Smart City Gnosys

Smart city article details

Title S-Edge: Heterogeneity-Aware, Light-Weighted, And Edge Computing Integrated Adaptive Traffic Light Control Framework
ID_Doc 47164
Authors Sachan A.; Kumar N.
Year 2023
Published Journal of Supercomputing, 79, 13
DOI http://dx.doi.org/10.1007/s11227-023-05216-0
Abstract Rapid increase in the private and public vehicles fleet causes urban centers heavily populated with limited transport road infrastructure. To overcome this, in real-time scenarios, queue length-based traffic light controllers are being designed utilizing light-weighted S-Edge devices. This system suffers from starvation problems if a road lane at the intersection continuously receives vehicles during peak hours. With this, higher green phase duration can be allocated to the same-lane multiple times despite vehicles on the other lanes’ longer waiting time. To tackle this problem, an efficient and smart edge computing (S-Edge)-driven traffic light controller is proposed by accounting the real-time heterogeneous vehicular dynamics at the fog computing node. The fog node executes the proposed fuzzy inference system to generate phase-cycle duration. Further, to allocate the phase duration effectively, a method for estimating the lane pressure is proposed for the edge controller utilizing average queue length and waiting time. S-Edge is a light-weighted actuated traffic light controller that generates traffic light control cycle duration and phase (red/yellow/green) duration. To validate the S-Edge controller, a prototype is developed on an Indian city OpenStreetMap utilizing the low-computing power IoT devices, i.e., Raspberry Pi, and a well-known open-source simulator, i.e., Simulation of Urban MObility. © 2023, The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature.
Author Keywords Edge computing; Fuzzy inference system (FIS); Intelligent transportation system (ITS); Internet of things (IoT); Smart city; Traffic light controller (TLC); Traffic light scheduling


Similar Articles


Id Similarity Authors Title Published
47165 View0.961Sachan A.; Daultani Y.; Kumar N.S-Edge: Smart Edge Computing Framework For Real-Time Heterogeneous Vehicular Network15th International Conference on Knowledge and Smart Technology, KST 2023 (2023)
1720 View0.869Gamel S.A.; Saleh A.I.; Ali H.A.A Fog-Based Traffic Light Management Strategy (Tlms) Based On Fuzzy Inference EngineNeural Computing and Applications, 34, 3 (2022)
16058 View0.859Iram T.; Shamsi J.; Alvi U.; Rahman S.U.; Maaz M.Controlling Smart-City Traffic Using Machine LearningProceedings - 2019 International Conference on Frontiers of Information Technology, FIT 2019 (2019)
47480 View0.85Sachan A.; Kumar N.Sdn Control-Enabled And Time-Quantum-Driven Max-Pressure Approach For Intersection Management In Smart CityIEEE Systems Journal, 17, 1 (2023)