An Octopus-Inspired Intrusion Deterrence Model in Distributed Computing System

Authors

  • Emmanuel Ajayi Olajubu Department of Computer Science & Engineering Obafemi Awolowo University
  • Ibrahim Kazeem Ogundoyin Department of Computer Science and Engineering, Obafemi Awolowo University
  • Abiodun Akinwale Department of Computer Science and Engineering, Obafemi Awolowo University

DOI:

https://doi.org/10.7494/csci.2016.17.4.483

Keywords:

CIDM, MANET, Intrusion detection, Mobility, Routing Load, Throughput, 1-hop neighbors, wireless, Malicious, Injection

Abstract

The study formulated and evaluated a model for effective management of malicious
nodes in mobile Ad-hoc network based on Ad-Hoc on- demand distance
vector routing protocol. A collaborative injection model called Collaborative
Injection Deterrence Model (CIDM) was formulated using stochastic theory.
The definition of the model was presented using graph theory. CIDM was
simulated using three different scenarios. The three scenarios were then compared
using packets delivery ratio (PDR), routing load, throughput and delay
as performance metrics. The simulation result showed that CIDM reduce considerably
the rate of packets dropped caused by malicious nodes in MANET
network. CIDM did not introduce additional load to the network and yet with
produce higher throughput. Lastly, the access delay with CIDM is minimal
compared with convectional OADV. The study developed a model to mete out
a punitive measure to rogue nodes as a form of intrusion deterrence without
degrading the overall performance of the network. The well known CRAWDAD
dataset was used in the simulation.

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Author Biography

Emmanuel Ajayi Olajubu, Department of Computer Science & Engineering Obafemi Awolowo University

Department of Computer Science & EngineeringObafemi Awolowo University,Ile-Ife, Nigeria Senior LecturerDepartment of Computer Science & EngineeringObafemi Awolowo University,Ile-Ife, Nigeria

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Published

2017-01-10

How to Cite

Olajubu, E. A., Ogundoyin, I. K., & Akinwale, A. (2017). An Octopus-Inspired Intrusion Deterrence Model in Distributed Computing System. Computer Science, 17(4), 483. https://doi.org/10.7494/csci.2016.17.4.483

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