基于约束广义似然比检验的臭氧测量异常统计检测

F. Harrou, L. Fillatre, M. Bobbia, I. Nikiforov
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引用次数: 19

摘要

由于臭氧异常污染对环境和健康的不利影响,监测臭氧浓度是一项必要的要求。本文的目的有两个:第一,模拟地面臭氧浓度,第二,检测异常臭氧测量值。为此,开发了一个带有外生变量的多维季节性自回归移动平均(SARMAX)模型来描述地面臭氧浓度。用于拟合模型的数据库由法国上诺曼底地区通过空气质量监测站网络收集的两组数据组成。对环境臭氧污染的良好描述可能是促进检测臭氧测量异常的工具。本文的主要目标是在区域臭氧监测网的框架下,检测由空气污染异常或传感器故障引起的异常污染测量。提出的约束广义似然比(CGLR)异常检测方案成功地应用于采集数据。将该方法的检测结果与Air Normand空气监测协会公布的结果进行了比较。
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Statistical detection of abnormal ozone measurements based on Constrained Generalized Likelihood Ratio test
Monitoring ozone concentrations is an essential requirement due to the adverse environmental and health effects of abnormal ozone pollution. The objective of this paper is twofold: first, to model ground level ozone concentrations, and second, to detect abnormal ozone measurements. Towards this end, a multidimensional Seasonal AutoRegressive Moving Average with eXogenous variable (SARMAX) model has been developed to describe ground level ozone concentrations. The database used to fit the models consists of two data sets collected from Upper Normandy region, France, via the network of air quality monitoring stations. A good description of the ambient ozone pollution may be a tool for facilitating detection of abnormalities in ozone measurements. The overarching goal of this paper is to detect abnormal pollution measurements caused by air pollution anomalies or malfunctioning sensors in the framework of regional ozone surveillance network. The proposed Constrained Generalized Likelihood Ratio (CGLR) anomaly detection scheme is successfully applied to collected data. The detection results of the proposed method are compared to that declared by Air Normand air monitoring association.
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