Abstract

Abstract. Physical processes on the synoptic scale are important modulators of the large-scale extratropical circulation. In particular, rapidly ascending airstreams in extratropical cyclones, so-called warm conveyor belts (WCBs), modulate the upper-tropospheric Rossby wave pattern and are sources and magnifiers of forecast uncertainty. Thus, from a process-oriented perspective, numerical weather prediction (NWP) and climate models should adequately represent WCBs. The identification of WCBs usually involves Lagrangian air parcel trajectories that ascend from the lower to the upper troposphere within 2 d. This requires expensive computations and numerical data with high spatial and temporal resolution, which are often not available from standard output. This study introduces a novel framework that aims to predict the footprints of the WCB inflow, ascent, and outflow stages over the Northern Hemisphere from instantaneous gridded fields using convolutional neural networks (CNNs). With its comparably low computational costs and relying on standard model output alone, the new diagnostic enables the systematic investigation of WCBs in large data sets such as ensemble reforecast or climate model projections, which are mostly not suited for trajectory calculations. Building on the insights from a logistic regression approach of a previous study, the CNNs are trained using a combination of meteorological parameters as predictors and trajectory-based WCB footprints as predictands. Validation of the networks against the trajectory-based data set confirms that the CNN models reliably replicate the climatological frequency of WCBs as well as their footprints at instantaneous time steps. The CNN models significantly outperform previously developed logistic regression models. Including time-lagged information on the occurrence of WCB ascent as a predictor for the inflow and outflow stages further improves the models' skill considerably. A companion study demonstrates versatile applications of the CNNs in different data sets including the verification of WCBs in ensemble forecasts. Overall, the diagnostic demonstrates how deep learning methods may be used to investigate the representation of weather systems and their related processes in NWP and climate models in order to shed light on forecast uncertainty and systematic biases from a process-oriented perspective.

Highlights

  • Warm conveyor belts (WCBs; e.g., Carlson, 1980) are coherent, cross-isentropically ascending airstreams in extratropical cyclones

  • We introduce a UNet convolutional neural networks (CNNs) that identifies WCB footprints from Eulerian fields, which are available from numerical weather prediction (NWP) and climate models

  • The CNN-based framework is trained for the Northern Hemisphere on 20 years of gridded trajectorybased WCB data derived from ERA-Interim using the same physical predictors as in Quinting and Grams (2021b)

Read more

Summary

Introduction

Warm conveyor belts (WCBs; e.g., Carlson, 1980) are coherent, cross-isentropically ascending airstreams in extratropical cyclones. In order to systematically assess the representation of WCBs in such data sets, Quinting and Grams (2021b) introduced a statistical framework that allows the identification of twodimensional WCB footprints from Eulerian fields at comparably low spatiotemporal resolution Their statistical framework uses grid-point-specific multivariate logistic regression models that calculate the conditional probabilities of WCB inflow, ascent, and outflow from predictors solely derived from temperature, geopotential height, specific humidity, and horizontal wind components. Quinting and Grams (2021b) developed gridpoint-specific regression models These models, do not take into account the information from neighboring grid points when predicting the occurrence of WCBs. Second, the WCB stages of inflow, ascent, and outflow are connected in a Lagrangian sense due to the time sequence in which they occur.

UNet convolutional neural network
Input map
Contracting path
Expanding path
Model training
Model setting optimization
Model evaluation
Reliability
Model bias
Model skill
Findings
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.