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Integrating fuzzy logic with Pearson correlation to optimize contaminant detection in water distribution system with uncertainty analyses

机译:将模糊逻辑与Pearson相关性集成在一起,以不确定性分析优化供水系统中的污染物检测

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摘要

An effective detection algorithm, supervising an online water system, is expected to monitor changes in water quality due to any contamination. However, contemporary event detection methods are often criticized for their high false detection rates as well as for their low true detection rates. This study proposes two new event detection methods for contamination that use multi-objective optimization by investigating the correlation between multiple types of conventional water quality sensors. While the first method incorporates non-dominated sorting genetic algorithm II (NSGA-II) with the Pearson correlation Euclidean distance (PE) method in order to maximize the probability of detection (PD) and to minimize the false alarm rate (FAR), the second method introduces fuzzy logic in order to establish a degree of correlations ranking that replaces the correlation relationship indicator threshold. Optimization is performed by using NSGA-II in the second method. The results of this study show that the incorporation of fuzzy logic with NSGA-II in event detection method have produced better results in event detection. The results also show that both methods detect all true events without producing any false alarm rates. Moreover, an uncertainty analysis on input sensor signals is performed to test the robustness of the fuzzy logic-based event detection method by employing the widely used Monte Carlo simulation (MCS) technique. Four different scenarios of uncertainty are analyzed, in particular, and the findings suggest that the proposed method is very effective in minimizing false alarm rates and maximizing true events detection, and hence, it can be regarded as one of the novel approaches to demonstrate its application in the development of an event detection algorithm.
机译:期望有一种有效的检测算法,可以监督在线水系统,以监视由于任何污染引起的水质变化。但是,现代事件检测方法经常因其较高的错误检测率和较低的真实检测率而受到批评。这项研究提出了两种新的污染事件检测方法,它们通过研究多种类型的常规水质传感器之间的相关性,使用了多目标优化。虽然第一种方法将非控制性排序遗传算法II(NSGA-II)与Pearson相关欧几里得距离(PE)方法相结合,以最大程度地提高检测概率(PD)和最小化虚警率(FAR),第二种方法引入模糊逻辑,以建立相关度等级,以取代相关关系指标阈值。通过第二种方法使用NSGA-II进行优化。研究结果表明,在事件检测方法中将模糊逻辑与NSGA-II结合使用可产生更好的事件检测结果。结果还表明,两种方法都可以检测所有真实事件,而不会产生任何误报率。此外,通过采用广泛使用的蒙特卡洛模拟(MCS)技术,对输入传感器信号进行不确定性分析,以测试基于模糊逻辑的事件检测方法的鲁棒性。特别是分析了四种不同的不确定性场景,研究结果表明,该方法在最小化误报率和最大化真实事件检测方面非常有效,因此,可以被视为证明其应用的新颖方法之一。在事件检测算法的开发中。

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