Learning Displacement-Robust Representations for Landslide Early Warning under Rainfall Forecast Uncertainty
Ren Ozeki, Hamada Rizk, Hirozumi Yamaguchi

TL;DR
This paper introduces a novel landslide early warning system that learns displacement-robust representations of rainfall data, significantly improving prediction accuracy under forecast uncertainties.
Contribution
It proposes Rainfall-Motion-Aware Contrastive Learning to create stable latent representations that handle rainfall displacement, enhancing landslide prediction robustness.
Findings
Achieved up to 37% higher precision than existing methods.
Demonstrated effectiveness across 19 regions in Japan.
Improved reliability of short-term landslide prediction under forecast uncertainty.
Abstract
Rainfall-induced landslides pose a growing risk worldwide as climate change intensifies extreme rainfall events. To provide sufficient evacuation time, landslide early warning systems (LEWS) for real-time disaster monitoring must estimate near-future landslide risk by integrating observed rainfall with short-term rainfall forecasts from spatio-temporal environmental data streams. Although recent landslide prediction methods have improved predictive performance using statistical and deep learning approaches, most assume accurate rainfall inputs. In operational settings, however, landslide prediction relies on rainfall forecasts, which often contain spatial displacement of rainfall fields due to forecasting uncertainties. Such displacement can alter local accumulated rainfall and degrade prediction accuracy. To address this challenge, we propose a novel LEWS robust to rainfall field…
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