Anomaly detection in wireless sensor network of the "smart home" system

Subject. The paper reviews the problem of anomaly detection in home automation systems. Authors define specificities of the existing security networks and accentuate the need of the detection of informational and physical impact on sensors. Characteristics of the transmitted information and physical...

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Main Authors: Anton Kanev, Aleksandr Nasteka, Catherine Bessonova, Denis Nevmerzhitsky, Aleksei Silaev, Aleksandr Efremov, Kseniia Nikiforova
Format: Article
Language:English
Published: FRUCT 2017-04-01
Series:Proceedings of the XXth Conference of Open Innovations Association FRUCT
Subjects:
Online Access:https://fruct.org/publications/fruct20/files/Kan.pdf
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spelling doaj-2279a85f59fd47f7aa184c19ccc2c6db2020-11-24T21:23:00ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372017-04-017762011812410.23919/FRUCT.2017.8071301Anomaly detection in wireless sensor network of the "smart home" systemAnton Kanev0Aleksandr Nasteka1Catherine Bessonova2Denis Nevmerzhitsky3Aleksei Silaev4Aleksandr Efremov5Kseniia Nikiforova6ITMO University, Saint Petersburg, RussiaITMO University, Saint Petersburg, RussiaITMO University, Saint Petersburg, RussiaITMO University, Saint Petersburg, RussiaITMO University, Saint Petersburg, RussiaITMO University, Saint Petersburg, RussiaITMO University, Saint Petersburg, RussiaSubject. The paper reviews the problem of anomaly detection in home automation systems. Authors define specificities of the existing security networks and accentuate the need of the detection of informational and physical impact on sensors. Characteristics of the transmitted information and physical impacts on automation devices are analysed and used as metrics for the anomalous behavior detection. Various machine learning algorithms for anomaly detection are compared and reviewed. Methods. The paper reviews the anomaly detection method that includes artificial neural networks as a detection tool. In this method characteristics of the security network devices are analysed to detect an anomalous behaviour, and exactly this type of data should be used to train the artificial neural network. This paper describes tools that can be used to implement the offered anomaly detection method. Main results. As an experiment the scenario has been created so that the model of the “Smart home” system produces the data of network information streams and the artificial neural network decides from this data. As a result the training and testing sets has been produced. The configuration of the artificial neural network has been defined as a result of tests. The experiment shows the potential of described method due to the fact that the area under ROC curve is 0.9689, which is better than basic machine learning algorithms performance. Practical importance. The offered method can be used at the development stage while implementation of the information and security systems requiring monitoring of the connected devices. Anomaly detection technology excludes the possibility of the inconspicuous violation of the information's confidentiality and integrity.https://fruct.org/publications/fruct20/files/Kan.pdf information securitysmart buildingautomation deviceartificial neural network
collection DOAJ
language English
format Article
sources DOAJ
author Anton Kanev
Aleksandr Nasteka
Catherine Bessonova
Denis Nevmerzhitsky
Aleksei Silaev
Aleksandr Efremov
Kseniia Nikiforova
spellingShingle Anton Kanev
Aleksandr Nasteka
Catherine Bessonova
Denis Nevmerzhitsky
Aleksei Silaev
Aleksandr Efremov
Kseniia Nikiforova
Anomaly detection in wireless sensor network of the "smart home" system
Proceedings of the XXth Conference of Open Innovations Association FRUCT
information security
smart building
automation device
artificial neural network
author_facet Anton Kanev
Aleksandr Nasteka
Catherine Bessonova
Denis Nevmerzhitsky
Aleksei Silaev
Aleksandr Efremov
Kseniia Nikiforova
author_sort Anton Kanev
title Anomaly detection in wireless sensor network of the "smart home" system
title_short Anomaly detection in wireless sensor network of the "smart home" system
title_full Anomaly detection in wireless sensor network of the "smart home" system
title_fullStr Anomaly detection in wireless sensor network of the "smart home" system
title_full_unstemmed Anomaly detection in wireless sensor network of the "smart home" system
title_sort anomaly detection in wireless sensor network of the "smart home" system
publisher FRUCT
series Proceedings of the XXth Conference of Open Innovations Association FRUCT
issn 2305-7254
2343-0737
publishDate 2017-04-01
description Subject. The paper reviews the problem of anomaly detection in home automation systems. Authors define specificities of the existing security networks and accentuate the need of the detection of informational and physical impact on sensors. Characteristics of the transmitted information and physical impacts on automation devices are analysed and used as metrics for the anomalous behavior detection. Various machine learning algorithms for anomaly detection are compared and reviewed. Methods. The paper reviews the anomaly detection method that includes artificial neural networks as a detection tool. In this method characteristics of the security network devices are analysed to detect an anomalous behaviour, and exactly this type of data should be used to train the artificial neural network. This paper describes tools that can be used to implement the offered anomaly detection method. Main results. As an experiment the scenario has been created so that the model of the “Smart home” system produces the data of network information streams and the artificial neural network decides from this data. As a result the training and testing sets has been produced. The configuration of the artificial neural network has been defined as a result of tests. The experiment shows the potential of described method due to the fact that the area under ROC curve is 0.9689, which is better than basic machine learning algorithms performance. Practical importance. The offered method can be used at the development stage while implementation of the information and security systems requiring monitoring of the connected devices. Anomaly detection technology excludes the possibility of the inconspicuous violation of the information's confidentiality and integrity.
topic information security
smart building
automation device
artificial neural network
url https://fruct.org/publications/fruct20/files/Kan.pdf
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