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An Innovative Calibration Method for the Inversion of Satellite Observations

机译:卫星观测反演的创新标定方法

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Retrieval schemes often use two important components: 1) a radiative transfer model (RTM) inside the retrieval procedure or to construct the learning dataset for the training of the statistical retrieval algorithms and 2) a numerical weather prediction (NWP) model to provide a first guess or, again, to construct a learning dataset. This is particularly true in operational centers. As a consequence, any physical retrieval or similar method is limited by inaccuracies in the RTM and NWP models on whichit is based. In this paper, a method for partially compensating for these errors as part of the sensor calibration is presented and evaluated. In general, RTM/NWP errors are minimized as best as possible prior to the training of the retrieval method, andthen tolerated. The proposed method reduces these unknown and generally nonlinear residual errors by training a separate preprocessing neural network (NN) to produce calibrated radiances from real satellite data that approximate those radiances producedby the "flawed" NWP and RTM models. The final ' 'compensated/flawed'' retrieval assures better internal consistency of the retrieval procedure and then produces more accurate results. To the authors' knowledge, this type of NN model has not been used yet for this purpose. The calibration approach is illustrated here on one particular application: the retrieval of atmospheric water vapor from the Advanced Microwave Scanning Radiometer for Earth Observing System (AMSR-E) and the Humidity Sounder for Brazil (HSB) measurements for nonprecipitating scenes, over land and ocean. Before being inverted, the real observations are "projected" into the space of the RTM simulation space from which the retrieval is designed. Validation of results is performed withradiosonde measurements and NWP analysis departures. This study shows that the NN calibration of the AMSR-E/HSB observations improves water vapor inversion, over ocean and land, for both clear and cloudy situations. The NN calibration is efficient and very general, being applicable to a large variety of problems. The nonlinearity of the NN allows for the calibration procedure to be state dependent and adaptable to specific cases (e.g., the same correction will not be applied to medium-range measurementand to extreme conditions). Its multivariate nature allows for a full exploitation of the complex correlation structure among the instrument channels, making the calibration of each single channel more robust. The procedure would make it possible to project the satellite observations in a reference observational space defined by radiosonde measurements, RTM simulations, or other instrument observational space.
机译:检索方案通常使用两个重要组成部分:1)检索程序内部的辐射传递模型(RTM)或构造用于训练统计检索算法的学习数据集; 2)数值天气预报(NWP)模型以提供第一个猜测或再次构建学习数据集。在运营中心尤其如此。结果,任何物理检索或类似方法都受到其所基于的RTM和NWP模型中的不准确性的限制。在本文中,提出并评估了一种部分补偿这些误差的方法,作为传感器校准的一部分。通常,在训练检索方法之前,RTM / NWP错误应尽可能最小化,然后可以容忍。所提出的方法通过训练一个单独的预处理神经网络(NN)来从真实的卫星数据中生成校准的辐射度,从而减少这些未知且通常为非线性的残留误差,这些数据近似于“有缺陷的” NWP和RTM模型所产生的那些辐射度。最终的“补偿/缺陷”检索可确保检索过程具有更好的内部一致性,然后产生更准确的结果。据作者所知,尚未将这种类型的NN模型用于此目的。在一个特定的应用中说明了这种校准方法:从用于地面观测系统的高级微波扫描辐射计(AMSR-E)和用于巴西的湿度探测器(HSB)的测量中获取陆地和海洋上的大气水蒸气。在反转之前,将实际观测值“投影”到RTM仿真空间的空间中,从该空间中进行检索。通过无线电探空仪测量和NWP分析偏离进行结果验证。这项研究表明,对于晴天和阴天,AMSR-E / HSB观测值的NN校准可改善海洋和陆地上水汽的反演。 NN校准是有效且非常通用的,适用于多种问题。 NN的非线性特性允许校准过程取决于状态并适用于特定情况(例如,相同的校正将不适用于中程测量和极端条件)。它的多变量性质允许充分利用仪器通道之间的复杂相关结构,从而使每个通道的校准更加可靠。该程序将有可能在由探空仪测量,RTM模拟或其他仪器观测空间定义的参考观测空间中投影卫星观测。

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