This new technique is particularly adept at resolving the small-scale features and storm edges that are traditionally challenging for interpolation techniques to recover. They trained the model on six months of reflectivity observations from the Langley Hill, Washington radar (KLGX), and found that, based on objective error and perceptual quality metrics, the neural network substantially outperforms common interpolation schemes for 4× and 8× resolution increases. Researchers used a deep convolutional neural network to artificially enhance the resolution of weather radar scans. Conceptually, a neural network learns the relationships between large-scale cloud features and their associated sub-pixel-scale image variability to outperform previous interpolation schemes. Recently, significant progress has been made using convolutional neural networks for single-image super resolution, bypassing the need for multiple overlapping images. Scientists typically do this via traditional interpolation methods, which estimate pixel values from nearby data by simply performing the same calculation everywhere without incorporating larger-scale contextual information, or by combining a network of radars with overlapping fields of view. The field of super resolution involves using mathematical techniques, including deep machine learning, to increase the resolution of gridded data beyond their measured resolution. This study lays out a basis for a super resolution technique that could potentially be applied to a wide variety of instrumentation and weather or climate model data. Additionally, it allows for better 3D visualizations of weather radar data. It allows for faster and coarser radar scanning without loss of data quality, better and easier comparisons to high-resolution model and instrument data, and can potentially combat reduction in data quality due to radar beam spread. This work has many applications-from direct radar operations to research. The technique has broad applications in weather radar operations and research. The deep-learning approach performed substantially better than conventional methods in terms of both the accuracy and image quality of the results. Researchers artificially degraded radar data and taught a neural network to restore the original high-resolution data. These convolutional neural networks, inspired by human visual processing, function by learning to incorporate small- and large-scale features through a series of multi-scale filters. This work demonstrates that using machine learning-based deep convolutional neural networks can enhance the resolution of already captured weather radar data. Operational constraints limit the quality of weather radar data this is a problem when scientists need to compare the data to higher resolution datasets or need higher resolution to display/3D reconstruction.
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