1 / 6

MLEF Applications to Parameter Estimation

MLEF Applications to Parameter Estimation. Dusanka Zupanski CIRA/Colorado State University Fort Collins, Colorado. CG/AR Research Progress Meeting August 16, 2005. Dusanka Zupanski, CIRA/CSU Zupanski@CIRA.colostate.edu. OUTLINE. Major sources of forecast uncertainty

Download Presentation

MLEF Applications to Parameter Estimation

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. MLEF Applications to Parameter Estimation Dusanka Zupanski CIRA/Colorado State University Fort Collins, Colorado CG/AR Research Progress Meeting August 16, 2005 Dusanka Zupanski, CIRA/CSU Zupanski@CIRA.colostate.edu

  2. OUTLINE • Major sources of forecast uncertainty • Initial Conditions and Parameter estimation • Conclusions and future work Dusanka Zupanski, CIRA/CSU Zupanski@CIRA.colostate.edu

  3. Major sources of forecast uncertainty • Initial conditions • Model errors (e.g., errors in dynamical equations, errors due to unresolved scales) • Parametric errors (errors in empirical parameters) • Forcing errors • Boundary conditions (e.g., lateral boundaries) • These uncertainties are not independent!  • All sources of uncertainty should be taken into account simultaneously within a unified mathematical approach.  • Verified analysis and forecast uncertainty

  4. Initial Conditions and Parameter estimation RAMS (non-hydrostatic) model Korteweg-de Vries-Burgers model(KdVB) Nstate =101+1Nens =102Nobs =101 Nstate =54000+1Nens =50Nobs =7200 The method is applicable to simple and complex models. Dusanka Zupanski, CIRA/CSU Zupanski@CIRA.colostate.edu

  5. CONCLUSIONS AND FUTURE WORK • Unified methodologies for estimating all major sources of analysis and forecast uncertainties are desirable. • Ensemble-based methods, such as the MLEF, can address multiple sources of uncertainties within the same mathematical (probabilistic) framework. • Preliminary results indicate that estimation of initial conditions and empirical parameters works well within the MLEF approach. • Further experiments with time varying empirical parameters and more complex model errors will be performed in the future. • Employ different dynamical models (atmospheric, carbon transport, hydrological, etc.). Dusanka Zupanski, CIRA/CSU Zupanski@CIRA.colostate.edu

More Related