-
Abstract
An observation localization scheme is introduced into an ensemble-based three-dimensional variational
(3DVar) assimilation method based on the singular value decomposition technique (SVD-En3DVar) to im-
prove assimilation skill. A point-by-point analysis technique is adopted in which the weight of each obser-
vation decreases with increasing distance between the analysis point and the observation point. A set of
numerical experiments, in which simulated Doppler radar data are assimilated into the Weather Research
and Forecasting (WRF) model, is designed to test the scheme. The results are compared with those ob-
tained using the original global and local patch schemes in SVD-En3DVar, neither of which includes this
type of observation localization. The observation localization scheme not only eliminates spurious analysis
increments in areas of missing data, but also avoids the discontinuous analysis fields that arise from the local
patch scheme. The new scheme provides better analysis fields and a more reasonable short-range rainfall
forecast than the original schemes. Additional forecast experiments that assimilate real data from 10 radars
indicate that the short-term precipitation forecast skill can be improved by assimilating radar data and the
observation localization scheme provides a better forecast than the other two schemes.
-
-
Citation
XU Daosheng, SHAO Aimei, QIU Chongjian. 2012: Doppler Radar Data Assimilation with a Local SVD-En3DVar Method. Journal of Meteorological Research, 26(6): 717-734.
XU Daosheng, SHAO Aimei, QIU Chongjian. 2012: Doppler Radar Data Assimilation with a Local SVD-En3DVar Method. Journal of Meteorological Research, 26(6): 717-734.
|
XU Daosheng, SHAO Aimei, QIU Chongjian. 2012: Doppler Radar Data Assimilation with a Local SVD-En3DVar Method. Journal of Meteorological Research, 26(6): 717-734.
XU Daosheng, SHAO Aimei, QIU Chongjian. 2012: Doppler Radar Data Assimilation with a Local SVD-En3DVar Method. Journal of Meteorological Research, 26(6): 717-734.
|
Export: BibTex EndNote
Article Metrics
Article views:
PDF downloads:
Cited by: