Global application of a regional frequency analysis to extreme sea levels

Thomas P. Collings, Niall Quinn, Ivan D. Haigh, Joshua Green, Izzy Probyn, Hamish Wilkinson, S. Muis, William V. Sweet, P. Bates
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Abstract

Abstract. Coastal regions face increasing threats from rising sea levels and extreme weather events, highlighting the urgent need for accurate assessments of coastal flood risk. This study presents a novel approach to estimating global extreme sea level (ESL) exceedance probabilities using a regional frequency analysis (RFA) approach. The research combines observed and modelled hindcast data to produce a high-resolution (∼1 km) dataset of ESL exceedance probabilities, including wave setup, along the entire global coastline (excluding Antarctica). The methodology presented in this paper is an extension of the regional framework of Sweet et al. (2022), with innovations introduced to incorporate wave setup and apply the method globally. Water level records from tide gauges and a global reanalysis of tide and surge levels are integrated with a global ocean wave reanalysis. Subsequently, these data are regionalised, normalised, and aggregated and then fit with a generalised Pareto distribution. The regional distributions are downscaled to the local scale using the tidal range at every location along the global coastline obtained from a global tide model. The results show 8 cm of positive bias at the 1-in-10-year return level when compared to individual tide gauges. The RFA approach offers several advantages over traditional methods, particularly in regions with limited observational data. It overcomes the challenge of short and incomplete observational records by substituting long historical records with a collection of shorter but spatially distributed records. These spatially distributed data not only retain the volume of information but also address the issue of sparse tide gauge coverage in less populated areas and developing nations. The RFA process is illustrated using Cyclone Yasi (2011) as a case study, demonstrating how the approach can improve the characterisation of ESLs in regions prone to tropical cyclone activity. In conclusion, this study provides a valuable resource for quantifying the global coastal flood risk, offering an innovative global methodology that can contribute to preparing for – and mitigating against – coastal flooding.
全球应用区域频率分析极端海平面
摘要沿海地区面临着海平面上升和极端天气事件带来的日益严重的威胁,因此迫切需要对沿海洪水风险进行准确评估。本研究采用区域频率分析 (RFA) 方法,提出了一种估算全球极端海平面(ESL)超标概率的新方法。研究结合了观测数据和模拟后报数据,得出了全球海岸线(不包括南极洲)ESL 超标概率的高分辨率(1 公里)数据集,包括波浪设置。本文介绍的方法是对 Sweet 等人(2022 年)的区域框架的扩展,并引入了创新技术,以纳入波浪设置并将该方法应用于全球。来自验潮仪的水位记录以及全球潮汐和浪涌水位再分析数据与全球海浪再分析数据进行了整合。随后,对这些数据进行区域化、归一化和汇总,然后用广义帕累托分布进行拟合。利用从全球潮汐模型获得的全球海岸线每个位置的潮汐范围,将区域分布缩小到本地尺度。结果显示,与单个验潮仪相比,10 年一遇的正偏差为 8 厘米。与传统方法相比,RFA 方法具有多项优势,尤其是在观测数据有限的地区。它通过收集较短但空间分布较广的记录来替代较长的历史记录,从而克服了观测记录较短且不完整的难题。这些空间分布数据不仅保留了信息量,还解决了人口较少地区和发展中国家验潮仪覆盖范围稀少的问题。以 "雅西 "气旋(2011 年)为案例,对 RFA 过程进行了说明,展示了该方法如何改善易受热带气旋活动影响地区的 ESL 特征。总之,这项研究为量化全球沿海洪水风险提供了宝贵的资源,提供了一种创新的全球方法,有助于防备和减轻沿海洪水。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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