Smart City Gnosys

Smart city article details

Title Linguistic Interval Type 2 Fuzzy Logic-Based Exigency Vehicle Routing: Iot System Development For Smart City Applications With Soft Computing-Based Optimization
ID_Doc 35310
Authors Roy S.; Jana D.K.; Mishra A.
Year 2024
Published Franklin Open, 6
DOI http://dx.doi.org/10.1016/j.fraope.2023.100057
Abstract An Exigency Vehicle (EV) has to go more quickly to increase the likelihood that someone in danger would survive. Construction projects, strikes, and accidents may all be avoided with an effective vehicle routing solution. The Internet of Things (IoT) network simulation for Exigency Vehicle routing is proposed in this research utilizing a linguistic interval type 2 fuzzy logic system (LIT2FLS) based data fusion approach. The predicted effectiveness of our model for intelligent city applications, including emergency vehicle routing, is well demonstrated by the LIT2FLS correlation coefficients of 0.994%. This data fusion approach determines the exact level of congestion for a given place by combining sensory data with crowd reactions. In addition, OSRM employs a road communication system to detect real-time traffic variations and choose the least congested route. Furthermore, a sensor station for gathering the speeds and pollutants of moving automobiles on the road has also been established. An Android app has been developed to collect public information on blockages A driver of an Exigency Vehicle (EV) is directed towards a medical facility with the quickest, congestion-aware path by means of the Application software service. We have created an IT2FLS system that assists with decisions to calculate traffic congestion. Analyze the ability to scale and quickness of response associated with the suggested routing strategy. © 2023
Author Keywords ARM; Exigency Vehicle routing; IoT; LIT2FLS; OSRM; Senor node; Smart city; Statistical analysis


Similar Articles


Id Similarity Authors Title Published
27576 View0.869Kabir Md.H.; Islam Md.S.; Hoque Md.J.Fuzzy Based Intelligent Transportation Systems For Smart Cities To Mitigate Road Traffic Congestion2024 International Conference on Innovations in Science, Engineering and Technology: Innovative Technologies for Global Solutions, ICISET 2024 (2024)
1864 View0.86Ranjita R.; Acharya S.A Fuzzy Logic-Based Emergency Vehicle Routing Technique For Vehicular Ad-Hoc NetworksResearch Advances in Network Technologies (2023)
27598 View0.857Kait R.; Kaur S.; Sharma P.; Ankita C.; Kumar T.; Cheng X.Fuzzy Logic-Based Trusted Routing Protocol Using Vehicular Cloud Networks For Smart CitiesExpert Systems, 42, 1 (2025)
3902 View0.857Rahmani 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)
722 View0.856Jamshidnejad A.; De Schutter B.A Combined Probabilistic-Fuzzy Approach For Dynamic Modeling Of Traffic In Smart Cities: Handling Imprecise And Uncertain Traffic DataComputers and Electrical Engineering, 119 (2024)
34056 View0.852Mutambik I.Iot-Enabled Adaptive Traffic Management: A Multiagent Framework For Urban Mobility OptimisationSensors, 25, 13 (2025)