A Predictive Finest Path Selection Algorithm to Enhance QoS in MANETs

A Predictive Finest Path Selection Algorithm to Enhance QoS in MANETs

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© 2021 by IJETT Journal
Volume-69 Issue-11
Year of Publication : 2021
Authors : Srinivasa H P, Dr. Kamalesh V N
DOI :  10.14445/22315381/IJETT-V69I11P211

How to Cite?

Srinivasa H P, Dr. Kamalesh V N, "A Predictive Finest Path Selection Algorithm to Enhance QoS in MANETs," International Journal of Engineering Trends and Technology, vol. 69, no. 11, pp. 89-94, 2021. Crossref, https://doi.org/10.14445/22315381/IJETT-V69I11P211

Abstract
Mobile ad-hoc networks (MANET) consist of a set of highly dynamic self-organized mobile nodes. The nodes move freely within the network and may leave the network. The nodes in the mobile ad-hoc network are highly dynamic, and they lack Quality of Service (QoS) support. The MANETS are extensively deployed in military applications and emergency operations. Few applications require a minimum guarantee for end-to-end packet delivery, and few applications need time constraint delivery of packets. The QoS support for such applications is not provided by AODV, DSR, or any other protocols. The military applications, live transmission applications need to send a huge amount of data over the network; due to the high mobility of nodes, the chances of failure of links are also more. This will reduce the lifetime of the network. In this paper, a predictive finest path selection algorithm is proposed to enhance QoS in MANETs. The finest route selected may not be optimal for a longer period. The major challenge is not only to find the finest route but also to predict when to run the finest path selection algorithm in the future for efficient data transmission. The proposed algorithm will find the best finest path changes, link failures, and congest nodes to inform the sender before a QoS communication.

Keywords
AODV, Choke Probability, Predictive Routing, QoS, Routing

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