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A multi-spectral non-local method for retrieval of boundary layer cloud properties from optical remote sensing data

机译:从光学遥感数据中检索边界层云特性的多光谱非局部方法

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A multi-spectral non-local (MSN) method is developed for advanced retrieval of boundary layer cloud properties from remote sensing data, as an alternative to the independent pixel approximation (IPA) method. The non-local method uses data at both the target pixel and neighboring pixels to retrieve cloud properties such as pixel-averaged cloud optical thickness and effective droplet radius. Radiance data to be observed from space were simulated by a three-dimensional (3D) radiation model and a stochastic boundary layer cloud model with two-dimensional (horizontal and vertical) variability in cloud liquid water and effective radius. An adiabatic assumption is used for each cloud column to model the geometrical thickness and vertical profiles of cloud liquid water content and effective droplet radius, neglecting drizzle and cloud brokenness for simplicity. The dependence of radiative smoothing and roughening on horizontal scale, optical thickness and single scattering albedo are investigated. Then, retrieval methods using 250-m horizontal resolution data onboard new generation satellites are discussed. The regression model for the MSN method was trained based on datasets from numerical simulations. The training was performed with respect to various domain averages of optical thickness and effective radius, because smoothing and roughening effects are strongly dependent on the two variables. Retrieval accuracy is discussed here with datasets independent of those used in the training, towards assessing the generality of the technique. It is demonstrated that retrieval accuracy of cloud optical thickness, which is often retrieved from single-spectral visible-wavelength data, is improved the most using neighboring pixel data and secondly using multi-spectral data, and ideally with both. When the IPA retrieval method is applied to optical thickness and effective radius, the root-mean-square relative errors can be 15-90%, depending on solar and view directions. Li contrast, the MSN method has errors of 4-10%, which is smaller than IPA by a factor of 2-10. It is also suggested that the accuracy of the MSN method is insensitive to some assumptions in the inhomogeneous cloud input data used to train the regression model.
机译:作为独立像素近似(IPA)方法的替代方法,开发了一种多光谱非本地(MSN)方法,用于从遥感数据中高级检索边界层云属性。非局部方法使用目标像素和邻近像素处的数据来检索云属性,例如像素平均云光学厚度和有效墨滴半径。通过三维(3D)辐射模型和具有二维(水平和垂直)二维变化的云状液态水和有效半径的随机边界层云模型,模拟了从空间观测到的辐射数据。绝热假设用于每个云柱,以模拟云液态水含量和有效液滴半径的几何厚度和垂直剖面,为简单起见,忽略了毛毛雨和云的破裂。研究了辐射平滑和粗糙化对水平尺度,光学厚度和单散射反照率的依赖性。然后,讨论了在新一代卫星上使用250米水平分辨率数据的检索方法。基于数值模拟的数据集,对MSN方法的回归模型进行了训练。针对光学厚度和有效半径的各种域平均值进行了训练,因为平滑和粗糙化效果强烈取决于这两个变量。此处讨论检索准确性的方法是使用与训练中使用的数据集无关的数据集,以评估技术的普遍性。结果表明,通常从单光谱可见光波长数据中检索到的云光学厚度的检索精度在使用相邻像素数据后获得了最大程度的提高,其次使用了多光谱数据,并且在理想情况下两者都得到了提高。将IPA检索方法应用于光学厚度和有效半径时,均方根相对误差可以为15-90%,具体取决于太阳和观察方向。相比之下,MSN方法的误差为4-10%,比IPA小2-10倍。还建议,MSN方法的准确性对用于训练回归模型的非均匀云输入数据中的某些假设不敏感。

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