GAII.05 8 July 2003 - PowerPoint PPT Presentation

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GAII.05 8 July 2003

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Title: GAII.05 8 July 2003


1
Data Assimilation Methods for Characterizing
Radiation Belt Dynamics
E.J. Rigler1, D.N. Baker1, D. Vassiliadis2, R.S.
Weigel1 (1) Laboratory for Atmospheric and Space
Physics University of Colorado at Boulder (2)
Universities Space Research Association NASA /
Goddard Space Flight Center
2
Introduction and Outline
  • Using Data Assimilation (DA) algorithms for
    identification of empirical dynamical systems
  • Finite Impulse Response (FIR) linear prediction
    filters
  • Intuitive model structure
  • Robust and proven predictive capabilities
  • Adaptive System Identification (RLS vs. EKF)
  • Weighted least squares estimates of model
    parameters
  • Tracking non-linear systems with adaptive linear
    models
  • Better Model Structures
  • Multiple input, multiple output (MIMO) models
  • Dynamic feedback and noise models (ARMAX,
    Box-Jenkins)
  • Combining RB state with dynamical model parameters

3
Dynamic Model Identification
4
Why Linear Prediction Filters?
SISO Impulse Response
Operational Forecasts (NOAA REFM)
5
Recursive System Identification
  • RLS minimizes least-squares criterion
    recursively.
  • Forgetting factor (?) allows tracking of
    non-time-stationary dynamic processes.
  • Weighting factor (q) (de)emphasizes certain
    observations.

6
Extended Kalman Filter (EKF)
  • Model parameters can be incorporated into a
    state-space configuration.
  • Process noise (vt) describes time-varying
    parameters as a random walk.
  • Observation error noise (et) measures confidence
    in the measurements.
  • Provides a more flexible and robust
    identification algorithm than RLS.

7
Adaptive Single-Input, Single-Output
(SISO) Linear Filters
EKF-Derived Model Coefficients (w/o
Process Noise)
EKF-Derived Model Coefficients (with
Process Noise)
8
SISO Model Residuals
9
Multiple Input / Output (MIMO)
10
Average Prediction Efficiencies
MIMO PE
EKF-MIMO PE (w/o process noise)
EKF-MIMO PE (with process noise)
11
Alternative Model Structures
  • ARMAX, Box-Jenkins, etc.
  • Adaptive colored noise filters.
  • True dynamic feedback.
  • Better separation between driven and recurrent
    dynamics.

Combining the State and Model Parameters
  • True data assimilation
  • Ideal for on-line, real-time RB specification and
    forecasting.
  • Framework is easily adapted to incorporate
    semi-empirical or physics-based dynamics modules.

12
Acknowledgements
  • Special thanks are extended to Drs. Scot
    Elkington and Alex Klimas for their valuable time
    and feedback.
  • The data used for this study was generously
    provided by the National Space Science Data
    Center (NSSDC) OmniWeb project and the SAMPEX
    data team.
  • This work was supported by the NSF Space Weather
    Program (grant ATM-0208341), and the NASA
    Graduate Student Research Program (GSRP, grant
    NGT5-132).

13
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