• Title of article

    Bayesian statistical data assimilation for ecosystem models using Markov Chain Monte Carlo

  • Author/Authors

    Michael Dowd، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2007
  • Pages
    18
  • From page
    439
  • To page
    456
  • Abstract
    This study considers advanced statistical approaches for sequential data assimilation. These are explored in the context of nowcasting and forecasting using nonlinear differential equation based marine ecosystem models assimilating sparse and noisy non-Gaussian multivariate observations. The statistical framework uses a state space model with the goal of estimating the time evolving probability distribution of the ecosystem state. Assimilation of observations relies on stochastic dynamic prediction and Bayesian principles. In this study, a new sequential data assimilation approach is introduced based on Markov Chain Monte Carlo (MCMC). The ecosystem state is represented by an ensemble, or sample, from which distributional properties, or summary statistical measures, can be derived. The Metropolis-Hastings based MCMC approach is compared and contrasted with two other sequential data assimilation approaches: sequential importance resampling, and the (approximate) ensemble Kalman filter (including computational comparisons). A simple illustrative application is provided based on a 0-D nonlinear plankton ecosystem model with multivariate non-Gaussian observations of the ecosystem state from a coastal ocean observatory. The MCMC approach is shown to be straightforward to implement and to effectively characterize the non-Gaussian ecosystem state in both nowcast and forecast experiments. Results are reported which illustrate how non-Gaussian information originates, and how it can be used to characterize ecosystem properties.
  • Keywords
    Monte Carlo , prediction , Ensemble Kalman filter , Ecological statistics , Sequentialimportance resampling , Stochastic models , MCMC , Particle filters , Non-Gaussian , Marine ecosystem models , data assimilation , State space models , differential equations
  • Journal title
    Journal of Marine Systems
  • Serial Year
    2007
  • Journal title
    Journal of Marine Systems
  • Record number

    746254