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1D-VAR Retrieval of Temperature and Humidity Profiles From a Ground-Based Microwave Radiometer

机译:从地面微波辐射计检索温度和湿度曲线的1D-VAR

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摘要

A variational method to retrieve profiles of temperature, humidity, and cloud is described, which combines observations from a 12-channel microwave radiometer, an infrared radiometer, and surface sensors with background from shortrange numerical weather prediction (NWP) forecasts in an optimal way, accounting for their error characteristics. An analysis is presented of the error budget of the background and observations, including radiometric, modeling, and representativeness errors. Observation errors of some moisture channels are found to be dominated by representativeness, due to their sensitivity to atmospheric variability on smaller scales than the NWP model grid, whereas channels providing information on temperature in the lowest 1 km are dominated by instrument noise. Profiles of temperature and a novel total water control variable are retrieved from synthetic data using Newtonian iteration. An error analysis shows that these are expected to improve mesoscale NWP, retrieving temperature and humidity profiles up to 4 km with uncertainties of $<$ 1 K and $<$ 40% and 2.8 and 1.8 degrees of freedom for signal, respectively, albeit with poor vertical resolution. A cloud classification scheme is introduced to address convergence problems and better constrain the retrievals. This Bayesian retrieval method can be extended to incorporate observations from other instruments to form a basis for future integrated profiling systems.
机译:描述了一种检索温度,湿度和云剖面的变分方法,该方法以最佳方式将来自12通道微波辐射仪,红外辐射仪和表面传感器的观测与短距离数值天气预报(NWP)预测的背景相结合,考虑其错误特征。对背景和观测的误差预算进行了分析,包括辐射误差,建模误差和代表性误差。由于某些湿度通道对大气变化的敏感性比NWP模型网格小,因此,某些湿度通道的观测误差被认为具有代表性,而提供最低1 km温度信息的通道则受到仪器噪声的支配。使用牛顿迭代从合成数据中检索温度和新颖的总水控制变量。误差分析表明,这些方法有望改善中尺度净现值,检索长达4 km的温度和湿度曲线,不确定度分别为$ <$ 1K和$ <$ 40%,信号的自由度分别为2.8和1.8,垂直分辨率差。引入云分类方案以解决收敛问题并更好地约束检索。该贝叶斯检索方法可以扩展为合并其他仪器的观测结果,从而为将来的集成配置文件系统奠定基础。

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