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Evaluation of Visible Infrared Imaging Radiometer Suite (VIIRS) neural network cloud detection against current operational cloud masks

机译:可见红外成像辐射计套件(VIIRS)神经网络云检测对电流运营云面罩的评价

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Cloud properties are critical to our understanding of weather and climate variability, but their estimation from satellite imagers is a nontrivial task. In this work, we aim to improve cloud detection, which is the most fundamental cloud property. We use a neural network applied to Visible Infrared Imaging Radiometer Suite (VIIRS) measurements to determine whether an imager pixel is cloudy or cloud-free. The neural network is trained and evaluated using 4 years (2016–2019) of coincident measurements between VIIRS and the Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP). We successfully address the lack of sun glint in the collocation dataset with a simple semi-supervised learning approach. The results of the neural network are then compared with two operational cloud masks: the Continuity MODIS-VIIRS Cloud Mask (MVCM) and the NOAA Enterprise Cloud Mask (ECM). We find that the neural network outperforms both operational cloud masks in most conditions examined with a few exceptions. The largest improvements we observe occur during the night over snow- or ice-covered surfaces in the high latitudes. In our analysis, we show that this improvement is not solely due to differences in optical-depth-based definitions of a cloud between each mask. We also analyze the differences in true-positive rate between day–night and land–water scenes as a function of optical depth. Such differences are a contributor to spatial artifacts in cloud masking, and we find that the neural network is the most consistent in cloud detection with respect to optical depth across these conditions. A regional analysis over Greenland illustrates the impact of such differences and shows that they can result in mean cloud fractions with very different spatial and temporal characteristics.
机译:云属性对于我们对天气和气候变异性的理解至关重要,但他们从卫星成像仪的估计是一个非凡的任务。在这项工作中,我们的目标是改善云检测,这是最基本的云属性。我们使用应用于可见红外成像辐射计套件(VIIRS)测量的神经网络,以确定成像器像素是否是多云或无云的。使用具有正交极化(Caliop)的Viirs和云气溶胶激光雷达之间的4年(2016-2019)培训和评估神经网络和评估。我们通过简单的半监督学习方法成功地解决了搭配数据集中的缺乏太阳闪光。然后将神经网络的结果与两个操作云面具进行比较:连续性Modis-Viirs云掩码(MVCM)和NOAA企业云掩码(ECM)。我们发现神经网络在大多数例外检查的大多数条件下都能表现出运营云面具。我们观察到的最大改进在高纬度地区的雪或冰覆盖的表面上发生。在我们的分析中,我们表明这种改进不仅是由于每个掩码之间云的光学深度定义的差异。我们还通过光学深度的函数分析日夜与土地 - 水景之间真正阳性率的差异。这种差异是云掩蔽中的空间伪影的贡献者,我们发现神经网络在这些条件上相对于光学深度的云检测最常见。在格陵兰州的一个区域分析说明了这种差异的影响,并表明它们可以导致具有非常不同的空间和时间特征的平均云分数。

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