Can we integrate spatial verification methods into neural-network loss functions for atmospheric science?
Ryan Lagerquist, Imme Ebert-Uphoff

TL;DR
This paper introduces spatially enhanced loss functions (SELF) that incorporate spatial verification methods into neural network training for atmospheric science, improving calibration and scale-specific predictions of thunderstorms.
Contribution
It develops and demonstrates the use of SELF, combining spatial filters with verification scores, to better align neural network training with spatial verification goals in atmospheric prediction.
Findings
Spectral filters yield better-calibrated probabilities.
Models trained with pixelwise loss perform surprisingly well.
SELF improves scale-specific prediction accuracy.
Abstract
In the last decade, much work in atmospheric science has focused on spatial verification (SV) methods for gridded prediction, which overcome serious disadvantages of pixelwise verification. However, neural networks (NN) in atmospheric science are almost always trained to optimize pixelwise loss functions, even when ultimately assessed with SV methods. This establishes a disconnect between model verification during vs. after training. To address this issue, we develop spatially enhanced loss functions (SELF) and demonstrate their use for a real-world problem: predicting the occurrence of thunderstorms (henceforth, "convection") with NNs. In each SELF we use either a neighbourhood filter, which highlights convection at scales larger than a threshold, or a spectral filter (employing Fourier or wavelet decomposition), which is more flexible and highlights convection at scales between two…
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Taxonomy
TopicsMeteorological Phenomena and Simulations
