Machine learning-based routing protocols for wireless sensor Online publication date: Mon, 20-Jan-2025
by Ravi Kumar
International Journal of Mobile Network Design and Innovation (IJMNDI), Vol. 11, No. 2, 2024
Abstract: An important part of intelligent transportation systems (ITS) is the use of car ad hoc networks, or vehicular ad hoc networks (VANET). There are still a lot of security issues with VANETs, including catastrophic blackhole threats, even though they have a lot of benefits. The deep-learning-based secure routing (DLSR) protocol and the deep-learning-based clustering (DLC) protocol are the part of this work. The DLSR protocol uses deep learning (DL) at each node to decide between secure routing and normal routing. It also builds safe routes at the same time. It's also possible to find out what bad nodes are doing, which helps us choose the best next hop based on how well its fitness function works. To make the fitness function better in both the protocols, we build a deep neural network (DNN) model. The proposed system improves the localisation accuracy.
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