4.6 Article

Ensemble Kalman Methods for High-Dimensional Hierarchical Dynamic Space-Time Models

Journal

JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
Volume 115, Issue 530, Pages 866-885

Publisher

AMER STATISTICAL ASSOC
DOI: 10.1080/01621459.2019.1592753

Keywords

Data assimilation; Geoscience applications; Gibbs sampler; Particle filter; Spatio-temporal statistics; State-space models

Funding

  1. National Science Foundation (NSF) [DMS-1521676]
  2. NSF CAREER Grant [DMS-1654083]
  3. NSF through the National Science Foundation Census Research Network program [SES-1132031]

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We propose a new class of filtering and smoothing methods for inference in high-dimensional, nonlinear, non-Gaussian, spatio-temporal state-space models. The main idea is to combine the ensemble Kalman filter and smoother, developed in the geophysics literature, with state-space algorithms from the statistics literature. Our algorithms address a variety of estimation scenarios, including online and off-line state and parameter estimation. We take a Bayesian perspective, for which the goal is to generate samples from the joint posterior distribution of states and parameters. The key benefit of our approach is the use of ensemble Kalman methods for dimension reduction, which allows inference for high-dimensional state vectors. We compare our methods to existing ones, including ensemble Kalman filters, particle filters, and particle MCMC. Using a real data example of cloud motion and data simulated under a number of nonlinear and non-Gaussian scenarios, we show that our approaches outperform these existing methods. for this article are available online.

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