多变量水参数在水监测应用中的事件检测

Yingchi Mao, Hai Qi, Xiaoli Chen, Xiaofang Li
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引用次数: 1

摘要

从供水网络中部署的水浸传感器网络中获取多个水质参数的实时时间序列数据。准确、高效地检测和预警污染事件,防止污染扩散,是污染发生时最重要的问题之一。为了全面降低事件检测偏差,提出了一种多变量时间序列数据时间异常事件检测算法(M-TAEDA)。在M-TAEDA中,首先采用Back Propagation神经网络模型对多个水质参数的时间序列数据进行分析,并计算可能的异常值。然后,M-TAEDA算法通过贝叶斯序列分析确定潜在污染事件,估计污染事件发生的概率。最后,基于供水系统的多事件概率融合进行决策。实验结果表明,与单变量时间异常事件检测算法(S-TAEDA)的时间事件检测相比,本文提出的M-TAEDA算法与BP神经网络模型相比,准确率达到90%,检出率提高约40%,虚警率降低约45%。
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Event Detection with Multivariate Water Parameters in the Water Monitoring Applications
The real-time time series data of multiple water quality parameters are obtained from the water sensor networks deployed in the water supply network. The accurate and efficient detection and warning of contamination events to prevent pollution from spreading is one of the most important issues when the pollution occurs. In order to comprehensively reduce the event detection deviation, a Temporal Abnormal Event Detection Algorithm for Multivariate time series data (M-TAEDA) was proposed. In M-TAEDA, first, Back Propagation neural network models are adopted to analyze the time series data of multiple water quality parameters and calculate the possible outliers. Then, M-TAEDA algorithm determines the potential contamination events through Bayesian sequential analysis to estimate the probability of a contamination event. Finally, it can make decision based on the multiple event probabilities fusion in the water supply system. The experimental results indicate that the proposed M-TAEDA algorithm can obtain the 90% accuracy with BP neural network model and improve the rate of detection about 40% and reduce the false alarm rate about 45%, compared with the temporal event detection of Single Variate Temporal Abnormal Event Detection Algorithm (S-TAEDA).
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