Reconstruction of Cloud Vertical Structure With a Generative Adversarial Network
We demonstrate the feasibility of solving atmospheric remote sensing problems with machine learning using conditional generative adversarial networks (CGANs), implemented using convolutional neural networks. We apply the CGAN to generating two‐dimensional cloud vertical structures that would be obse...
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Veröffentlicht in: | Geophysical research letters 2019-06, Vol.46 (12), p.7035-7044 |
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Sprache: | eng |
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Zusammenfassung: | We demonstrate the feasibility of solving atmospheric remote sensing problems with machine learning using conditional generative adversarial networks (CGANs), implemented using convolutional neural networks. We apply the CGAN to generating two‐dimensional cloud vertical structures that would be observed by the CloudSat satellite‐based radar, using only the collocated Moderate‐Resolution Imaging Spectrometer measurements as input. The CGAN is usually able to generate reasonable guesses of the cloud structure and can infer complex structures such as multilayer clouds from the Moderate‐Resolution Imaging Spectrometer data. This network, which is formulated probabilistically, also estimates the uncertainty of its own predictions. We examine the statistics of the generated data and analyze the response of the network to each input parameter. The success of the CGAN in solving this problem suggests that generative adversarial networks are applicable to a wide range of problems in atmospheric science, a field characterized by complex spatial structures and observational uncertainties.
Key Points
We trained a generative adversarial network (GAN) to generate cloud vertical structures
The network generates plausible CloudSat scenes, given MODIS data as an input
This demonstrates the potential usefulness of GANs in atmospheric science |
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ISSN: | 0094-8276 1944-8007 |
DOI: | 10.1029/2019GL082532 |