SwAIther-Precip: Lead-Time-Aware Bias Correction Enables Kilometer-Scale Downscaling of Global AI Precipitation Forecasts over Switzerland
Dan Assouline, Erwan Koch, Federico Amato, Filippo Quarenghi, Daniele Nerini, Thibaut Loiseau, Kyle van de Langemheen, Tom Beucler

TL;DR
This paper presents SwAIther-Precip, a novel lead-time-aware downscaling framework that significantly improves kilometer-scale precipitation forecasts over Switzerland by correcting biases and generating high-resolution spatial variability.
Contribution
The paper introduces a new bias correction and super-resolution method that explicitly accounts for lead-time dependence, enabling more accurate and computationally efficient km-scale precipitation forecasts.
Findings
Reduces CRPS by 48% compared to raw AIFS forecasts.
Reproduces observed spatial variability with spectral fidelity above 0.85 at large scales.
Improves long-range forecast performance with 13% CRPS reduction at 6 days.
Abstract
Skillful medium-range precipitation forecasting at kilometer scale remains challenging over complex terrain because precipitation arises from multiscale nonlinear processes that global models cannot explicitly resolve at affordable cost. Global AI weather models can produce skillful medium-range forecasts, but their native 0.25 degrees resolution limits direct use for local hazard applications. Statistical downscaling can help bridge this gap, yet existing approaches often struggle with state-dependent, and especially lead-time-dependent, biases in global forecasts. We introduce SwAIther-Precip, a lead-time-aware downscaling framework that converts coarse-resolution AIFS forecasts into probabilistic km-scale precipitation fields over Switzerland. First, a U-Net conditioned on lead time via feature-wise linear modulation deterministically corrects systematic biases at coarse resolution.…
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