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Extreme weather exposure identification for road networks – a comparative assessment of statistical methods

机译:道路网络极端天气曝光识别 - 统计方法的比较评估

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The assessment of road infrastructure exposure to extreme weather events is of major importance for scientists and practitioners alike. In this study, we compare the different extreme value approaches and fitting methods with respect to their value for assessing the exposure of transport networks to extreme precipitation and temperature impacts. Based on an Austrian data set from 25?meteorological stations representing diverse meteorological conditions, we assess the added value of partial duration series (PDS) over the standardly used annual maxima series (AMS) in order to give recommendations for performing extreme value statistics of meteorological hazards. Results show the merits of the robust L-moment estimation, which yielded better results than maximum likelihood estimation in 62?% of all cases. At the same time, results question the general assumption of the threshold excess approach (employing PDS) being superior to the block maxima approach (employing AMS) due to information gain. For low return periods (non-extreme events) the PDS approach tends to overestimate return levels as compared to the AMS approach, whereas an opposite behavior was found for high return levels (extreme events). In extreme cases, an inappropriate threshold was shown to lead to considerable biases that may outperform the possible gain of information from including additional extreme events by far. This effect was visible from neither the square-root criterion nor standardly used graphical diagnosis (mean residual life plot) but rather from a direct comparison of AMS and PDS in combined quantile plots. We therefore recommend performing AMS and PDS approaches simultaneously in order to select the best-suited approach. This will make the analyses more robust, not only in cases where threshold selection and dependency introduces biases to the PDS approach but also in cases where the AMS contains non-extreme events that may introduce similar biases. For assessing the performance of extreme events we recommend the use of conditional performance measures that focus on rare events only in addition to standardly used unconditional indicators. The findings of the study directly address road and traffic management but can be transferred to a range of other environmental variables including meteorological and hydrological quantities.
机译:道路基础设施对极端天气事件的评估是科学家和从业者的主要重要性。在这项研究中,我们比较不同的极值方法和拟合方法,了解它们的价值,以评估运输网络暴露于极端降水和温度影响。基于奥地利数据组成的25次数据集,代表多样化的气象条件,我们通过标准使用的年度最大值系列(AMS)评估部分持续时间系列(PDS)的附加值,以便为执行气象极值统计数据提供建议危险。结果表明了强大的L-onlos估计的优点,它比所有情况的62%的最大似然估计产生了更好的结果。同时,结果质疑阈值多余方法的一般假设(采用PDS)优于由于信息增益而上的块最大方法(雇用AMS)。对于低返回期(非极端事件),与AMS方法相比,PDS方法往往估计返回水平,而发现高返回水平(极端事件)相反的行为。在极端情况下,显示不适当的阈值,以导致相当大的偏差,可能优于来自包括额外极端事件的信息的可能增加增益。从方形根标准也可以看到这种效果,也可以是标准使用的图形诊断(平均剩余寿命图),而是从综合地块中直接比较AMS和PDS。因此,我们建议同时执行AMS和PDS方法,以便选择最适合的方法。这将使分析更加强大,不仅在阈值选择和依赖性对PDS方法引入偏差的情况下,而且在AMS包含可能引入类似偏差的非极端事件的情况下也是如此。为了评估极端事件的表现,我们建议使用根据标准使用的无条件指标除了罕见事件上的条件性能措施。该研究的调查结果直接地址地址道路和交通管理,但可以转移到一系列其他环境变量,包括气象和水文量。

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