Concept drift of simple forecast models as a diagnostic of low-frequency, regime-dependent atmospheric reorganisation
Haokun Zhou

TL;DR
This paper investigates how simple weather forecast models experience concept drift under climate change, revealing low-frequency, regime-dependent atmospheric reorganization that impacts predictability and is not captured by traditional metrics.
Contribution
It introduces the use of concept drift in simple models as a diagnostic tool for understanding atmospheric reorganization under climate change, with detailed analysis of regional and frequency-dependent effects.
Findings
Drift is dominated by low-frequency variability.
Regime dependence of drift varies regionally.
Traditional variance diagnostics are less aligned with drift than persistence metrics.
Abstract
Data-driven weather prediction models implicitly assume that the statistical relationship between predictors and targets is stationary. Under anthropogenic climate change, this assumption is violated, yet the structure of the resulting concept drift remains poorly understood. Here we introduce concept drift of simple forecast models as a diagnostic of atmospheric reorganisation. Using ERA5 reanalysis, we quantify drift in spatially explicit linear models of daily mean sea-level pressure and 2\,m temperature. Models are trained on the 1950s and 2000s and evaluated on 2020 tp 2024; their performance difference defines a local, interpretable drift metric. By decomposing errors by frequency band, circulation regime and region, and by mapping drift globally, we show that drift is dominated by low-frequency variability and is strongly regime-dependent. Over the North Atlantic-European sector,…
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Taxonomy
TopicsClimate variability and models · Meteorological Phenomena and Simulations · Atmospheric Ozone and Climate
