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Modified AOMDV Multipath MANET Routing Protocol on the basis of Congestion Control
¹ M.Tech. (CSE) Scholar, Yamuna Institute of Engineering and Technology, Gadholi, Yamuna Nagar, Haryana, India. ² Assistant Professor, Yamuna Institute of Engineering and Technology, Gadholi, Yamuna Nagar, Haryana, India.
Published Online: January-April 2026
Pages: 531-535
Cite this article
↗ https://www.doi.org/10.59256/indjcst.20260501060Mobile Ad-hoc Networks (Manets) is a wireless infrastructure less network where nodes or station are not fixed and nodes are communicated without any centralized structure. Due to large mobility of nodes, limited bandwidth, dynamic network topology and limited resources in MANET routing become inefficient and infeasible. So, Routing protocols have been developed for improvement of this routing strategy and communication can be done in an efficient and effective manner. In recent years, many routing protocols have been developed for possible implementation of Mobile Ad hoc Networks (MANETs) in government commercial applications and military. Multipath routing protocols show more promising results as compare the single path routing because they always present with another path on failure of any chosen path. This paper introduces a modified approach of AOMDV multipath routing considering both hop count and congestion over chosen paths.
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