Litcius/Paper detail

Skillful Decadal Flood Prediction

Simon Moulds, Louise Slater, Nick Dunstone, Doug Smith

2022Geophysical Research Letters15 citationsDOIOpen Access PDF

Abstract

Abstract Accurate long‐term flood predictions are increasingly needed for flood risk management in a changing climate, but are hindered by the underestimation of climate variability by climate models. Here, we drive a statistical flood model with a large ensemble of dynamical CMIP5‐6 predictions of precipitation and temperature. Predictions of UK winter flooding (95th streamflow percentile) have low skill when using the raw 676‐member ensemble averaged over lead times of 2–5 years from the initialization date. Sub‐selecting 20 ensemble members that adequately represent the multiyear temporal variability in the North Atlantic Oscillation (NAO) significantly improves the flood predictions. Applying this method we show positive skill in 46% of stations compared to 26% using the raw ensemble, primarily in regions most strongly influenced by the NAO. Our findings reveal the potential of decadal predictions to inform flood risk management at long lead times.

Topics & Concepts

Flood mythInitializationClimatologyEnvironmental scienceFlooding (psychology)North Atlantic oscillationPrecipitationStreamflowCoastal floodLead timePercentileFlood forecastingClimate changeMeteorologyDrainage basinGeologyStatisticsGeographyOceanographyComputer scienceMathematicsCartographyPsychologyMarketingBusinessArchaeologySea level riseProgramming languagePsychotherapistClimate variability and modelsHydrology and Watershed Management StudiesHydrology and Drought Analysis
Skillful Decadal Flood Prediction | Litcius