Protocol misbehavior detection framework using machine learning classification in vehicular Ad Hoc networks

2021 ◽  
Author(s):  
Kumar Sharshembiev ◽  
Seong-Moo Yoo ◽  
Elbasher Elmahdi
Author(s):  
А.Р. Абделлах ◽  
А. Мутханна ◽  
А.Е. Кучерявый

Исследования в области сетей и систем связи пятого и последующих поколений требуют применения новых технологических решений. Представлены методы искусственного интеллекта, которые в последнее время все чаще используются при решении разнообразных задач в области сетей и систем связи. Предлагается и исследуется эффективность применения робастных М-оценок для машинного обучения в сетях транспортных средств VANET (Vehicular Ad Hoc Networks). Investigations in the field of telecommunication networks and systems of the fifth and beyond generations require the use of new technological solutions. Artificial intelligence techniques, which have recently been increasingly used in solving various problems in the field of networks and communication systems, are presented. The paper proposes and investigates the effectiveness of applying robust M-estimations for machine learning in vehicular ad hoc networks (VANET).


Author(s):  
Abhilash Sonker ◽  
R. K. Gupta

Misbehavior detection in vehicular ad hoc networks (VANETs) is performed to improve the traffic safety and driving accuracy. All the nodes in the VANETs communicate to each other through message logs. Malicious nodes in the VANETs can cause inevitable situation by sending message logs with tampered values. In this work, various machine learning algorithms are used to detect the primarily five types of attacks namely, constant attack, constant offset attack, random attack, random offset attack, and eventual attack. Firstly, each attack is detected by different machine learning algorithms using binary classification. Then, the new procedure is created to do the multi classification of the attacks on best chosen algorithm from different machine learning techniques. The highest accuracy in case of binary classification is obtained with Naïve Bayes (100%), decision tree (100%), and random forest (100%) in type1 attack, decision tree (100%) in type2 attack, and random forest (98.03%, 95.56%, and 95.55%) in Type4, Type8 and Type16 attack respectively. In case of new procedure for multi-classification, the highest accuracy is obtained with random forest (97.62%) technique. For this work, VeReMi dataset (a public repository for the malicious node detection in VANETs) is used.


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