Improving trajectory calculations using deep learning inspired single image superresolution
R\"udiger Brecht, Lucie Bakels, Alex Bihlo, Andreas Stohl

TL;DR
This paper introduces a deep learning approach to enhance meteorological data resolution, significantly reducing interpolation errors and improving the accuracy of particle trajectory calculations in atmospheric models.
Contribution
The study applies deep neural networks for superresolution of meteorological fields, achieving higher accuracy than traditional interpolation methods for trajectory modeling.
Findings
Upscaled wind fields have half the RMSE of linear interpolation.
Trajectory deviations are reduced by at least 49.5% after 48 hours.
Deep learning-based superresolution improves meteorological data quality for Lagrangian models.
Abstract
Lagrangian trajectory or particle dispersion models as well as semi-Lagrangian advection schemes require meteorological data such as wind, temperature and geopotential at the exact spatio-temporal locations of the particles that move independently from a regular grid. Traditionally, this high-resolution data has been obtained by interpolating the meteorological parameters from the gridded data of a meteorological model or reanalysis, e.g. using linear interpolation in space and time. However, interpolation errors are a large source of error for these models. Reducing them requires meteorological input fields with high space and time resolution, which may not always be available and can cause severe data storage and transfer problems. Here, we interpret this problem as a single image superresolution task. We interpret meteorological fields available at their native resolution as…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Meteorological Phenomena and Simulations · Advanced Image Processing Techniques
