Litcius/Paper detail

High return level estimates of daily ERA-5 precipitation in Europe estimated using regionalized extreme value distributions

Pauline Rivoire, Philomène Le Gall, Anne‐Catherine Favre, Philippe Naveau, Olivia Martius

2022Weather and Climate Extremes21 citationsDOIOpen Access PDF

Abstract

Accurate estimation of daily rainfall return levels associated with large return periods is needed for a number of hydrological planning purposes, including protective infrastructure, dams, and retention basins. This is especially relevant at small spatial scales. The ERA-5 reanalysis product provides seasonal daily precipitation over Europe on a 0.25∘×0.25∘ grid (about 27 × 27 [km]). This translates more than 20,000 land grid points and leads to models with a large number of parameters when estimating return levels. To bypass this abundance of parameters, we build on the regional frequency analysis (RFA), a well-known strategy in statistical hydrology. This approach consists in identifying homogeneous regions, by gathering locations with similar distributions of extremes up to a normalizing factor and developing sparse regional models. In particular, we propose a step-by-step blueprint that leverages a recently developed and fast clustering algorithm to infer return level estimates over large spatial domains. This enables us to produce maps of return level estimates of ERA-5 reanalysis daily precipitation over continental Europe for various return periods and seasons. We discuss limitations and practical challenges and also provide a git hub repository. We show that a relatively parsimonious model with only a spatially varying scale parameter can compete well against statistical models of higher complexity.

Topics & Concepts

PrecipitationReturn periodEnvironmental scienceScale (ratio)GridCluster analysisExtreme value theoryEconometricsComputer scienceMeteorologyClimatologyStatisticsGeographyMathematicsGeologyCartographyArchaeologyFlood mythGeodesyHydrology and Drought AnalysisClimate variability and modelsHydrology and Watershed Management Studies