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Research on Retrieval of Atmospheric Temperature and Humidity Profiles from combined Ground-based Microwave Radiometer and Cloud Radar Observations

机译:结合地面微波辐射计和云雷达观测反演大气温度和湿度分布的研究

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摘要

This paper focuses on the retrieval of temperature and relative humidity profiles through combining ground-based microwave radiometer observations with those of millimeter-wavelength cloud radar. The cloud-base height and cloud thickness from the cloud radar were added into the atmospheric profile retrieval process, and a back propagation neural network method was used as the retrieval tool.Because substantial data are required to train a neural network, and microwave radiometer data are insufficient for this purpose, eight years of radiosonde data from Beijing were used as a database. The model MonoRTM was used to calculate the brightness temperature of the same channel as the microwave radiometer. Part of the cloud-base height and cloud thickness in the training dataset was also estimated using the radiosonde data.The accuracy of the results was analyzed by comparing with L-band sounding radar data, and quantified using the mean bias, root-mean-square error and correlation coefficient. The statistical results showed that inversion with cloud information was the optimal method. Compared with the inversion profiles without cloud information, the RMSE values after adding the cloud information were to a varying degree reduced for the vast majority of height layers. These reductions were particularly clear in layers with cloud present. The maximum reduction of RMSE for temperature was 2.2 K, and for the humidity profile was 16 %.
机译:本文将地面微波辐射计观测结果与毫米波云雷达观测结果相结合,着重研究温度和相对湿度分布。将云雷达的云基高度和云厚度添加到大气廓线的检索过程中,并采用反向传播神经网络方法作为检索工具,因为训练神经网络需要大量数据,而微波辐射计数据不足以达到此目的,北京的八年探空资料被用作数据库。 MonoRTM模型用于计算与微波辐射计相同通道的亮度温度。还使用无线电探空仪数据估算了训练数据集中的部分云基高度和云层厚度。通过与L波段探空雷达数据进行比较来分析结果的准确性,并使用平均偏差,均方根平方误差和相关系数。统计结果表明,利用云信息反演是最优方法。与没有云信息的反演剖面相比,绝大多数高度层在添加云信息后的RMSE值均有不同程度的降低。这些减少在存在云的层中尤为明显。对于温度,RMSE的最大减少量为2.2 K,对于湿度曲线,RMSE的最大减少量为16%。

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