Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring

Time series data of multiple water quality parameters are obtained from the water sensor networks deployed in the agricultural 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 p...

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Main Authors: Yingchi Mao, Hai Qi, Ping Ping, Xiaofang Li
Format: Article
Language:English
Published: MDPI AG 2017-12-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/17/12/2806
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spelling doaj-19352669ac3b4880ab1b743638f293322020-11-25T00:58:55ZengMDPI AGSensors1424-82202017-12-011712280610.3390/s17122806s17122806Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water MonitoringYingchi Mao0Hai Qi1Ping Ping2Xiaofang Li3College of Computer and Information, Hohai University, Nanjing 211100, ChinaCollege of Computer and Information, Hohai University, Nanjing 211100, ChinaCollege of Computer and Information, Hohai University, Nanjing 211100, ChinaSchool of Computer Information & Engineering, Changzhou Institute of Technology, Changzhou 213032, ChinaTime series data of multiple water quality parameters are obtained from the water sensor networks deployed in the agricultural 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 pollution occurs. In order to comprehensively reduce the event detection deviation, a spatial–temporal-based event detection approach with multivariate time-series data for water quality monitoring (M-STED) was proposed. The M-STED approach includes three parts. The first part is that M-STED adopts a Rule K algorithm to select backbone nodes as the nodes in the CDS, and forward the sensed data of multiple water parameters. The second part is to determine the state of each backbone node with back propagation neural network models and the sequential Bayesian analysis in the current timestamp. The third part is to establish a spatial model with Bayesian networks to estimate the state of the backbones in the next timestamp and trace the “outlier” node to its neighborhoods to detect a contamination event. The experimental results indicate that the average detection rate is more than 80% with M-STED and the false detection rate is lower than 9%, respectively. The M-STED approach can improve the rate of detection by about 40% and reduce the false alarm rate by about 45%, compared with the event detection with a single water parameter algorithm, S-STED. Moreover, the proposed M-STED can exhibit better performance in terms of detection delay and scalability.https://www.mdpi.com/1424-8220/17/12/2806event detectionback propagation modelmultivariate water quality parameterstime-series dataspatial-temporal modelconnected dominating setwater supply network
collection DOAJ
language English
format Article
sources DOAJ
author Yingchi Mao
Hai Qi
Ping Ping
Xiaofang Li
spellingShingle Yingchi Mao
Hai Qi
Ping Ping
Xiaofang Li
Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring
Sensors
event detection
back propagation model
multivariate water quality parameters
time-series data
spatial-temporal model
connected dominating set
water supply network
author_facet Yingchi Mao
Hai Qi
Ping Ping
Xiaofang Li
author_sort Yingchi Mao
title Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring
title_short Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring
title_full Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring
title_fullStr Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring
title_full_unstemmed Contamination Event Detection with Multivariate Time-Series Data in Agricultural Water Monitoring
title_sort contamination event detection with multivariate time-series data in agricultural water monitoring
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2017-12-01
description Time series data of multiple water quality parameters are obtained from the water sensor networks deployed in the agricultural 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 pollution occurs. In order to comprehensively reduce the event detection deviation, a spatial–temporal-based event detection approach with multivariate time-series data for water quality monitoring (M-STED) was proposed. The M-STED approach includes three parts. The first part is that M-STED adopts a Rule K algorithm to select backbone nodes as the nodes in the CDS, and forward the sensed data of multiple water parameters. The second part is to determine the state of each backbone node with back propagation neural network models and the sequential Bayesian analysis in the current timestamp. The third part is to establish a spatial model with Bayesian networks to estimate the state of the backbones in the next timestamp and trace the “outlier” node to its neighborhoods to detect a contamination event. The experimental results indicate that the average detection rate is more than 80% with M-STED and the false detection rate is lower than 9%, respectively. The M-STED approach can improve the rate of detection by about 40% and reduce the false alarm rate by about 45%, compared with the event detection with a single water parameter algorithm, S-STED. Moreover, the proposed M-STED can exhibit better performance in terms of detection delay and scalability.
topic event detection
back propagation model
multivariate water quality parameters
time-series data
spatial-temporal model
connected dominating set
water supply network
url https://www.mdpi.com/1424-8220/17/12/2806
work_keys_str_mv AT yingchimao contaminationeventdetectionwithmultivariatetimeseriesdatainagriculturalwatermonitoring
AT haiqi contaminationeventdetectionwithmultivariatetimeseriesdatainagriculturalwatermonitoring
AT pingping contaminationeventdetectionwithmultivariatetimeseriesdatainagriculturalwatermonitoring
AT xiaofangli contaminationeventdetectionwithmultivariatetimeseriesdatainagriculturalwatermonitoring
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