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Seasonal effects of extreme surges

机译:激增的季节性影响

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摘要

Extreme value analysis of sea levels is an essential component of risk analysis and protection strategy for many coastal regions. Since the tidal component of the sea level is deterministic, it is the stochastic variation in extreme surges that is the most important to model. Historically, this modelling has been accomplished by fitting classical extreme value models to series of annual maxima data. Recent developments in extreme value modelling have led to alternative procedures that make better use of available data, and this has led to much refined estimates of extreme surge levels. However, one aspect that has been routinely ignored is seasonality. In an earlier study we identified strong seasonal effects at one of the number of locations along the eastern coastline of the United Kingdom. In this article, we discuss the construction and inference of extreme value models for processes that include components of seasonality in greater detail. We use a point process representation of extreme value behaviour, and set our inference in a Bayesian framework, using simulation-based techniques to resolve the computational issues. Though contemporary, these techniques are now widely used for extreme value modelling. However, the issue of seasonality requires delicate consideration of model specification and parameterization, especially for efficient implementation via Markov chain Monte Carlo algorithms, and this issue seems not to have been much discussed in the literature. In the present paper we make some suggestions for model construction and apply the resultant model to study the characteristics of the surge process, especially in terms of its seasonal variation, on the eastern UK coastline. Furthermore, we illustrate how an estimated model for seasonal surge can be combined with tide records to produce return level estimates for extreme sea levels that accounts for seasonal variation in both the surge and tidal processes.
机译:海平面极值分析是许多沿海地区风险分析和保护策略的重要组成部分。由于海平面的潮汐分量是确定性的,因此建模最重要的是极端潮汐的随机变化。从历史上看,这种建模是通过将经典极值模型拟合到一系列年度最大值数据来完成的。极值模型的最新发展导致了可以更好地利用可用数据的替代程序,这导致了对极端波动水平的更精细的估计。但是,通常被忽略的一个方面是季节性。在较早的研究中,我们确定了英国东部海岸线沿线多个地点之一的强烈季节性影响。在本文中,我们更详细地讨论了包含季节性组成部分的过程的极值模型的构造和推断。我们使用极值行为的点过程表示,并使用基于仿真的技术来解决计算问题,并在贝叶斯框架中进行推断。尽管是现代的,但这些技术现在已广泛用于极值建模。但是,季节性问题需要仔细考虑模型规格和参数化,尤其是对于通过马尔可夫链蒙特卡洛算法进行有效实施而言,这个问题在文献中似乎没有得到太多讨论。在本文中,我们为模型构建提供一些建议,并应用所得模型研究英国东部海岸线上的浪涌过程的特征,尤其是季节性变化。此外,我们说明了如何将季节性潮汐的估计模型与潮汐记录相结合,以产生针对极端海平面的回波水平估计,以说明潮汐和潮汐过程中的季节性变化。

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