An attempt to calibrate the UHF strato-tropospheric radar at Arecibo using NexRad radar and disdrometer data

被引:0
|
作者
Kafando, P
Petitdidier, M
机构
[1] Ouagadougou Univ, Ouagadougou 04, Burkina Faso
[2] Ctr Etudes Environ Terr & Planetaire, Inst Pierre Simon Laplace, F-78140 Velizy Villacoublay, France
关键词
meteorology and atmospheric dynamics; tropical meteorology; remote sensing; instruments and techniques;
D O I
10.5194/angeo-22-4025-2004
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
The goal of this paper is to present a methodology to calibrate the reflectivity of the UHF Strato-Tropospheric (ST) radar located at NAIC in Puerto Rico. The UHF lower relevant altitude is at 5.9 km, the melting layer being at around 4.8 km. The data used for the calibration came from the observations of clouds, carried out with Strato-Tropospheric dual-wavelength (UHF and VHF) radars and a disdrometer; those instruments being located on the NAIC site in Arecibo, Puerto Rico. The National Weather Service operates other instruments like the radiosondes and the NexRad Radar in other sites. The proposed method proceeds in two steps. The first consists of the comparison between the NexRad reflectivity and the reflectivity computed from the drop size distributions measured by the disdrometer for one day with a noticeable rainfall rate. In spite of the distance of both instruments, the agreement between the reflectivities of both instruments is enough good to be used as a reference for the UHF ST radar. The errors relative at each data set is found to be 2.75 dB for the disdrometer and 4 dB for the NexRad radar, following the approach of Hocking et al. (2001). The inadequacy between the two sampled volume is an important contribution in the errors. The second step consists of the comparison between the NexRad radar reflectivity and the UHF non-calibrated reflectivity at the 4 altitudes of common observations during one event on 15 October 1998. Similar features are observed and a coefficient is deduced. An offset around 4.7 dB is observed and the correlation factor lies between 0.628 and 0.730. According to the errors of the data sets, the precision on the calibration is of the order of 2 dB. This method works only when there are precipitation hydrometeors above the NAIC site. However, the result of the calibration could be applied to other data obtained during the campaign, the only constraint being the same value of the transmitter power.
引用
收藏
页码:4025 / 4034
页数:10
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