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Assimilation of radial velocity and reflectivity data from coastal WSR‐88D radars using an ensemble Kalman filter for the analysis and forecast of landfalling hurricane Ike (2008)
Author(s) -
Dong Jili,
Xue Ming
Publication year - 2012
Publication title -
quarterly journal of the royal meteorological society
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.744
H-Index - 143
eISSN - 1477-870X
pISSN - 0035-9009
DOI - 10.1002/qj.1970
Subject(s) - data assimilation , ensemble kalman filter , environmental science , meteorology , radar , quantitative precipitation forecast , forecast skill , climatology , mesoscale meteorology , rainband , kalman filter , precipitation , computer science , mathematics , statistics , geology , extended kalman filter , geography , telecommunications
Abstract Ensemble Kalman filter (EnKF) assimilation and forecasting experiments are performed for the case of Hurricane Ike (2008), the third most destructive hurricane hitting the USA. Data from two coastal WSR‐88D radars are carefully quality controlled before assimilation. In the control assimilation experiment, reflectivity ( Z ) and radial velocity ( V r ) data from two radars are assimilated at 10 min intervals over a 2 h period shortly before Ike made landfall. A 32‐member forecast ensemble is initialized by introducing both mesoscale and convective‐scale perturbations to the initial National Centers for Environmental Prediction (NCEP) operational global forecast system (GFS) analysis background, and the ensemble spread during the analysis cycles is maintained using multiplicative covariance inflation and posterior additive perturbations. The radar data assimilation results in much improved vortex intensity and structure analysis over the corresponding GFS analysis. Compared with the forecast starting from the GFS analysis, the forecast intensity, track and structure of Ike over a 12 h period are much improved in both deterministic and ensemble forecasts. Assimilation of either V r or Z leads to improvement in the forecasts, with V r data exhibiting much greater impacts than Z data. With the 2 h assimilation window, 30 min assimilation intervals produced results similar to 10 min intervals, while 60 min intervals were found to be too long. The ensemble forecasts starting from the EnKF analyses are found to be mostly better than the corresponding deterministic forecast, especially after ensemble post‐processing, such as probability matching for precipitation. Precipitation equitable threat scores were calculated and compared. Copyright © 2012 Royal Meteorological Society

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