OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS

The development of Wireless Sensor Networks (WSNs) has been attained in the past few years due to its important using in wide range of application. The readings of data derived from WSN nodes are not always accurate and may contain abnormal data. This paper proposed an anomaly detection and classifi...

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Main Authors: Hussein Hassan Shia, Mohammed Ali Tawfeeq, Sawsan Mousa Mahmoud
Format: Article
Language:Arabic
Published: Mustansiriyah University/College of Engineering 2020-03-01
Series:Journal of Engineering and Sustainable Development
Subjects:
Online Access:https://www.iasj.net/iasj?func=fulltext&aId=180642
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spelling doaj-4169ba5908234cfc8e224e1b3d224a472020-11-25T03:40:08ZaraMustansiriyah University/College of EngineeringJournal of Engineering and Sustainable Development2520-09172520-09252020-03-01240211710.31272/jeasd.24.2.1OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKSHussein Hassan Shia0Mohammed Ali Tawfeeq1Sawsan Mousa Mahmoud2M.Sc. Student, Computer Engineering Department, Mustansiriyah University, Baghdad, IraqAssistant Prof., Computer Engineering Department, Mustansiriyah University, Baghdad, IraqAssistant Prof., Computer Engineering Department, Mustansiriyah University, Baghdad, IraqThe development of Wireless Sensor Networks (WSNs) has been attained in the past few years due to its important using in wide range of application. The readings of data derived from WSN nodes are not always accurate and may contain abnormal data. This paper proposed an anomaly detection and classification algorithm in WSNs. At first, an integration of Contourlet Transform (CT) algorithm and One Class Support Vector Machine (OCSVM) algorithm (CT-OCSVM) is utilized to detect outliers then Fuzzy Inference System (FIS) is used to identify the source of these outliers. The underlying aim of this paper focuses on treating the collected streams of data as raw datum of an image, which is then passed through some filters using CT to get compressed size of directional subbands coefficients. The coefficients of CT are examined by OCSVM algorithm to detect anomalies. Finally the source of anomalies is identified based on using FIS and by exploiting the spatial temporal correlation existing between the sensed data. The integrated algorithm is tested using different types of filters. Real datasets collected from a small WSN constructed in a local lab are used for testing the integrated algorithms. The simulation results have shown a high rate of accurate classification with high detection rate and low false alarm rate.https://www.iasj.net/iasj?func=fulltext&aId=180642contourlet transformfuzzy inference systemone class support vector machineoutlierwireless sensor networks
collection DOAJ
language Arabic
format Article
sources DOAJ
author Hussein Hassan Shia
Mohammed Ali Tawfeeq
Sawsan Mousa Mahmoud
spellingShingle Hussein Hassan Shia
Mohammed Ali Tawfeeq
Sawsan Mousa Mahmoud
OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS
Journal of Engineering and Sustainable Development
contourlet transform
fuzzy inference system
one class support vector machine
outlier
wireless sensor networks
author_facet Hussein Hassan Shia
Mohammed Ali Tawfeeq
Sawsan Mousa Mahmoud
author_sort Hussein Hassan Shia
title OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS
title_short OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS
title_full OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS
title_fullStr OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS
title_full_unstemmed OUTLIER DETECTION TECHNIQUE USING CT-OCSVM AND FUZZY RULE-BASED SYSTEM IN WIRELESS SENSOR NETWORKS
title_sort outlier detection technique using ct-ocsvm and fuzzy rule-based system in wireless sensor networks
publisher Mustansiriyah University/College of Engineering
series Journal of Engineering and Sustainable Development
issn 2520-0917
2520-0925
publishDate 2020-03-01
description The development of Wireless Sensor Networks (WSNs) has been attained in the past few years due to its important using in wide range of application. The readings of data derived from WSN nodes are not always accurate and may contain abnormal data. This paper proposed an anomaly detection and classification algorithm in WSNs. At first, an integration of Contourlet Transform (CT) algorithm and One Class Support Vector Machine (OCSVM) algorithm (CT-OCSVM) is utilized to detect outliers then Fuzzy Inference System (FIS) is used to identify the source of these outliers. The underlying aim of this paper focuses on treating the collected streams of data as raw datum of an image, which is then passed through some filters using CT to get compressed size of directional subbands coefficients. The coefficients of CT are examined by OCSVM algorithm to detect anomalies. Finally the source of anomalies is identified based on using FIS and by exploiting the spatial temporal correlation existing between the sensed data. The integrated algorithm is tested using different types of filters. Real datasets collected from a small WSN constructed in a local lab are used for testing the integrated algorithms. The simulation results have shown a high rate of accurate classification with high detection rate and low false alarm rate.
topic contourlet transform
fuzzy inference system
one class support vector machine
outlier
wireless sensor networks
url https://www.iasj.net/iasj?func=fulltext&aId=180642
work_keys_str_mv AT husseinhassanshia outlierdetectiontechniqueusingctocsvmandfuzzyrulebasedsysteminwirelesssensornetworks
AT mohammedalitawfeeq outlierdetectiontechniqueusingctocsvmandfuzzyrulebasedsysteminwirelesssensornetworks
AT sawsanmousamahmoud outlierdetectiontechniqueusingctocsvmandfuzzyrulebasedsysteminwirelesssensornetworks
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