极值分析预测极端风速的可靠性

N. Cook
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引用次数: 1

摘要

通过从代表性已知分布中抽取样本,评估了大平均复发间隔(MRI)下极端风速预测的可靠性。将经典的渐近广义极值分布(GEV)和广义Pareto分布(GPD)与不完全收敛于正确渐近线的当代次渐近Gumbel分布进行了比较。亚渐近模型通过改进的Gringorten方法实现epoch最大值,通过XIMIS方法实现峰值超过阈值。在所有情况下,平均偏置误差都是最小的,因此,由标准误差表示的变异性成为主要的可靠性度量。由于额外的亚历元数据,峰值超过阈值(POT)方法总是比历元方法更可靠。广义渐近方法总是比次渐近方法更不可靠,这一因素随着MRI的增加而增加。这项研究通过表明GEV和GPD在实践中也提供了最不可靠的预测,从而加强了先前发表的基于理论的论点,即GEV和GPD不适合极端风速模型。结果表明,一种新的两步Weibull-XIMIS混合方法具有较好的可靠性。
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Reliability of Extreme Wind Speeds Predicted by Extreme-Value Analysis
The reliability of extreme wind speed predictions at large mean recurrence intervals (MRI) is assessed by bootstrapping samples from representative known distributions. The classical asymptotic generalized extreme value distribution (GEV) and the generalized Pareto (GPD) distribution are compared with a contemporary sub-asymptotic Gumbel distribution that accounts for incomplete convergence to the correct asymptote. The sub-asymptotic model is implemented through a modified Gringorten method for epoch maxima and through the XIMIS method for peak-over-threshold values. The mean bias error is shown to be minimal in all cases, so that the variability expressed by the standard error becomes the principal reliability metric. Peak-over-threshold (POT) methods are shown to always be more reliable than epoch methods due to the additional sub-epoch data. The generalized asymptotic methods are shown to always be less reliable than the sub-asymptotic methods by a factor that increases with MRI. This study reinforces the previously published theory-based arguments that GEV and GPD are unsuitable models for extreme wind speeds by showing that they also provide the least reliable predictions in practice. A new two-step Weibull-XIMIS hybrid method is shown to have superior reliability.
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