Abstract
Abstract. Water vapor plays an important role in various scales of weather processes.
However, there are limited means to accurately describe its three-dimensional
(3-D) dynamical changes. The data assimilation technique and the Global
Navigation Satellite System (GNSS) tomography technique are two of the
limited means. Here, we conduct an interesting comparison between the GNSS
tomography technique and the Weather Research and Forecasting Data
Assimilation (WRFDA) model (a
representative of the data assimilation models) in retrieving wet
refractivity (WR) in the Hong Kong area during a wet period and a dry period.
The GNSS tomography technique is used to retrieve WR from the GNSS slant wet
delays. The WRFDA is used to
assimilate the zenith tropospheric delay to improve the background data. The
radiosonde data are used to validate the WR derived from the GNSS tomography,
the WRFDA output, and the background data. The root mean square
(rms) of the WR
derived from the tomography results, the WRFDA output, and the background
data are 6.50, 4.31, and 4.15 mm km−1 in the wet period. The rms
becomes 7.02, 7.26, and 6.35 mm km−1 in the dry period. The lower
accuracy in the dry period is mainly due to the sharp variation of WR in the
vertical direction. The results also show that assimilating GNSS ZTD into the
WRFDA only slightly improves the accuracy of the WR and that the WRFDA WR is
better than the tomographic WR in most cases. However, in a special
experimental period when the water vapor is highly concentrated in the lower
troposphere, the tomographic WR outperforms the WRFDA WR in the lower
troposphere. When we assimilate the tomographic WR in the lower troposphere
into the WRFDA, the retrieved WR is improved.
Subject
Space and Planetary Science,Earth and Planetary Sciences (miscellaneous),Atmospheric Science,Geology,Astronomy and Astrophysics
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