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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Neural network retrieval of cloud parameters from high-resolution multispectral radiometric data a feasibility study
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Neural network retrieval of cloud parameters from high-resolution multispectral radiometric data a feasibility study

机译:神经网络从高分辨率多光谱辐射数据中检索云参数的可行性研究

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One of the important issues of the cloud parameter retrieval is how to optimize the improved observational capability of new radiometers. In this study, we examined a neural network approach to retrieve simultaneously optical depth and effective radius of overcast bounded cascade clouds from high-resolution multiwavelength radiometric data. The high-resolution retrieval allows the assumption of uniform cloud parameters within the target pixel but also requires the integration of radiometric data of neighboring pixels as ancillary data because of the net horizontal transport of photons. The performance of the mapping neural network (MNN) high-resolution retrieval was evaluated under conditions of vertical and oblique illumination using six pairs of wavelengths with 0.64, 1.6, 2.2, and 3.7 μm. Two types of clouds are used: inhomogeneous clouds with horizontal uniform effective radius and inhomogeneous clouds with horizontally variable optical depth and effective radius. The results show that we can retrieve these cloud parameters with a reasonable accuracy, which varies with the spectral channels used for the retrieval. The application of a "one-neuron" MNN for the cloud parameter retrieval shows that the effective radius estimation depends on visible wavelength when used with another having only a small absorption as 1.6 or 2.2 μm.
机译:云参数检索的重要问题之一是如何优化改进的新型辐射计的观测能力。在这项研究中,我们研究了一种神经网络方法,可同时从高分辨率多波长辐射数据中检索出有界叶栅云的光学深度和有效半径。高分辨率检索允许在目标像素内假设均匀的云参数,但由于光子的净水平传输,因此需要将相邻像素的辐射数据作为辅助数据进行集成。在垂直和倾斜照明条件下,使用六对波长分别为0.64、1.6、2.2和3.7μm的波长,评估了映射神经网络(MNN)高分辨率检索的性能。使用两种类型的云:具有水平均匀有效半径的不均匀云和具有水平可变的光学深度和有效半径的不均匀云。结果表明,我们可以合理的精度检索这些云参数,该参数随用于检索的光谱通道而变化。 “单神经元” MNN在云参数检索中的应用表明,有效半径估计值与可见光波长有关,该可见光波长与仅具有1.6或2.2μm小吸收的另一个波长一起使用时。

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