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Exploratory functional flood frequency analysis and outlier detection

机译:探索性功能洪水频率分析和异常值检测

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摘要

The prevention of flood risks and the effective planning and management of water resources require river flows to be continuously measured and analyzed at a number of stations. For a given station, a hydrograph can be obtained as a graphical representation of the temporal variation of flow over a period of time. The information provided by the hydrograph is essential to determine the severity of extreme events and their frequencies. A flood hydrograph is commonly characterized by its peak, volume, and duration. Traditional hydrological frequency analysis (FA) approaches focused separately on each of these features in a univariate context. Recent multivariate approaches considered these features jointly in order to take into account their dependence structure. However, all these approaches are based on the analysis of a number of characteristics and do not make use of the full information content of the hydrograph. The objective of the present work is to propose a new framework for FA using the hydrographs as curves: functional data. In this context, the whole hydrograph is considered as one infinite-dimensional observation. This context allows us to provide more effective and efficient estimates of the risk associated with extreme events. The proposed approach contributes to addressing the problem of lack of data commonly encountered in hydrology by fully employing all the information contained in the hydrographs. A number of functional data analysis tools are introduced and adapted to flood FA with a focus on exploratory analysis as a first stage toward a complete functional flood FA. These methods, including data visualization, location and scale measures, principal component analysis, and outlier detection, are illustrated in a real-world flood analysis case study from the province of Quebec, Canada.
机译:为了预防洪灾风险和有效地规划和管理水资源,需要在多个站点连续测量和分析河流流量。对于给定的站,可以获取水位图,作为一段时间内流量随时间变化的图形表示。水文图提供的信息对于确定极端事件的严重程度及其发生频率至关重要。洪水水位图通常以其峰值,流量和持续时间为特征。传统的水文频率分析(FA)方法在单变量情况下分别关注这些特征中的每一个。最近的多元方法共同考虑了这些特征,以考虑其依赖性结构。但是,所有这些方法都是基于对许多特征的分析,并且没有利用水位图的全部信息内容。本工作的目的是使用水位图作为曲线提出FA的新框架:功能数据。在这种情况下,整个水文图被视为一个无限维的观测。在这种情况下,我们可以对极端事件相关的风险提供更有效的评估。通过充分利用水位图中包含的所有信息,提出的方法有助于解决水文学中普遍遇到的数据不足的问题。引入了许多功能数据分析工具并使其适用于泛洪FA,重点是探索性分析,这是迈向完整功能泛滥FA的第一步。来自加拿大魁北克省的真实洪水分析案例研究说明了这些方法,包括数据可视化,位置和规模度量,主成分分析和异常值检测。

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  • 来源
    《Water resources research》 |2012年第4期|p.W04514.1-W04514.20|共20页
  • 作者单位

    Canada Research Chair on the Estimation of Hydrometeorological Variables, INRS-ETE, 490 rue de la Couronne, Quebec, QC G1K 9A9, Canada;

    Laboratoire EQUIPPE, Universite Charles De Gaulle,Lille 3, Maison de la recherche, domaine du pont de bois, BP 60149,F-59653 Villeneuve d'Ascq CEDEX, France;

    Canada Research Chair on the Estimation of Hydrometeorological Variables, INRS-ETE, 490 rue de la Couronne, Quebec, QC G1K 9A9, Canada,Masdar Institute of Science and Technology, PO Box 54224, Abu Dhabi, United Arab Emirates;

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