Identifying and characterising trapped lee waves using deep learning techniques

Author:

Coney Jonathan1ORCID,Denby Leif12,Ross Andrew N.1,Wang He3,Vosper Simon4,van Niekerk Annelize5,Dunstan Tom4,Hindley Neil6

Affiliation:

1. Institute for Climate and Atmospheric Science School of Earth and Environment, University of Leeds Leeds UK

2. Weather Research Division Danish Meteorological Institute Copenhagen Denmark

3. Department of Computer Science University College London London UK

4. Met Office Exeter UK

5. Research Department European Centre for Medium Range Weather Forecasts Reading UK

6. Centre for Climate Adaptation and Environment Research University of Bath Bath UK

Abstract

Trapped lee waves, and resultant turbulent rotors downstream, present a hazard for aviation and land‐based transport. Though high‐resolution numerical weather prediction models can represent such phenomena, there is currently no simple and reliable automated method for detecting the extent and characteristics of these waves in model output. Spectral transform methods have traditionally been used to detect and characterise regions of wave activity in model and observational data; however, these methods can be slow and have their limitations. Machine‐learning (ML) techniques offer a new and potentially fruitful method of tackling this problem. We demonstrate that a deep‐learning model can be trained to accurately recognise and label coherent regions of lee waves from vertical velocity data on a single level from a high‐resolution numerical weather prediction (NWP) model. Using transfer learning, wave characteristics (wavelength, orientation, and amplitude) can be extracted from the trained segmentation model. The use of synthetic wave fields with prescribed wave characteristics makes this transfer learning possible without the need to characterise real complex wave fields. Addition of noise to the synthetic data makes the models more robust when applied to more complex and noisy NWP data. The collection of trained models produced provides a valuable tool to investigate the prevalence and nature of lee wave activity, as well as a new way for forecasters to detect resolved waves. The deep‐learning model was more capable and quicker at detecting and characterising lee waves than a spectral technique was. This work is just one example of how already established ML techniques can be used to detect and characterise complex weather phenomena from NWP model output and observational data, and how the careful use of synthetic data can reduce the requirements for large volumes of hand‐labelled training data for ML models.

Funder

Met Office

Natural Environment Research Council

Publisher

Wiley

Subject

Atmospheric Science

Reference34 articles.

1. Simulations of observed Lee waves and rotor turbulence;Ágústsson H.;Monthly Weather Review,2014

2. American Meteorological Society. (2012)Mountain Wave.https://glossary.ametsoc.org/wiki/Mountain_wave

3. Coney J.(2023a)Jdconey/leewavenet: initial release.10.5281/zenodo.8193019.

4. Coney J.(2023b)UKV Lee Waves 700 hPa vertical velocities and hand labels.https://doi.org/10.5281/zenodo.7565310

5. The evolution of lee‐wave‐rotor activity in the lee of Pike's peak under the influence of a cold frontal passage: implications for aircraft safety;Darby L.S.;Monthly Weather Review,2006

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