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The intrinsic dependence structure of peak volume duration and average intensity of hyetographs and hydrographs

机译:抵押图和水位图的峰值体积持续时间和平均强度的内在依赖性结构

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摘要

[1] The information contained in hyetographs and hydrographs is often synthesized by using key properties such as the peak or maximum value Xp, volume V, duration D, and average intensity I. These variables play a fundamental role in hydrologic engineering as they are used, for instance, to define design hyetographs and hydrographs as well as to model and simulate the rainfall and streamflow processes. Given their inherent variability and the empirical evidence of the presence of a significant degree of association, such quantities have been studied as correlated random variables suitable to be modeled by multivariate joint distribution functions. The advent of copulas in geosciences simplified the inference procedures allowing for splitting the analysis of the marginal distributions and the study of the so-called dependence structure or copula. However, the attention paid to the modeling task has overlooked a more thorough study of the true nature and origin of the relationships that link , and I. In this study, we apply a set of ad hoc bootstrap algorithms to investigate these aspects by analyzing the hyetographs and hydrographs extracted from 282 daily rainfall series from central eastern Europe, three 5 min rainfall series from central Italy, 80 daily streamflow series from the continental United States, and two sets of 200 simulated universal multifractal time series. Our results show that all the pairwise dependence structures between , and I exhibit some key properties that can be reproduced by simple bootstrap algorithms that rely on a standard univariate resampling without resort to multivariate techniques. Therefore, the strong similarities between the observed dependence structures and the agreement between the observed and bootstrap samples suggest the existence of a numerical generating mechanism based on the superposition of the effects of sampling data at finite time steps and the process of summing realizations of independent random variables over random durations. We also show that the pairwise dependence structures are weakly dependent on the internal patterns of the hyetographs and hydrographs, meaning that the temporal evolution of the rainfall and runoff events marginally influences the mutual relationships of , and I. Finally, our findings point out that subtle and often overlooked deterministic relationships between the properties of the event hyetographs and hydrographs exist. Confusing these relationships with genuine stochastic relationships can lead to an incorrect application of multivariate distributions and copulas and to misleading results.
机译:[1]水位图和水位图中包含的信息通常是通过使用关键属性(例如,峰值或最大值Xp,体积V,持续时间D和平均强度I)来合成的。这些变量在使用时在水文工程中起着基本作用例如,定义设计曲线图和水位图,以及对降雨和水流过程进行建模和模拟。鉴于其固有的可变性和存在显着关联度的经验证据,已对此类数量进行了研究,将其作为适用于多元联合分布函数建模的相关随机变量。 copulas在地球科学中的出现简化了推论程序,从而可以分开分析边际分布和研究所谓的依存结构或copula。但是,对建模任务的关注却忽略了对链接和I关系的真实性质和起源的更彻底的研究。在这项研究中,我们应用了一组特殊的自举算法来分析这些方面,从而研究这些方面。取自欧洲中部的282个日降雨序列,意大利中部的3个5分钟降雨序列,来自美国大陆的80个日流量序列以及两组200个模拟的通用多重分形时间序列集的断面图和水文图。我们的结果表明,和之间的所有成对依赖性结构都显示了一些关键属性,这些属性可以通过依赖于标准单变量重采样而无需借助多变量技术的简单自举算法来重现。因此,观察到的依存结构与观察到的和自举样本之间的一致性之间的强烈相似性表明,存在基于有限时间步长的采样数据的影响和独立随机性实现的求和过程叠加的数值生成机制。随机持续时间的变量。我们还表明,成对依赖关系结构很少依赖于海图和水位图的内部模式,这意味着降雨和径流事件的时间演变略微影响了和的相互关系。最后,我们的发现指出,常常会忽略事件符号图和水位图的属性之间的确定性关系。将这些关系与真实的随机关系相混淆会导致多元分布和copulas的错误应用,并导致误导性结果。

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