Determining return water levels at ungauged coastal sites: a case study for northern Germany

被引:0
作者
Arne Arns
Thomas Wahl
Ivan D. Haigh
Jürgen Jensen
机构
[1] University of Siegen,Research Institute for Water and Environment
[2] University of South Florida,College of Marine Science
[3] University of Siegen,Research Centre Siegen–FoKoS
[4] University of Southampton,Ocean and Earth Science, National Oceanography Centre
[5] University of Western Australia,UWA Oceans Institute
来源
Ocean Dynamics | 2015年 / 65卷
关键词
Extreme value statistics; Storm surges; Coastal flooding; Return periods; Hydrodynamic modeling; North Sea; Germany;
D O I
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中图分类号
学科分类号
摘要
We estimate return periods and levels of extreme still water levels for the highly vulnerable and historically and culturally important small marsh islands known as the Halligen, located in the Wadden Sea offshore of the coast of northern Germany. This is a challenging task as only few water level records are available for this region, and they are currently too short to apply traditional extreme value analysis methods. Therefore, we use the Regional Frequency Analysis (RFA) approach. This originates from hydrology but has been used before in several coastal studies and is also currently applied by the local federal administration responsible for coastal protection in the study area. The RFA enables us to indirectly estimate return levels by transferring hydrological information from gauged to related ungauged sites. Our analyses highlight that this methodology has some drawbacks and may over- or underestimate return levels compared to direct analyses using station data. To overcome these issues, we present an alternative approach, combining numerical and statistical models. First, we produced a numerical multidecadal model hindcast of water levels for the entire North Sea. Predicted water levels from the hindcast are bias corrected using the information from the available tide gauge records. Hence, the simulated water levels agree well with the measured water levels at gauged sites. The bias correction is then interpolated spatially to obtain correction functions for the simulated water levels at each coastal and island model grid point in the study area. Using a recommended procedure to conduct extreme value analyses from a companion study, return water levels suitable for coastal infrastructure design are estimated continuously along the entire coastline of the study area, including the offshore islands. A similar methodology can be applied in other regions of the world where tide gauge observations are sparse.
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页码:539 / 554
页数:15
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