Supervised Machine Learning based Routing Detection for Smart Meter Network

Hasan, MD Raqibull and Zhao, Yanxiao and Wang, Guodong and Luo, Yu and Pu, Lina and Wang, Rui (2019) Supervised Machine Learning based Routing Detection for Smart Meter Network. In: Mobimedia 2019, 29-30 Oct 2019, Wehai, China.

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Abstract

It is known that the Ad hoc On-Demand Distance Vector (AODV) routing protocol for smart meter network is vulnerable to denial of service attacks (e.g., black hole attack and selective forwarding attack). In this paper, we introduce supervised machine learning to detect unknown routing attacks under AODV. There are two problems in the existing intrusion detection algorithms. The fi�rst problem is that the existing intrusion detection algorithms are mainly applied to a specific� and known type of routing attack, which no longer work for unknown attacks. The second one is that constant thresholds are commonly used for detection. To overcome these two problems, we introduce a supervised machine learning based detection approach. To implement supervised machine learning, three steps are involved. First, features and target estimations are selected from malicious AODV behaviors in smart meter network to generate training data sets. Second, we assign a suitable classi�fier including support vector machine, k-nearest neighbors and decision trees to �t the training and predicted data. Third, we update our training data to maintain a dynamic threshold. Simulations are conducted using Python3.6 to evaluate the accuracy and the time overhead of our pro- posed supervised machine learning model. The simulation results show that the decision trees algorithm assures 100% accuracy with minimum time overhead to detect routing attacks in AODV.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: routing attack detection supervised machine learning smart meter network
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
QA75 Electronic computers. Computer science
Depositing User: EAI Editor I.
Date Deposited: 10 Sep 2020 15:07
Last Modified: 10 Sep 2020 15:07
URI: https://eprints.eudl.eu/id/eprint/214

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