Litcius/Paper detail

A Recurrent Reward Based Learning Technique for Secure Neighbor Selection in Mobile AD-HOC Networks

K. Sakthidasan Sankaran, N. Vasudevan, K. R. Devabalaji, Thanikanti Sudhakar Babu, Hassan Haes Alhelou, T. Yuvaraj

2021IEEE Access47 citationsDOIOpen Access PDF

Abstract

Mobile ad-hoc network is an assortment of distinct attribute-based mobile devices that are autonomous and are cooperative in establishing communication. These nodes exploit wireless links for communication that causes injection of the adversaries in the network. Therefore, detection and mitigation of adversaries and anomalies in the network are mandatory to retain its performance. To strengthen this concept, in this article, a novel secure neighbor selection technique using recurrent reward-based learning is introduced. This proposed technique inherits the benefits of conventional routing and intelligent machine learning paradigm for classifying the states of the nodes based on their communication behavior. Thorough learning of the behavior of the nodes unanimously at all the hop-levels of communication enables establishing secure and consistent routing and transmission paths to the destination. The performance of the proposed technique is estimated using the metrics throughput, packet delivery ratio, and delay and detection ratio. Experimental analysis proves the consistency of the proposed technique by improving throughput, packet delivery ratio, and detection ratio under less delay.

Topics & Concepts

Computer scienceComputer networkWireless ad hoc networkMobile ad hoc networkThroughputOptimized Link State Routing ProtocolExploitAdaptive quality of service multi-hop routingRouting protocolNetwork packetRouting (electronic design automation)Consistency (knowledge bases)Distributed computingTransmission delayWirelessArtificial intelligenceComputer securityTelecommunicationsMobile Ad Hoc NetworksSecurity in Wireless Sensor NetworksNetwork Security and Intrusion Detection