Smart City Gnosys

Smart city article details

Title Fuzzy Logic-Based Trusted Routing Protocol Using Vehicular Cloud Networks For Smart Cities
ID_Doc 27598
Authors Kait R.; Kaur S.; Sharma P.; Ankita C.; Kumar T.; Cheng X.
Year 2025
Published Expert Systems, 42, 1
DOI http://dx.doi.org/10.1111/exsy.13561
Abstract Due to the characteristics of vehicular ad hoc networks, the increased mobility of nodes and the inconsistency of wireless communication connections pose significant challenges for routing. As a result, researchers find it to be a fascinating topic to study. Furthermore, since these networks are vulnerable to various assaults, providing an authentication method between the source and destination nodes is crucial. How to route in such networks more efficiently, taking into account node mobility characteristics and accompanying massive historical data, is still a matter of discussion. Fuzzy logic-based Trusted Routing Protocol for vehicular cloud networks (FTRP) is proposed in this study that determines the secure path for data dissemination. Fuzzy Logic determines the node candidacy value and selects or rejects a path accordingly. The cloud assigns a confidence score to each vehicle based on the data it collects from nodes after each interaction. Our study identifies the secure path on the basis of trust along with factors such as speed, closeness to other nodes, signal strength and distance from the neighbouring nodes. Simulations of the novel protocol demonstrate that it can keep the packet delivery ratio high with little overhead and low delay. FTRP has significant implications for deploying Vehicular Cloud Networks using electric vehicle technologies in smart cities. The routing data is collected with the help of Internet of Technology (IOT) sensors. The information is transmitted between vehicles using IOT gateways.
Author Keywords fuzzy routing; smart cities; trust computation; vehicular cloud networks; vehicular cloud networks


Similar Articles


Id Similarity Authors Title Published
35310 View0.857Roy S.; Jana D.K.; Mishra A.Linguistic Interval Type 2 Fuzzy Logic-Based Exigency Vehicle Routing: Iot System Development For Smart City Applications With Soft Computing-Based OptimizationFranklin Open, 6 (2024)
12606 View0.856Singh S.K.; Park L.; Park J.H.Blockchain-Based Federated Approach For Privacy-Preserved Iot-Enabled Smart Vehicular NetworksInternational Conference on ICT Convergence, 2022-October (2022)
1859 View0.855Aljabry I.A.; Al-Suhail G.A.; Jabbar W.A.A Fuzzy Gpsr Route Selection Based On Link Quality And Neighbor Node In VanetInternational Conference on Intelligent Technology, System and Service for Internet of Everything, ITSS-IoE 2021 (2021)
27591 View0.854Sebastin Suresh S.; Prabhu V.; Parthasarathy V.Fuzzy Logic Based Nodes Distributed Clustering For Energy Efficient Fault Tolerance In Iot-Enabled WsnJournal of Intelligent and Fuzzy Systems, 44, 3 (2023)
3902 View0.853Rahmani A.M.; Naqvi R.A.; Yousefpoor E.; Yousefpoor M.S.; Ahmed O.H.; Hosseinzadeh M.; Siddique K.A Q-Learning And Fuzzy Logic-Based Hierarchical Routing Scheme In The Intelligent Transportation System For Smart CitiesMathematics, 10, 22 (2022)
47679 View0.853Limbasiya T.; Das D.Secure Smart Vehicle Cloud Computing System For Smart CitiesStudies in Big Data, 39 (2018)