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A New Neural Network Approach Including First-Guess for Retrieval of Atmospheric Water Vapor, Cloud Liquid Water Path, Surface Temperature and Emissivities Over Land From Satellite Microwave Observations

机译:一种新的神经网络方法,包括从卫星微波观测中获取大气水蒸气,云液态水路径,地表温度和陆地发射率的第一手猜测

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摘要

The analysis of microwave observations over land to determine atmospheric and surface parameters is still limited due to the complexity of the inverse problem. Neural network techniques have already proved successful as the basis of efficient retrieval methods for non-linear cases, however, first-guess estimates, which are used in variational methods to avoid problems of solution non-uniqueness or other forms of solution irregularity, have up to now not been used with neural network methods. In this study, a neural network approach is developed that uses a first-guess. Conceptual bridges are established between the neural network and variational methods. The new neural method retrieves the surface skin temperature, the integrated water vapor content, the cloud liquid water path and the microwave surface emissivities between 19 and 85 GHz over land from SSM/I observations. The retrieval, in parallel, of all these quantities improves the results for consistency reasons. A data base to train the neural network is calculated with a radiative transfer model and a a global collection of coincident surface and atmospheric parameters extracted from the National Center for Environmental Prediction reanalysis, from the International Satellite Cloud Climatology Project data and from microwave emissivity atlases previously calculated. The results of the neural network inversion are very encouraging. The r.m.s. error of the surface temperature retrieval over the globe is 1.3 K in clear sky conditions and 1.6 K in cloudy scenes. Water vapor is retrieved with a r.m.s. error of 3.8 kg/sq m in clear conditions and 4.9 kg/sq m in cloudy situations. The r.m.s. error in cloud liquid water path is 0.08 kg/sq m . The surface emissivities are retrieved with an accuracy of better than 0.008 in clear conditions and 0.010 in cloudy conditions. Microwave land surface temperature retrieval presents a very attractive complement to the infrared estimates in cloudy areas: time record of land surface temperature will be produced.
机译:由于反问题的复杂性,在陆地上进行微波观测以确定大气和地表参数的分析仍然受到限制。神经网络技术已被证明是成功的用于非线性情况的有效检索方法的基础,但是,用于避免方法非唯一性或其他形式的解决方案不规则性问题的变分方法中使用的第一猜测估计值已经上升。现在尚未与神经网络方法一起使用。在这项研究中,开发了一种使用首次猜测的神经网络方法。在神经网络和变分方法之间建立了概念性桥梁。新的神经方法可从SSM / I观测值中检索出陆地上19至85 GHz之间的表面皮肤温度,积分水蒸气含量,云水路径和微波表面发射率。出于一致性原因,并行检索所有这些数量可改善结果。使用辐射传递模型和训练表面神经和大气参数的全球集合来计算训练神经网络的数据库,这些集合是从国家环境预测再分析中心,国际卫星云气候学项目数据以及先前计算的微波发射率图谱中提取的。神经网络反演的结果令人鼓舞。 r.m.s.在晴朗的天空条件下,全球表面温度反演的误差为1.3 K,在多云的情况下为1.6K。以r.m.s.在晴朗条件下的误差为3.8 kg / sq m,在多云情况下的误差为4.9 kg / sq m。 r.m.s.云状液态水路径的误差为0.08 kg / sq m。在清晰的条件下,表面发射率的精度优于0.008,在多云的条件下,精度为0.010。微波地表温度反演为阴天地区的红外估计提供了非常有吸引力的补充:将产生地表温度的时间记录。

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