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Towards Identification of Relevant Variables in the observed Aerosol Optical Depth Bias between MODIS and AERONET observations

机译:探讨了Modis和AeroNet观测之间观察到的气溶胶光学深度偏差中的相关变量

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Measurements made by satellite remote sensing, Moderate Resolution Imaging Spectroradiometer (MODIS), and globally distributed Aerosol Robotic Network (AERONET) are compared. Comparison of the two datasets measurements for aerosol optical depth values show that there are biases between the two data products. In this paper, we present a general framework towards identifying relevant set of variables responsible for the observed bias. We present a general framework to identify the possible factors influencing the bias, which might be associated with the measurement conditions such as the solar and sensor zenith angles, the solar and sensor azimuth, scattering angles, and surface reflectivity at the various measured wavelengths, etc. Specifically, we performed analysis for remote sensing Aqua-Land data set, and used machine learning technique, neural network in this case, to perform multivariate regression between the ground-truth and the training data sets. Finally, we used mutual information between the observed and the predicted values as the measure of similarity to identify the most relevant set of variables. The search is brute force method as we have to consider all possible combinations. The computations involves a huge number crunching exercise, and we implemented it by writing a job-parallel program.
机译:比较了卫星遥感,中度分辨率成像光谱仪(MODIS)和全球分布式气溶胶机器人网络(AERONET)制造的测量。用于气溶胶光学深度值的两个数据集测量的比较表明,两个数据产品之间存在偏差。在本文中,我们展示了一般框架,旨在识别负责观察到的偏差的相关变量集。我们展示了一般框架,以确定影响偏置的可能因素,这可能与诸如太阳能和传感器天顶角,太阳能和传感器方位角,散射角度以及各种测量波长的散射角度以及表面反射率相关联的可能因素。具体来说,我们对遥感Aqua-Land数据集进行了分析,以及在这种情况下,神经网络的使用机器学习技术,在地面真理和训练数据集之间执行多元回归。最后,我们在观察到的和预测值之间使用相互信息作为相似性的度量,以识别最相关的变量集。搜索是蛮力方法,因为我们必须考虑所有可能的组合。计算涉及巨额嘎吱嘎吱的练习,我们通过编写工作并行程序来实现它。

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