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Mixed-phase cloud phase partitioning using millimeter wavelength cloud radar Doppler velocity spectra

机译:使用毫米波波长云雷达多普勒速度谱的混合相云相分割

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Retrieving and quantifying cloud liquid drop contributions to radar returns from mixed-phase clouds remains a challenge because the radar signal is frequently dominated by the returns from the ice particles within the radar sample volume. We present a technique that extracts the weak cloud liquid drop contributions from the total radar returns in profiling cloud radar Doppler velocity spectra. Individual spectra are first decomposed using a continuous wavelet transform, the resulting coefficients of which are used to identify the region in the spectra where cloud liquid drops contribute. By assuming that the liquid contribution to each Doppler spectrum is Gaussian shaped and centered on an appropriate peak in the wavelet coefficients, the cloud liquid drop contribution may be estimated by fitting a Gaussian distribution centered on the velocity of this peak to the original Doppler spectrum. The cloud liquid drop contribution to reflectivity, the volumemean vertical air motion, subvolume vertical velocity variance, and ice particle mean fall speed can be estimated based on the separation of the liquid contribution to the radar Doppler spectrum. The algorithm is evaluated using synthetic spectra produced from output of a state-of-the-art large eddy simulation model study of an Arctic mixed-phase cloud. The retrievals of cloud liquid drop mode reflectivities were generally consistentwith the originalmodel valueswith errors less than a factor of 2. The retrieved volume mean vertical air velocities reproduced the updraft and downdraft structures, but with an overall bias of approximately -0.06ms~(-1). Retrievals based on Ka-band Atmospheric RadiationMeasurement ProgramZenith Radar observations from Barrow, Alaska, during October 2011 are also presented.
机译:检索和量化混合液滴对雷达返回的云液滴贡献仍然是一个挑战,因为雷达信号通常受雷达样本空间内冰粒返回的支配。我们提出了一种从仿形云雷达多普勒速度谱中的总雷达回波中提取弱云液滴贡献的技术。首先使用连续小波变换分解各个光谱,将其所得系数用于识别光谱中云滴的作用区域。通过假设液体对每个多普勒频谱的贡献是高斯形状并以小波系数中的适当峰值为中心,可以通过将以该峰值的速度为中心的高斯分布拟合到原始多普勒频谱来估计云液滴贡献。可以基于对雷达多普勒频谱的液体贡献的分离来估计云液滴对反射率,平均空气垂直运动量,子体积垂直速度方差和冰粒平均下降速度的贡献。使用从北极混合相云的最新大型涡流仿真模型研究的输出中产生的合成光谱对算法进行评估。云滴模式反射率的反演一般与原始模型值一致,误差小于2倍。反演的体积平均垂直风速再现了上下气流的结构,但总体偏差约为-0.06ms〜(-1) )。还介绍了基于Ka波段大气辐射测量程序的取回记录,该记录是2011年10月在阿拉斯加巴罗的Zenith Radar观测结果。

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