adaptive sampling guidance during ASAP. Sharanya J. Majumdar RSMAS/University of Miami Collaborators: Y. Chao, Z. Li, J. Farrara, P. Li, P. Lermusiaux, C. Bishop ASAP Hot Wash, 11/1/06-11/3/06. Why Use Ensembles?. To quantify uncertainty in flow

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Real-Time ROMS Ensembles and adaptive sampling guidance during ASAP

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  1. Real-Time ROMS Ensembles and adaptive sampling guidance during ASAP Sharanya J. Majumdar RSMAS/University of Miami Collaborators: Y. Chao, Z. Li, J. Farrara, P. Li, P. Lermusiaux, C. Bishop ASAP Hot Wash, 11/1/06-11/3/06

  2. Why Use Ensembles? • To quantify uncertainty in flow • Degree of confidence in prediction • Probabilistic forecast • Adaptive Sampling • Use ensemble-based error statistics to predict locations in which extra sampling is required • Data Assimilation • Flow-dependent error covariance matrix • Synoptic and Sensitivity Analysis

  3. Progress Prior to ASAP • Software developed at JPL to produce ensembles of 3-nested ROMS • Atmospheric wind stress perturbations • Oceanic initial condition perturbations (breeding) • What we learned (2003-5) • 3-nested ROMS cumbersome (7 forecasts per day) • Realistic atmospheric perturbations produce minimal change in 48-hour ROMS forecast • Higher sensitivity to initial ocean conditions

  4. ROMS ensembles in ASAP • Goal: to provide automated real-time daily ensembles and adaptive sampling guidance • Single-domain ROMS • 1.67km resolution • Lateral boundary conditions provided by average of operational 3-nested ROMS forecast • No atmospheric wind stress perturbations • Initial condition perturbations produced by ‘breeding’ technique • 32-member ensemble

  5. 1-day ROMS ensemble forecast from previous day Forecast perturbations Rescale to yield Analysis Perturbations ROMS Analysis and Forecast New initial ensemble 2-day COAMPS wind forecast 2-day ROMS ensemble forecast Post-process ensemble Variance and ETKF data files and graphics uploaded to OurOcean ETKF adaptive sampling

  6. Timeline • 29 July-10 Aug: added new ensemble members. • 13 Aug-13 Sep: Daily 32-member ROMS ensembles available by 9am PDT on http://ourocean.jpl.nasa.gov/MB06/ • Fully automated.

  7. Ensemble Variance • Prediction of ‘uncertainty’ in a forecast. • Next few slides show 48-h forecast mean and variance fields for ensembles initialized between 22-28 August 2006.

  8. 0m T 0m S 0m u 0m v

  9. 0m T 0m S 0m u 0m v

  10. 0m T 0m S 0m u 0m v

  11. 0m T 0m S 0m u 0m v

  12. 0m T 0m S 0m u 0m v

  13. 0m T 0m S 0m u 0m v

  14. 0m T 0m S 0m u 0m v

  15. Ensemble Transform Kalman Filter (ETKF) adaptive sampling Q: In what location should we collect and assimilate extra observational data, in order to improve an X-hour forecast? (X=0,24) Ensemble Initialization time Adaptive Sampling time Forecast time tv ti to t 24 hours 24 hours

  16. Observe T and S on 23 Aug 2006

  17. Observe T and S on 24 Aug 2006

  18. Observe T and S on 25 Aug 2006

  19. Observe T and S on 26 Aug 2006

  20. Observe T and S on 27 Aug 2006

  21. Observe T and S on 28 Aug 2006

  22. Observe T and S on 29 Aug 2006

  23. Review of Performance • Automation and timely delivery worked well. • Variance and adaptive sampling guidance seemed qualitatively reasonable. • Cut corners: no perturbations in lateral boundary conditions, wind stress, heat flux etc.

  24. The Future: Short Term • Re-run ROMS ensemble for 2003 and 2006 • Using new ROMS reanalysis • Stable analysis error variance? • Is ensemble variance a good predictor of forecast error? • Evaluate ETKF adaptive sampling • Qualitative evaluation of sensitive areas • Quantitative evaluation of whether ETKF can predict reduction in forecast error variance (using ROMS data denial)

  25. Papers to be completed • ROMS ensembles: AOSN-II and ASAP • ETKF adaptive sampling, interpretation and evaluation of guidance • Adaptive sampling review, comparison of ESSE and ETKF • Response of ocean model to changes in atmospheric forcing

  26. The Future: Long Term • Observing System Simulation Experiments • Couple adaptive sampling guidance to AUV survey error metrics (Zhang/Bellingham) • Test hypothetical configurations of glider arrays (Leonard, Lermusiaux) • Work with REMUS AUV (Moline)

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