Wasserstein generative adversarial networks based data augmentation for radar data analysis

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Abstract

Ground-based weather radar can observe a wide range with a high spatial and temporal resolution. They are beneficial tometeorological research and services by providing valuable information. Recent weather radar data related research has focused on applying machine learning and deep learning to solve complicated problems. It is a well-known fact that an adequate amount of data is a positively necessary condition in machine learning and deep learning. Generative adversarial networks (GANs) have received extensive attention for their remarkable data generation capacity, with a fascinating competitive structure having been proposed since. Consequently, a massive number of variants have been proposed;whichmodel is adequate to solve the given problemis an inevitable concern. In this paper, we propose exploring the problemof radar image synthesis and evaluating differentGANswith authentic radar observation results. The experimental results showed that the improvedWasserstein GAN is more capable of generating similar radar images while achieving higher structural similarity results.

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APA

Lee, H., Kim, J., Kim, E. K., & Kim, S. (2020). Wasserstein generative adversarial networks based data augmentation for radar data analysis. Applied Sciences (Switzerland), 10(4). https://doi.org/10.3390/app10041449

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