Abstract

Occurrence probabilities of extreme sea levels required in coastal planning, e.g. for calculating design floods, have been traditionally estimated individually at each tide gauge location. However, these estimates include uncertainties, as sea level observations typically have only a small number of extreme cases such as annual maxima. Moreover, exact information on sea level extremes between the tide gauge locations and incorporation of dependencies between the adjacent stations is often lacking in the analysis. In this study, we use Bayesian hierarchical modeling to estimate return levels of annual maxima of short-term sea level variations related to storm surges in the Finnish coastal region. We use the generalized extreme value (GEV) distribution as the basis and compare three hierarchical model structures of different complexity against tide gauge specific fits. The hierarchical model structures allow to share information on annual maximum sea levels between the neighboring stations and also provide a natural way to estimate uncertainties in the theoretical estimates. The results show that, compared to the tide gauge specific fits, the hierarchical models, which pool information across the stations, provide narrower uncertainty ranges both for the posterior parameter estimates and for the corresponding return levels on most of the tide gauges. The estimated shape parameter of the GEV model is systematically negative for the hierarchical models, which indicates a Weibull-type of behavior for the extremes along the Finnish coast. This also suggests that the hierarchical models can be used to estimate theoretical upper limits of the extremes of short-term sea level variations along the Finnish coast. Depending on the tide gauge and hierarchical model considered, the median value of the theoretical upper limit was 47–73 cm higher than the highest observed sea level.

Highlights

  • Extreme sea level phenomena together with the rising mean sea level introduce hazards both 20 to people and coastal infrastructure by causing migration, loss of functionality and biodiversity, and by decreasing our living habitat

  • Our aim is to assess how Bayesian hierarchical modeling – implemented in a simpler manner compared to Calafat and Marcos (2020) – performs in comparison to tide gauge specific models, when estimating theoretical return levels for extremes related to short-term sea level variations

  • We briefly summarise the main properties of the generalised extreme value distribution (GEV) applied to the extreme sea levels before discussing the chosen modeling approaches

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Summary

Introduction

Extreme sea level phenomena (waves, storm surges, tides, etc.) together with the rising mean sea level introduce hazards both 20 to people and coastal infrastructure by causing migration, loss of functionality and biodiversity, and by decreasing our living habitat. In the Baltic Sea region, sea level extremes are directly associated such hazards as coastal erosion and flooding (e.g., Rutgersson et al, 2021; Weisse et al, 2021). Recent studies have shown that the increase in the mean sea level has exceeded the global average during the past 50 years in the Baltic Sea (Weisse et al, 2021). It is foreseen that the main drivers for long-term changes in the extreme sea levels are changes in the the relative mean sea level and atmospheric conditions.

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