Publication | Closed Access
Classification of Misbehaving nodes in MANETS using Machine Learning Techniques
13
Citations
1
References
2020
Year
Unknown Venue
Network ScienceEngineeringData MiningMachine Learning TechniquesAverage ThroughputThreat DetectionAd Hoc NetworkSecure RoutingIntrusion Detection SystemNetwork AnalysisComputer SciencePacket Delivery RatioMisbehaving NodesMisbehaviour Detection
Classification of Misbehaving Nodes in wireless mobile adhoc networks (MANET) by applying machine learning techniques is an attempt to enhance security by detecting the presence of malicious nodes. MANETs are prone to many security vulnerabilities due to its significant features. The paper compares two machine learning techniques namely Support Vector Machine (SVM) and Back Propagation Neural Network (BPNN) and finds out the best technique to detect the misbehaving nodes. This paper is simulated with an on-demand routing protocol in NS2.35 and the results can be compared using parameters like packet Delivery Ratio (PDR), End-To-End delay, Average Throughput.
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