Spatiotemporal Weather Data Predictions with Shortcut
Recurrent-Convolutional Networks: A Solution for the Weather4cast challenge
- URL: http://arxiv.org/abs/2111.02121v1
- Date: Wed, 3 Nov 2021 10:36:47 GMT
- Title: Spatiotemporal Weather Data Predictions with Shortcut
Recurrent-Convolutional Networks: A Solution for the Weather4cast challenge
- Authors: Jussi Leinonen
- Abstract summary: This paper presents the neural network model that was used by the author in the Weather4cast 2021 Challenge Stage 1.
The objective was to predict the time evolution of satellite-based weather data images.
The network is based on an encoder-forecaster architecture making use of gated recurrent units (GRU), residual blocks and a contracting/expanding architecture with shortcuts similar to U-Net.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents the neural network model that was used by the author in
the Weather4cast 2021 Challenge Stage 1, where the objective was to predict the
time evolution of satellite-based weather data images. The network is based on
an encoder-forecaster architecture making use of gated recurrent units (GRU),
residual blocks and a contracting/expanding architecture with shortcuts similar
to U-Net. A GRU variant utilizing residual blocks in place of convolutions is
also introduced. Example predictions and evaluation metrics for the model are
presented. These demonstrate that the model can retain sharp features of the
input for the first predictions, while the later predictions become more
blurred to reflect the increasing uncertainty.
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