Classification of Selfish and Regular Nodes Based on Reputation Values in MANET Using Adaptive Decision Boundary

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DOI: 10.4236/cn.2013.53021    6,194 Downloads   9,751 Views  Citations

ABSTRACT

A MANET is a cooperative network in which each node has dual responsibilities of forwarding and routing thus node strength is a major factor because a lesser number of nodes reduces network performance. The existing reputation based methods have limitation due to their stricter punishment strategy because they isolate nodes from network participation having lesser reputation value and thus reduce the total strength of nodes in a network. In this paper we have proposed a mathematical model for the classification of nodes in MANETs using adaptive decision boundary. This model classifies nodes in two classes: selfish and regular node as well as it assigns the grade to individual nodes. The grade is computed by counting how many passes are required to classify a node and it is used to define the punishment strategy as well as enhances the reputation definition of traditional reputation based mechanisms. Our work provides the extent of noncooperation that a network can allow depending on the current strength of nodes for the given scenario and thus includes selfish nodes in network participation with warning messages. We have taken a leader node for reputation calculation and classification which saves energy of other nodes as energy is a major challenge of MANET. The leader node finally sends the warning message to low grade nodes and broadcasts the classification list in the MANET that is considered in the routing activity.

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Akhtar, A. and Sahoo, G. (2013) Classification of Selfish and Regular Nodes Based on Reputation Values in MANET Using Adaptive Decision Boundary. Communications and Network, 5, 185-191. doi: 10.4236/cn.2013.53021.

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