使用功能异常值检测方法识别极端降雨事件

M. A. Hael, Y. Yuan
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引用次数: 1

摘要

异常值检测技术在探索极端事件的异常数据方面发挥着至关重要的作用,这些数据在功能数据的建模和预测中具有重要影响。函数方法有一种以图形方式识别异常值的有效方法,在经典分析中,通过原始数据图可能看不到异常值。本研究的主要目的是使用取决于深度和密度函数的函数异常值检测方法来检测极端降雨事件。为了识别长时间间隔内降雨量变化的异常事件,本工作基于1998年至2019年塔伊兹地区的月平均降雨量。数据是从热带降雨测量任务中提取的,分析已由R软件处理。本研究采用的方法包括彩虹图、功能最高密度区盒图和功能袋图。根据目前的结果,与函数深度袋图方法相比,函数密度盒图方法已被证明在检测异常值方面是有效的。总之,目前的研究结果表明,塔伊兹地区过去二十年的降雨量受到1999年、2004年、2005年和2009年极端事件的影响。
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Identifying Extreme Rainfall Events Using Functional Outliers Detection Methods
Outlier detection techniques play a vital role in exploring unusual data of extreme events that have a critical effect considerably in the modeling and forecasting of functional data. The functional methods have an effective way of identifying outliers graphically, which might not be visible through the original data plot in classical analysis. This study’s main objective is to detect the extreme rainfall events using functional outliers detection methods depending on the depth and density functions. In order to identify the unusual events of rainfall variation over long time intervals, this work conducts based on the average monthly rainfall of the Taiz region from 1998 to 2019. Data were extracted from the Tropical Rainfall Measuring Mission and the analysis has been processed by R software. The approaches applied in this study involve rainbow plots, functional highest density region box-plot as well as functional bag-plot. According to the current results, the functional density box-plot method has proven effective in detecting outlier compared to the functional depth bag-plot method. In conclusion, the results of the current study showed that the rainfall over the Taiz region during the last two decades was influenced by the extreme events of years 1999, 2004, 2005, and 2009.
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