Improving short-range ensemble Kalman storm surge forecasting using robust adaptive inflation

by U. Altaf, T. Butler, X. Luo, C. Dawson, T. Mayo, I. Hoteit
Year:2013

Bibliography

Improving short-range ensemble Kalman storm surge forecasting using robust adaptive inflation
U. Altaf, T. Butler, X. Luo, C. Dawson, T. Mayo, and I. Hoteit
Monthly Weather Review, 141, 2705-2720, 2013

Abstract

This paper presents a robust ensemble filtering methodology for storm surge forecasting based on the singular evolutive interpolated Kalman (SEIK) filter, which has been implemented in the framework of the H∞ filter. By design, an H filter is more robust than the common Kalman filter in the sense that the estimation error in the H∞ filter has, in general, a finite growth rate with respect to the uncertainties in assimilation. The computational hydrodynamical model used in this study is the Advanced Circulation (ADCIRC) model. The authors assimilate data obtained from Hurricanes Katrina and Ike as test cases. The results clearly show that the H∞-based SEIK filter provides more accurate short-range forecasts of storm surge compared to recently reported data assimilation results resulting from the standard SEIK filter.

DOI: 10.1175/MWR-D-12-00310.1

Keywords

Climate Modeling Climate Prediction Data Assimilation Ensemble Forecasting Error Analysis Hurricane Ike 2008 Hurricane Katrina 2005 Hydrodynamics Kalman Filter Storm Surge
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