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Study of Water Quality in a Spanish River Based on Statistical Process Control and Functional Data Analysis

机译:基于统计过程控制和功能数据分析的西班牙河水质研究

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The control of chemical and physicochemical properties of water bodies is essential to guarantee a proper environment, not only for the species of a certain habitat, but also for human health. In this sense, the study of pollution and its variability can be assimilated to the detection of outliers (anomalous values that indicate the deviation of the measured variable compared to the defined objectives). In this paper, two methods have been used and compared for detecting outliers: statistical process control and functional data analysis (FDA). These techniques have been tested on three key water quality variables: turbidity, electrical conductivity and dissolved oxygen. Data were continuously recorded in 2008 using an automatic monitoring station located in the Ebro River (NE Spain). The results of the research show FDA as a powerful tool for this kind of study, since it takes into account the time correlation structure of the data. This research is focused on an essential natural resource, water. The study intends to provide analysts with a methodology for detecting anomalous values (possible pollution episodes) within a large dataset of measurements. The collection of information of natural resources is a basic task for their management and control, but the analysis of gathered data is frequently difficult due to the vast number of measurements taken in the field. This work is focused on water, but the methodologies presented here can be applied to other natural data. Thus, geoscientists and geoengineers might find this research useful for interpreting many kinds of data and detecting anomalous episodes among them with an objective approach.
机译:控制水体的化学和物理化学特性对于确保适当的环境至关重要,这不仅对于某些栖息地的物种,而且对于人类健康都是如此。从这个意义上讲,对污染及其变率的研究可以与异常值的检测(表示异常值,该异常值指示所测变量与已定义目标的偏差)进行同化。在本文中,使用了两种方法并比较了检测异常值的方法:统计过程控制和功能数据分析(FDA)。这些技术已经在三个关键的水质变量上进行了测试:浊度,电导率和溶解氧。在2008年,使用位于埃布罗河(西班牙内布拉斯加州)的自动监测站连续记录了数据。研究结果表明FDA是进行此类研究的有力工具,因为它考虑了数据的时间相关性结构。这项研究的重点是必不可少的自然资源水。该研究旨在为分析人员提供一种在大型测量数据集中检测异常值(可能的污染事件)的方法。收集自然资源信息是对其进行管理和控制的基本任务,但是由于在现场进行了大量的测量,因此收集数据的分析通常很困难。这项工作的重点是水,但是这里介绍的方法可以应用于其他自然数据。因此,地球科学家和地球工程师可能会发现这项研究对于解释多种数据并以客观的方法检测其中的异常事件很有用。

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