利用自监督深度学习的互补方法捕捉中尺度信风积云的多样性

Dwaipayan Chatterjee, Sabrina Schnitt, Paula Bigalke, Claudia Acquistapace, Susanne Crewell
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引用次数: 0

摘要

在中尺度,信风云以各种各样的空间排列组织,这影响了它们对地球能量收支的影响。过去的研究使用高分辨率卫星测量和聚类/标记技术将信风云划分为不同的类别。然而,这些方法只捕获了观察到的组织可变性的一部分。这项工作提出了一个集成框架,使用基于地球同步卫星测量的云光学深度的连续跟随离散自监督深度学习方法。神经网络学习云系统结构和分布的语义,并通过不同层的可视化进行验证。我们的分析比较了人类标签定义的类和机器识别的类,旨在解决这两种方法的不确定性和局限性。此外,我们还举例说明了糖到花转换的案例研究,这是现有方法未涵盖的一个新方面。
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Capturing the diversity of mesoscale trade wind cumuli using complementary approaches from self-supervised deep learning
At the mesoscale, trade wind clouds organize with a wide variety of spatial arrangements, which influences their effect on Earth’s energy budget. Past studies used high-resolution satellite measurements and clustering/labeling techniques to classify trade wind clouds into distinct classes. However, these methods only capture a part of the observed organization variability. This work proposes an integrated framework using a continuous followed by discrete self-supervised deep learning approach based on cloud optical depth from geostationary satellite measurements. The neural network learns the semantics of cloud system structure and distribution, verified through visualizations of different layers. Our analysis compares classes defined by human labels with machine-identified classes, aiming to address the uncertainties and limitations of both approaches. Additionally, we illustrate a case study of sugar-to-flower transitions, a novel aspect not covered by existing methods.
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