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Microwave radiometric technique to retrieve vapor, liquid and ice. II. Joint studies of radiometer and radar in winter clouds

机译:微波辐射技术可回收蒸气,液体和冰。二。冬季云辐射计与雷达的联合研究

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For pt.I see ibid., vol.35, no.2, p.224-36 (1997). A neural network-based retrieval technique is developed to infer vapor, liquid, and ice columns using two- and three-channel microwave radiometers. Neural network-based inverse scattering methods are capable of merging various data streams in order to retrieve microphysical properties of clouds and precipitation. The method is calibrated using National Oceanic and Atmospheric Administration (NOAA) results in a cloud-free condition. The performance of two- and three-channel neural network-based techniques is verified by independent NOAA estimates. The estimates of vapor and liquid agree with NOAA values. In the presence of ice, the liquid estimates deviated from NOAA's estimates. One of the major contributions of the three-channel radiometer is the estimation of ice in a winter cloud. The three-channel radiometer not only improves estimates of vapor and liquid, but also retrieves the ice column. Passive remote sensing can be ameliorated with the help of active remote sensing methods. The three-channel radiometer is used for estimating columnar contents of vapor, liquid, and ice in a cloud. It is shown that vertical profiles of median size diameter, number concentration, liquid water content, and ice water content can be inferred by combining radar reflectivity and radiometer observations. The combined remote sensor method is applied to Winter Icing and Storms Project (WISP) data to obtain detailed microphysical properties of clouds and precipitation. The authors also derived Z- Ice Water Content (IWC) and Z- Liquid Water Content (LWC) relationships and they are consistent with the earlier results.
机译:关于第一部分,见同上,第35卷,第2期,第224-36页(1997年)。开发了基于神经网络的检索技术,以使用两通道和三通道微波辐射计来推断蒸气,液体和冰柱。基于神经网络的逆散射方法能够合并各种数据流,以检索云层和降水的微物理特性。使用国家海洋和大气管理局(NOAA)校准的方法在无云条件下进行了校准。独立的NOAA估算值验证了基于两通道和三通道神经网络的技术的性能。蒸气和液体的估计值与NOAA值一致。在有冰的情况下,液体估算值与NOAA的估算值有偏差。三通道辐射计的主要贡献之一是对冬季云层中冰的估算。三通道辐射计不仅可以改善对蒸气和液体的估计,还可以检索冰柱。可以通过主动遥感方法来改善被动遥感。三通道辐射计用于估算云中蒸气,液体和冰的柱状含量。结果表明,通过结合雷达反射率和辐射计观测值,可以推断出中值粒径,数量浓度,液态水含量和冰水含量的垂直剖面。组合的遥感器方法应用于冬季结冰和暴风雨项目(WISP)数据,以获得云和降水的详细微物理特性。作者还得出了Z-冰水含量(IWC)和Z-液态水含量(LWC)的关系,它们与早期结果一致。

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