Multi-Quantile Regression for Extreme Precipitation Downscaling
Hamed Najafi, Gareth Lagerwall, Jayantha Obeysekera, Jason Liu

TL;DR
This paper introduces Q-SRDRN, a multi-quantile super-resolution network with specialized loss and design choices, significantly improving extreme precipitation event detection and modeling tail distributions in downscaling tasks.
Contribution
The authors develop a novel multi-quantile regression approach with monotonicity enforcement and independent quantile heads, enhancing extreme event prediction in precipitation downscaling.
Findings
Q-SRDRN achieves up to 18x higher detection rate of extreme events compared to baselines.
The method reduces KL divergence and RMSE in precipitation modeling.
Region-specific results show near-perfect detection of extreme events.
Abstract
Deep super-resolution networks for precipitation downscaling achieve strong bulk skill yet systematically under-predict the heavy-tail events that drive flood risk. We demonstrate that the primary obstacle is the loss function, not the data: under intensity-weighted MAE, real and synthetic labels at the same input are simply averaged, meaning data augmentation shifts the predicted mean rather than the conditional distribution. We resolve this with Q-SRDRN, a multi-quantile super-resolution network trained with pinball loss at tau in 0.50, 0.95, 0.99, 0.999. Two CNN-specific design choices make this practical: IncrementBound enforces monotonicity while preserving each quantile channel's gradient identity, and separate per-quantile output heads provide independent filter banks for bulk and tail detection. Under this design, data augmentation via cVAE becomes complementary: the median head…
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