E. Nakakita et al., SHORT-TERM RAINFALL PREDICTION METHOD USING A VOLUME SCANNING RADAR AND GRID POINT-VALUE DATA FROM NUMERICAL WEATHER PREDICTION, JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 101(D21), 1996, pp. 26181-26197
A physically based short-term rainfall prediction method, which uses a
volume scanning radar, is extended so that it utilizes grid point val
ues from a numerical weather prediction model as supplementary informa
tion, The original short-term prediction method mainly consists of a c
onceptual rainfall model that can predict rainfall distribution, parti
cularly over mountainous regions, in a qualitative sense. On the other
hand, the grid point values from the numerical weather prediction mod
el, the Japan Spectral Model developed by the Japan Meteorological Age
ncy, are operationally distributed as the grid point value (GPV) data.
In the original short-term prediction method the three-dimensional wi
nd field as well as initial distributions of the air temperature and w
ater vapor were identified using topography and upper air observations
. In the extended method, however, in identifying those initial values
, the information from the GPV data is used instead of the upper air o
bservations in order to accommodate large differences in temporal and
spatial resolution between radar information and upper air observation
s, It is noted that this extended method does not use predicted GPV ra
infall data. The conceptual rainfall model plays the role of bridging
the gap between radar information and numerical weather prediction sca
les. This extended method is applied to a rainfall event which occurre
d in the bai-u season (one of the rainy seasons of Japan) in July 1994
. Results show that for the extended lead time of three and four hours
, prediction of the expanding rainfall area was improved.