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Water quality monitoring with online change-point detection methods

机译:在线变化点检测方法进行水质监测

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摘要

We develop an approach for water quality time series monitoring and contamination event detection. The approach combines affine projection algorithms and an autoregressive (AR) model to predict water quality time series. Then, we apply online change-point detection methods to the estimated residuals to determine the presence, or not, of contamination events. Particularly, we compare the performance of four change-point detection methods, namely, sequential probability ratio test (SPRT), cumulative sum (CUSUM), binomial event discriminator (BED), and online Bayesian change-point detection (OBCPD), by using residuals obtained from four water quality time series, chlorine, conductivity, total organic carbon, and turbidity. Our fundamental criterion for the performance evaluation of the four change-point detection methods is given by the receiver operating characteristic (ROC) curve which is characterized by the true positive rate as a function of the false positive rate. We highlight with detailed experiments that OBCPD provides the best performance for large contamination events, and we also provide insight on the choice of change-point detection algorithms to consider for designing efficient contamination detection schemes.
机译:我们开发了一种用于水质时间序列监测和污染事件检测的方法。该方法结合了仿射投影算法和自回归(AR)模型来预测水质时间序列。然后,我们将在线变化点检测方法应用于估计的残差,以确定是否存在污染事件。特别是,我们使用以下方法比较了四种变化点检测方法的性能,即顺序概率比检验(SPRT),累积和(CUSUM),二项式事件判别器(BED)和在线贝叶斯变化点检测(OBCPD)。从四个水质时间序列,氯,电导率,总有机碳和浊度获得的残渣。接收器工作特性(ROC)曲线给出了我们对四种变化点检测方法的性能评估的基本标准,该曲线的特征在于真实的阳性率是假阳性率的函数。我们通过详细的实验强调了OBCPD对于大型污染事件提供了最佳性能,并且我们还提供了有关选择更改点检测算法的见解,以考虑设计有效的污染检测方案。

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