Abstract

Abstract. Missing and low-quality data regions are a frequent problem for weather radars. They stem from a variety of sources: beam blockage, instrument failure, near-ground blind zones, and many others. Filling in missing data regions is often useful for estimating local atmospheric properties and the application of high-level data processing schemes without the need for preprocessing and error-handling steps – feature detection and tracking, for instance. Interpolation schemes are typically used for this task, though they tend to produce unrealistically spatially smoothed results that are not representative of the atmospheric turbulence and variability that are usually resolved by weather radars. Recently, generative adversarial networks (GANs) have achieved impressive results in the area of photo inpainting. Here, they are demonstrated as a tool for infilling radar missing data regions. These neural networks are capable of extending large-scale cloud and precipitation features that border missing data regions into the regions while hallucinating plausible small-scale variability. In other words, they can inpaint missing data with accurate large-scale features and plausible local small-scale features. This method is demonstrated on a scanning C-band and vertically pointing Ka-band radar that were deployed as part of the Cloud Aerosol and Complex Terrain Interactions (CACTI) field campaign. Three missing data scenarios are explored: infilling low-level blind zones and short outage periods for the Ka-band radar and infilling beam blockage areas for the C-band radar. Two deep-learning-based approaches are tested, a convolutional neural network (CNN) and a GAN that optimize pixel-level error or combined pixel-level error and adversarial loss respectively. Both deep-learning approaches significantly outperform traditional inpainting schemes under several pixel-level and perceptual quality metrics.

Highlights

  • Missing data regions are a common problem for weather radars and can arise for many reasons

  • The examples shown in the paper were chosen blindly but not randomly, meaning we picked cases to include based on the ground truth but without consulting the convolutional neural network (CNN) output

  • We found that the outputs from the conditional generative adversarial network (CGAN) were not dependent on the random seed that was supplied with the inputs

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Summary

Introduction

Missing data regions are a common problem for weather radars and can arise for many reasons. One of the most common for scanning radars is beam blockage This occurs when terrain or nearby objects like buildings and trees obstruct the radar beam, resulting in a wedge-shaped blind zone behind the object. This is a large problem in regions with substantial terrain like the western potion of the United States, for instance (Westrick et al, 1999; Young et al, 1999). Several computational approaches exist to infill partial beam blockage cases (Lang et al, 2009; Zhang et al, 2013) Another option is to use a radar network where multiple radars are installed on opposite sides of terrain (Young et al, 1999). In the absence of additional data (from unblocked sweeps at higher elevation angles or other instruments), beam blockages can be filled in through traditional interpolation

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