Energy and Mobility Models based Performance Evaluation in MANET

Main Article Content

Pushpender Sarao

Abstract

Mobile ad hoc networks are constituted with randomly moving nodes and movement of these nodes is depended upon moving model used in the network. Performance of the network directly depends on the movements and energy consumed in a specific time period by the nodes. Also performance of the protocol used for communication depends on the type of mobility model used by that specific protocol. In this paper, performance of AODV (Ad hoc On demand Distance Vector) routing protocol have been evaluated in respect of five mobility models Random Way Point Mobility Model, Manhattan Grid Mobility Model, Gauss Markov Mobility Model, Random Direction Mobility Model, RPGM (Reference Point Group Mobility)). Performance metrics are considered as: average energy consumption and average residual energy. By varying the network connections, speed of the nodes, and node densities, in different scenarios, routing protocol has been simulated in network simulator 2.  Simulation results show that reference point group mobility model is best suitable model as compared to other mobility models for AODV protocol in terms of energy consumption.

Article Details

How to Cite
Sarao, P. . (2023). Energy and Mobility Models based Performance Evaluation in MANET. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10s), 505–511. https://doi.org/10.17762/ijritcc.v11i10s.7686
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Articles

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