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首页> 外文期刊>Journal of Environmental Management >Performance evaluation for three pollution detection methods using data from a real contamination accident
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Performance evaluation for three pollution detection methods using data from a real contamination accident

机译:使用来自实际污染事故的数据对三种污染检测方法的性能评估

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Early warning systems have been widely deployed to safeguard water security. Many contamination detection methods have been developed and evaluated in the past decades. Although encouraging detection performance has been obtained and reported, these evaluations mainly used artificial or laboratory data. The evaluation of detection performance with data from real contamination accidents has rarely been conducted. Implementation of contamination event methods without full assessment using field data might lead to failure of an early warning system. In this paper, the detection performance of three contamination detection methods, a Pearson correlation Euclidean distance (PE) based detection method, a multivariate Euclidean distance (MED) method and a linear prediction filter (LPF) method, was evaluated using data from a real contamination accident Results improve understanding of the implementation of detection methods to field situations and show that all methods are prone to yielding worse detection performance when applied to data from a real contamination accident. They also revealed that the Pearson correlation Euclidean distance based method is more capable of differentiating between equipment noise and presence of contamination and has greater potential to be used in real field situations than the MED and LPF methods.
机译:预警系统已广泛部署以维护水安全。在过去的几十年中,已经开发并评估了许多污染物检测方法。尽管已获得并报告了令人鼓舞的检测性能,但这些评估主要使用人工或实验室数据。很少使用来自实际污染事故的数据对检测性能进行评估。在没有使用现场数据进行全面评估的情况下实施污染事件方法可能会导致预警系统故障。在本文中,使用真实数据对三种污染检测方法的检测性能进行了评估:基于皮尔逊相关欧氏距离(PE)的检测方法,多元欧氏距离(MED)方法和线性预测过滤器(LPF)方法。污染事故的结果使人们更好地了解了针对现场情况的检测方法的实现,并表明,将所有方法应用于实际污染事故的数据时,都倾向于产生较差的检测性能。他们还发现,基于皮尔逊相关欧几里德距离的方法比MED和LPF方法更能区分设备噪声和污染物的存在,并且在实际情况下具有更大的潜力。

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