An RSSI-based Sybil attack detection system with continuous authentication using a novel lightweight multimodal biometrics

Author:

Brindha N.V.,Meenakshi V.S.

Abstract

PurposeAny node in a mobile ad hoc network (MANET) can act as a host or router at any time and so, the nodes in the MANET are vulnerable to many types of attacks. Sybil attack is one of the harmful attacks in the MANET, which produces fake identities similar to legitimate nodes in the network. It is a serious threat to the MANET when a malicious node uses the fake identities to enter the network illegally.Design/methodology/approachA MANET is an independent collection of mobile nodes that form a temporary or arbitrary network without any fixed infrastructure. The nodes in the MANET lack centralized administration to manage the network and change their links to other devices frequently.FindingsSo for securing a MANET, an approach based on biometric authentication can be used. The multimodal biometric technology has been providing some more potential solutions for the user to be able to devise an authentication in MANETs of high security.Research limitations/implicationsThe Sybil detection approach, which is based on the received signal strength indicator (RSSI) variations, permits the node to be able to verify the authenticity of communicating nodes in accordance with their localizations.Practical implicationsAs the MANET node suffers from a low level of memory and power of computation, there is a novel technique of feature extraction that is proposed for the multimodal biometrics that makes use of palm prints that are based on a charge-coupled device and fingerprints, along with the features that are fused.Social implicationsThis paper proposes an RSSI-based multimodal biometric solution to detect Sybil attack in MANETs.Originality/valueThe results of the experiment have indicated that this method has achieved a performance which is better compared to that of the other methods.

Publisher

Emerald

Subject

Computer Science Applications,History,Education

Reference31 articles.

1. Lightweight sybil attack detection in MANETs;IEEE System Journal,2013

2. AOMDV protocols in MANETS: a review;International Journal of Advanced Research in Computer Science and Technology (IJARCST 2016),2013

3. Intrusion detection and continuous authentication using multimodal biometrics in MANETS–a survey;International Journal of Computer Applications IJCA Proceedings on International Conference on Innovations In Intelligent Instrumentation, Optimization and Electrical Sciences,2013

4. Detection and prevention of sybil attack in wireless sensor network employing random password comparison method;Journal of Theoretical and Applied Information Technology,2014

5. SINR and RSSI based optimized AODV routing protocol for MANET using cross layer interaction;International Journal of Science and Research (IJSR),2014

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