MACHINE LEARNING BASED FAULT TOLERANT ROUTING PROTOCOLS IN MANETs

MACHINE LEARNING BASED FAULT TOLERANT ROUTING PROTOCOLS IN MANETs

EnglishPaperback / softback
Duvvuri, Suneel Kumar
LAP Lambert Academic Publishing
EAN: 9786207640751
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Detailed information

A Mobile Ad Hoc Network (MANET) embodies a fluid and spontaneous network of wireless devices that has potential to establish swiftly, without relying on a pre-existing central infrastructure. The nodes in a MANET operate in a decentralized manner, and this presents unique challenges in terms of routing protocols and resource management. Several routing protocols have been created to overcome these challenges, but they must find a balance between different issues, such as minimizing resource use and avoiding unnecessary data routing. These protocols must also be designed to quickly identify newly connected devices so they can be used for routing. Even though designing routing protocols for MANET is challenging, it is necessary for these networks to work effectively. Therefore, the routing protocols used in MANETs must be dynamic and adaptive to handle the changing topology. Faulty nodes in the network leads to disruptions in communication. To ensure that communication continues, we need fault-tolerant routing in MANETs.
EAN 9786207640751
ISBN 6207640756
Binding Paperback / softback
Publisher LAP Lambert Academic Publishing
Publication date June 13, 2024
Pages 136
Language English
Dimensions 229 x 152 x 8
Authors Duvvuri, Suneel Kumar; Seelam, Ramakrishna
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