MESYSYCOFeb 28, 2017

The Ensemble Kalman Filter: A Signal Processing Perspective

arXiv:1702.08061100 citationsh-index: 66
Originality Synthesis-oriented
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It bridges a gap between geoscience and signal processing by making the EnKF accessible to signal processing researchers, enabling scalable filtering for high-dimensional sensor data.

This review paper introduces the ensemble Kalman filter (EnKF) to the signal processing community, deriving it in a Kalman filter framework without geoscientific jargon, and providing simulation examples and an extensive literature survey to facilitate adoption and new research directions.

The ensemble Kalman filter (EnKF) is a Monte Carlo based implementation of the Kalman filter (KF) for extremely high-dimensional, possibly nonlinear and non-Gaussian state estimation problems. Its ability to handle state dimensions in the order of millions has made the EnKF a popular algorithm in different geoscientific disciplines. Despite a similarly vital need for scalable algorithms in signal processing, e.g., to make sense of the ever increasing amount of sensor data, the EnKF is hardly discussed in our field. This self-contained review paper is aimed at signal processing researchers and provides all the knowledge to get started with the EnKF. The algorithm is derived in a KF framework, without the often encountered geoscientific terminology. Algorithmic challenges and required extensions of the EnKF are provided, as well as relations to sigma-point KF and particle filters. The relevant EnKF literature is summarized in an extensive survey and unique simulation examples, including popular benchmark problems, complement the theory with practical insights. The signal processing perspective highlights new directions of research and facilitates the exchange of potentially beneficial ideas, both for the EnKF and high-dimensional nonlinear and non-Gaussian filtering in general.

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