Security behavior analysis in web of things smart environments using deep belief networks

The advancements in modern wireless communications enhances the Internet of Things (IoT) which in turns the extensive variety of applications which covers smart home, healthcare, smart energy, and Industrial 4.0. The idea of the Web of Things (WoT) was established to expand the potential of these sm...

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Main Authors: M. Premkumar, S.R. Ashokkumar, G. Mohanbabu, V. Jeevanantham, S. Jayakumar
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2022-01-01
Series:International Journal of Intelligent Networks
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666603022000203
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author M. Premkumar
S.R. Ashokkumar
G. Mohanbabu
V. Jeevanantham
S. Jayakumar
author_facet M. Premkumar
S.R. Ashokkumar
G. Mohanbabu
V. Jeevanantham
S. Jayakumar
author_sort M. Premkumar
collection DOAJ
description The advancements in modern wireless communications enhances the Internet of Things (IoT) which in turns the extensive variety of applications which covers smart home, healthcare, smart energy, and Industrial 4.0. The idea of the Web of Things (WoT) was established to expand the potential of these smart devices. It enables the devices that are connected through a common network. It has played a significant part in connecting all smart devices over the internet, allowing them to share services and resources globally. However, as devices become more connected, they become more exposed to various forms of malicious activities. The DDoS and DoS attacks are the major one that can disrupt the regular operation of network and expose the malicious information. So detecting and preventing the attacks in the WoT is a significant research area. The deep belief networks based intrusion detection system is proposed in this paper to detect the malicious activities like Normal, Botnet, Brute Force, Dos/DDos, Infiltration, PortScan and Web based attacks in WoTs. We examined the proposed method with the CICIDS2017 dataset for training and testing purposes and also achieved the average of 97.8% of accuracy and 97.6% of detection rate.
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spelling doaj.art-369066fdc0b34a69b7ae8523da34bec62022-12-22T02:55:15ZengKeAi Communications Co., Ltd.International Journal of Intelligent Networks2666-60302022-01-013181187Security behavior analysis in web of things smart environments using deep belief networksM. Premkumar0S.R. Ashokkumar1G. Mohanbabu2V. Jeevanantham3S. Jayakumar4Department of ECE, SSM Institute of Engineering and Technology, Dindigul, India; Corresponding author.Department of CCE, Sri Eshwar College of Engineering, Coimbatore, IndiaDepartment of ECE, SSM Institute of Engineering and Technology, Dindigul, IndiaDepartment of CSE, Vel Tech Rangarajan Dr. Sagunthala R & D Institute of Science and Technology, Chennai, IndiaDepartment of ECE, SSM Institute of Engineering and Technology, Dindigul, IndiaThe advancements in modern wireless communications enhances the Internet of Things (IoT) which in turns the extensive variety of applications which covers smart home, healthcare, smart energy, and Industrial 4.0. The idea of the Web of Things (WoT) was established to expand the potential of these smart devices. It enables the devices that are connected through a common network. It has played a significant part in connecting all smart devices over the internet, allowing them to share services and resources globally. However, as devices become more connected, they become more exposed to various forms of malicious activities. The DDoS and DoS attacks are the major one that can disrupt the regular operation of network and expose the malicious information. So detecting and preventing the attacks in the WoT is a significant research area. The deep belief networks based intrusion detection system is proposed in this paper to detect the malicious activities like Normal, Botnet, Brute Force, Dos/DDos, Infiltration, PortScan and Web based attacks in WoTs. We examined the proposed method with the CICIDS2017 dataset for training and testing purposes and also achieved the average of 97.8% of accuracy and 97.6% of detection rate.http://www.sciencedirect.com/science/article/pii/S2666603022000203DBNDeep learningDoS attacksIntrusion detectionIoTWeb of things
spellingShingle M. Premkumar
S.R. Ashokkumar
G. Mohanbabu
V. Jeevanantham
S. Jayakumar
Security behavior analysis in web of things smart environments using deep belief networks
International Journal of Intelligent Networks
DBN
Deep learning
DoS attacks
Intrusion detection
IoT
Web of things
title Security behavior analysis in web of things smart environments using deep belief networks
title_full Security behavior analysis in web of things smart environments using deep belief networks
title_fullStr Security behavior analysis in web of things smart environments using deep belief networks
title_full_unstemmed Security behavior analysis in web of things smart environments using deep belief networks
title_short Security behavior analysis in web of things smart environments using deep belief networks
title_sort security behavior analysis in web of things smart environments using deep belief networks
topic DBN
Deep learning
DoS attacks
Intrusion detection
IoT
Web of things
url http://www.sciencedirect.com/science/article/pii/S2666603022000203
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