基于计算机模拟的粗糙海面局部极值统计分析

N. Pyko, E. D. Orandarenko, M. Bogachev
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摘要

简介广义极值(GEV)分布是对独立且同分布数据序列的归一化局部最大值统计的极限分布的普遍描述。极值分布通常分为三种不同类型,分别代表不同的函数形式,因此形状也各不相同,也称为 I、II 和 III 型。因此,将某些观测数据序列归入其局部最大值分布的特定类型,并对分布参数进行拟合,可提供有关基本自然或技术过程规律的某些信息。基于雷达的遥感技术是分析海面大型图案和确定波浪参数的普遍工具。反过来,了解从雷达图像中获得的粗糙海面极端值的规律,然后根据风速和风向以及表面流和涌浪的存在情况评估其分布参数,也有助于预测波高。 目标在计算机模拟的基础上,分析在给定风速和涌浪参数下,粗糙海面局部极值分布的函数形式。 材料和方法。对于用加法谐波合成程序模拟的粗糙海面,使用最小均方差技术拟合局部极值分布。然后将拟合参数按照三种预定类型进行分类。 结果。对具有风浪和涌浪的粗糙海面进行了计算机模拟。结果表明,在没有涌浪的情况下,局部最大值的分布可以很好地近似于威布尔分布(III 型 GEV),其参数明确取决于风速。同时,也没有观察到对海深的明显依赖。相反,在有额外涌浪的情况下,局部极值的分布可归结为弗雷谢特(II 型 GEV)分布,其参数额外取决于风浪和涌浪之间的角度。 结论波涛汹涌海域的局部波浪极值分布规律与理论 GEV 近似值十分吻合,分布参数可从波浪的主要特征中推导出来。这表明可通过海面测量预测波高极值,而海面测量可基于远程雷达观测进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Analysis of Local Extrema in Rough Sea Surfaces Based on Computer Simulation
Introduction. Generalized extreme value (GEV) distributions represent a universal description of the limiting distribution of the normalized local maxima statistics for independent and identically distributed data series. Extreme value distributions are commonly classified into three different types representing different functional forms and thus varying in shape, also known as types I, II, and III. Thus, attribution of some observational data series to a particular type of its local maxima distribution, as well as fitting of the distribution parameters, provides certain information about the laws governing the underlying natural or technogenic process. Radar-based remote sensing techniques represent a ubiquitous tool for analyzing large patterns of the sea surface and determining the parameters of the waves. In turn, understanding the laws governing the extreme values in the rough sea surface obtained from their radar images followed by evaluation of their distribution parameters, depending on the wind speed and direction, as well as the presence of surface currents and swells, can be useful for predicting wave height.   Aim. Analysis of the functional forms governing the local extreme value distributions in a rough sea surface for the given wind and swell parameters based on computer simulations.   Materials and methods. For the rough sea surface simulated by an additive harmonic synthesis procedure, the local extreme value distribution was fitted using the least-mean-squares technique. The fitted parameters were then used for their classification according to the three predetermined types.   Results. Computer simulations of a rough sea surface with combined wind and swell waves were performed. It is shown that the distribution of local maxima in the absence of swell waves could be well approximated by theWeibull (type III GEV) distribution, with the parameters explicitly depending on the wind speed. At the same time, no significant dependence on the sea depth was observed. On the contrary, in the presence of additional swell waves, the distribution of local extrema could be rather attributed to the Fréchet (type II GEV) distribution, with the parameters additionally depending on the angle between the wind and swell waves.   Conclusion. The laws governing the distributions of local wave extrema in rough seas are in a good agreement with the theoretical GEV approximations, with the distribution parameters being deductible from the key features of the waves. This indicates the predictability of wave height extrema from sea surface measurements, which can be performed based on remote radar observations.
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