Litcius/Paper detail

Generation of a global synthetic tropical cyclone hazard dataset using STORM

Nadia Bloemendaal, Ivan D. Haigh, Hans de Moel, Sanne Muis, Rein Haarsma, Jeroen C. J. H. Aerts

2020Scientific Data262 citationsDOIOpen Access PDF

Abstract

Over the past few decades, the world has seen substantial tropical cyclone (TC) damages, with the 2017 Hurricanes Harvey, Irma and Maria entering the top-5 costliest Atlantic hurricanes ever. Calculating TC risk at a global scale, however, has proven difficult given the limited temporal and spatial information on TCs across much of the global coastline. Here, we present a novel database on TC characteristics on a global scale using a newly developed synthetic resampling algorithm we call STORM (Synthetic Tropical cyclOne geneRation Model). STORM can be applied to any meteorological dataset to statistically resample and model TC tracks and intensities. We apply STORM to extracted TCs from 38 years of historical data from IBTrACS to statistically extend this dataset to 10,000 years of TC activity. We show that STORM preserves the TC statistics as found in the original dataset. The STORM dataset can be used for TC hazard assessments and risk modeling in TC-prone regions.

Topics & Concepts

Tropical cycloneStormClimatologyTropical cyclone forecast modelStorm surgeMeteorologyResamplingHazardEnvironmental scienceCyclone (programming language)Scale (ratio)GeographyComputer scienceCartographyAlgorithmGeologyEcologyBiologyField-programmable gate arrayComputer hardwareTropical and Extratropical Cyclones ResearchOcean Waves and Remote SensingCoastal wetland ecosystem dynamics
Generation of a global synthetic tropical cyclone hazard dataset using STORM | Litcius