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Retrieval of Aerosol Optical Thickness from Satellite Images through Machine Learning

机译:通过机器学习从卫星图像检索气溶胶光学厚度

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Aerosol measurements are routinely obtained through ground observation networks of sun-photometers such as the AERONET. Such implementation gives accurate and periodic observations of aerosol properties at each ground-based station. Satellite observations can provide wide areal coverage of aerosol optical thickness (AOT). However, the retrieval of AOT from satellite data usually involves execution of complex radiative transfer codes and is complicated by the influence of different ground covers. In this study, the retreival of AOT at 550 nm (AOT550) from satellite images using machine learning is presented. Simulated satellite signals were generated using the Py6S. a python interface to the 6S (Second Simulation of a Satellite Signal in the Solar Spectrum) Radiative Transfer Model (RTM). The simulated data were based on the different permutations of varying geometrical conditions, atmospheric models, spectral conditions and ground reflectances. A feedforward neural network (NN) with backpropagation algorithm was implemented. The dataset was used for training, validation and testing of the NN model. The trained NN model was then applied to retrieve the value of AOT550 from the satellite images. The plot of actual against retrieved AOT550 had achieved a coefficient of determination (R~2) of 0.716. The machine learning method has shown a promising capability for the spatial and temporal monitoring of aerosols distribution, especially during episodes of biomass burning.
机译:通过地面观察网络(例如AirOnet)的地面观察网络常规地获得气溶胶测量。这种实施提供了在每个地面基站的气溶胶特性的准确和周期性观察。卫星观察可以提供气溶胶光学厚度(AOT)的宽面积覆盖。然而,来自卫星数据的AOT的检索通常涉及执行复杂的辐射转移码并且因不同地覆盖的影响而复杂。在这项研究中,提出了使用机器学习的550nm(AOT550)在550nm(aot550)的retrevival。使用PY6S生成模拟卫星信号。对6S的Python接口(太阳频谱中的卫星信号的第二模拟)辐射传输模型(RTM)。模拟数据基于不同的几何条件,大气模型,光谱条件和地面反射的不同排列。实现了具有BackProjagation算法的前馈神经网络(NN)。数据集用于NN模型的培训,验证和测试。然后应用训练的NN模型以从卫星图像中检索AOT550的值。检测到的AOT550的曲线图已经实现了0.716的测定系数(R〜2)。机器学习方法显示了气溶胶分布的空间和时间监测的有希望的能力,尤其是在生物质燃烧的剧集期间。

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