Model Card for LeeWaveNet
This repository contains four neural-network models, trained using fastai, for detecting and determining characteristics of trapped lee waves using maps of 700 hPa vertical velocity as input.
- The base model segmodel.pkl generates a segmentation mask indicating where trapped lee waves are present. This model uses a U-Net architecture with Resnet-34 (pre-trained on ImageNet) as the encoder model.
- Three alternative model heads have been trained on synthetic data: amplitude_0.0625.pkl, wavelength_0.125.pkl and orientation_0.25.pkl. These predict the amplitude, wavelength and orientation of detected waves respectively.
For full details, please see the article by Coney et al. (2023).
Inference API (serverless) does not yet support fastai models for this pipeline type.