星载雷达风传感器(raws)

R.K. Moore, M. Stuart, W. Xin, T. Propp
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引用次数: 5

摘要

如果能够获得全球高空风的信息,全球大气环流模型和天气预报将会得到改善。准确的天气预报对农业、航运、空中交通和许多其他领域都很重要。全球气候系统模式非常重要。目前的全球大气模式使用压力测量和热力学特性来计算风的影响,用于数值天气预报(NWP)模式。NWP模式的输入是不同高度的温度、压力和风速。显然,直接的风测量可以显著改善NWP模型的性能。堪萨斯大学的雷达风测深仪(RAWS)项目是一项研究空间雷达系统设计的可行性和权衡,以测量风矢量。这可以通过测量云和雨从三个或更多点返回的多普勒频移并计算风矢量的分量来完成。迄今为止,RAWS研究使用的是经过频率和灵敏度初步研究后选择的候选系统。选择两个频率,10 GHz和35 GHz,可以对云有更高的灵敏度,对雨有更多的穿透能力。在过去的一年里,我们致力于对这两个频率的信噪比(SNR)进行建模。在适当的雷达方程中使用云后向散射和衰减模型来确定信噪比与云穿透深度的关系。计算假定除了大气衰减外,接收和传输的损失也是合理的。我们发现冰云的信噪比比之前计算的要高,但一些水云的信噪比比之前计算的要低。在信噪比计算中的一个主要问题是水滴大小分布的选择。虽然Xin使用了几种分布(例如对数正态、Khrigian和Mazin),但今年我们使用了Deirmendjian云模型。生成信噪比与云穿透图以验证候选系统。出现在低海拔云层模型中的雨提供了充足的信噪比,由冰粒组成的高海拔云层也是如此。然而,在一些有云的情况下,我们发现对云的敏感性是边缘的或不充分的。在35 GHz时,两种云模式在150米至1500米的高度上以1至2克/立方米的含水量为特征,产生了足够的信噪比。然而,在含水量为0.5 ~ 4 g/cu m、海拔高达4000 m的其他模式中,信噪比为-3 ~ -23 dB,这主要是由于上层云层的衰减。这些结果加上10ghz时较低的信噪比,导致了对交替频率的研究。这些云下的雨在10千兆赫提供足够的信噪比,在大多数情况下,在千兆赫。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Satellite-Borne Radar Wind Sensor (raws)
Modeling global atmospheric circulations and forecasting the weather would improve if worldwide information on winds aloft were available. Accurate prediction of weather is important to agriculture, shipping, air traffic, and many other fields. Global system models of climate are of great importance. Current global atmospheric models use pressure measurements and thermodynamic properties to calculate the effects of wind for use in Numerical Weather Prediction (NWP) models. Inputs to the NWP models are temperature, pressure and wind velocities at different heights. Clearly direct wind measurements could significantly improve the NWP model performance. The RAdar Wind Sounder (RAWS) program at the University of Kansas is a study of the feasibility and the trade-offs in the design of a space-based radar system to measure wind vectors. This can be done by measuring the Doppler shift of cloud and rain returns from three or more points and calculating the components of the wind vector. The RAWS study to date uses the candidate system selected after preliminary study of frequencies and sensitivities. Two frequencies chosen, 10 and 35 GHz, allow higher sensitivity for clouds and more penetration for rain. The past year was devoted to modeling the signal-to-noise ratio (SNR) achievable for the two frequencies. The determination of SNR versus cloud penetration depth used a cloud backscattering and attenuation model in the appropriate radar equation. Calculations assumed reasonable losses in reception and transmission, in addition to the atmospheric attenuation. We discovered that ice clouds provide a higher SNR than previously calculated, but some water clouds give lower SNRs than we calculated before. One of the primary issues in the SNR calculation was the choice of the drop size distribution. Although Xin used several distributions (e.g., log normal, Khrigian and Mazin), this year we used the Deirmendjian cloud model. SNR versus cloud penetration plots were generated to validate the candidate system. Rain, which appears in the cloud models at the lower altitudes, provides ample SNR, as do the higher clouds composed of ice particles. However, in some cloud situations we found the sensitivity for the clouds was marginal or inadequate. At 35 GHz, two of the cloud models characterized by 1 to 2 g/cu m of water content at altitudes extending from 150 to 1500 meters, produced a sufficient SNR. Other models, however, with water contents ranging from 0.5 to 4 g/cu m and altitudes up to 4000 meters, exhibit SNR of -3 to -23 dB, largely because of attenuation in the upper cloud layers. These results coupled with the lower SNR at 10 GHz, led to an investigation of alternate frequencies. The rain present beneath these clouds provides adequate SNR at 10 GHz, and in most cases, at GHz.
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