Articles | Volume 16, issue 5
https://doi.org/10.5194/gmd-16-1467-2023
https://doi.org/10.5194/gmd-16-1467-2023
Model description paper
 | 
08 Mar 2023
Model description paper |  | 08 Mar 2023

Deep learning models for generation of precipitation maps based on numerical weather prediction

Adrian Rojas-Campos, Michael Langguth, Martin Wittenbrink, and Gordon Pipa

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Cited articles

Abadi, M., Agarwal, A., Barham, P., Brevdo, E., Chen, Z., Citro, C., Corrado, G. S., Davis, A., Dean, J., Devin, M., Ghemawat, S., Goodfellow, I., Harp, A., Irving, G., Isard, M., Jia, Y., Jozefowicz, R., Kaiser, L., Kudlur, M., Levenberg, J., Mané, D., Monga, R., Moore, S., Murray, D., Olah, C., Schuster, M., Shlens, J., Steiner, B., Sutskever, I., Talwar, K., Tucker, P., Vanhoucke, V., Vasudevan, V., Viégas, F., Vinyals, O., Warden, P., Wattenberg, M., Wicke, M., Yu, Y., and Zheng, X.: TensorFlow: Large-Scale Machine Learning on Heterogeneous Systems, Proceedings of the 12th USENIX Symposium on Operating Systems Design and Implementation (OSDI '16), 2–4 November 2016, Savannah, GA, USA, USENIX, ISBN 978-1-931971-33-1, https://www.usenix.org/system/files/conference/osdi16/osdi16-abadi.pdf (last access: 6 March 2023), 2015. a, b
Agrawal, S., Barrington, L., Bromberg, C., Burge, J., Gazen, C., and Hickey, J.: Machine Learning for Precipitation Nowcasting from Radar Images, arXiv [preprint], https://doi.org/10.48550/arXiv.1912.12132, 11 December 2019. a
Ayzel, G., Heistermann, M., Sorokin, A., Nikitin, O., and Lukyanova, O.: All convolutional neural networks for radar-based precipitation nowcasting, proceedings of the 13th International Symposium “Intelligent Systems 2018” (INTELS’18), 22–24 October 2018, St. Petersburg, Russia, Procedia Comput. Sci., 150, 186–192, https://doi.org/10.1016/j.procs.2019.02.036, 2019. a
Ayzel, G., Scheffer, T., and Heistermann, M.: RainNet v1.0: a convolutional neural network for radar-based precipitation nowcasting, Geosci. Model Dev., 13, 2631–2644, https://doi.org/10.5194/gmd-13-2631-2020, 2020. a, b, c, d, e, f
Bartels, H., Weigl, E., Reich, T., Lang, P., Wagner, A., Kohler, O., and Gerlach, N.: Projekt RADOLAN–Routineverfahren zur Online-Aneichung der Radarniederschlagsdaten mit Hilfe von automatischen Bodenniederschlagsstationen (Ombrometer), Deutscher Wetterdienst, Hydrometeorologie, 5, 265–283, https://www.dwd.de/DE/leistungen/radolan/radolan_info/abschlussbericht_pdf (last access: 6 March 2023), 2004. a
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Short summary
Our paper presents an alternative approach for generating high-resolution precipitation maps based on the nonlinear combination of the complete set of variables of the numerical weather predictions. This process combines the super-resolution task with the bias correction in a single step, generating high-resolution corrected precipitation maps with a lead time of 3 h. We used using deep learning algorithms to combine the input information and increase the accuracy of the precipitation maps.