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      Near-Cloud Aerosol Retrieval Using Machine Learning Techniques, and Implied Direct Radiative Effects.

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          Abstract

          There is a lack of satellite-based aerosol retrievals in the vicinity of low-topped clouds, mainly because reflectance from aerosols is overwhelmed by three-dimensional cloud radiative effects. To account for cloud radiative effects on reflectance observations, we develop a Convolutional Neural Network and retrieve aerosol optical depth (AOD) with 100-500 m horizontal resolution for all cloud-free regions regardless of their distances to clouds. The retrieval uncertainty is 0.01 + 5%AOD, and the mean bias is approximately -2%. In an application to satellite observations, aerosol hygroscopic growth due to humidification near clouds enhances AOD by 100% in regions within 1 km of cloud edges. The humidification effect leads to an overall 55% increase in the clear-sky aerosol direct radiative effect. Although this increase is based on a case study, it highlights the importance of aerosol retrievals in near-cloud regions, and the need to incorporate the humidification effect in radiative forcing estimates.

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          Most cited references40

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          The MODIS Aerosol Algorithm, Products, and Validation

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            On Pixel-Wise Explanations for Non-Linear Classifier Decisions by Layer-Wise Relevance Propagation

            Understanding and interpreting classification decisions of automated image classification systems is of high value in many applications, as it allows to verify the reasoning of the system and provides additional information to the human expert. Although machine learning methods are solving very successfully a plethora of tasks, they have in most cases the disadvantage of acting as a black box, not providing any information about what made them arrive at a particular decision. This work proposes a general solution to the problem of understanding classification decisions by pixel-wise decomposition of nonlinear classifiers. We introduce a methodology that allows to visualize the contributions of single pixels to predictions for kernel-based classifiers over Bag of Words features and for multilayered neural networks. These pixel contributions can be visualized as heatmaps and are provided to a human expert who can intuitively not only verify the validity of the classification decision, but also focus further analysis on regions of potential interest. We evaluate our method for classifiers trained on PASCAL VOC 2009 images, synthetic image data containing geometric shapes, the MNIST handwritten digits data set and for the pre-trained ImageNet model available as part of the Caffe open source package.
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              The Collection 6 MODIS aerosol products over land and ocean

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                Author and article information

                Journal
                Geophys Res Lett
                Geophysical research letters
                American Geophysical Union (AGU)
                0094-8276
                0094-8276
                Oct 28 2022
                : 49
                : 20
                Affiliations
                [1 ] Department of Atmospheric Science Colorado State University Fort Collins CO USA.
                [2 ] NASA Goddard Space Flight Center Greenbelt MD USA.
                [3 ] NOAA Chemical Sciences Laboratory Boulder CO USA.
                [4 ] Joint Center for Earth System Technology University of Maryland Baltimore County Baltimore MD USA.
                [5 ] GESTAR/Morgan State University Baltimore MD USA.
                [6 ] Cooperative Institute for Research in Environmental Sciences University of Colorado Boulder CO USA.
                [7 ] Department of Meteorology University of Reading Reading UK.
                Article
                GRL64935
                10.1029/2022GL098274
                9787555
                36582354
                aa095d84-90ee-4dc1-a9f1-0f5255847e11
                History

                aerosol remote sensing,machine learning,transition zone,aerosol direct radiative effect

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