Smart City Gnosys

Smart city article details

Title Data-Driven Mobility System For Vehicular Communication: A Step Towards Transport Resilience In Intelligent Transport Systems
ID_Doc 17451
Authors Gillani M.; Niaz H.A.; Martinez-Pastor B.
Year 2025
Published IEEE Access, 13
DOI http://dx.doi.org/10.1109/ACCESS.2025.3579566
Abstract Intelligent Transport Systems (ITS) collect a dynamic and versatile range of data from vehicles and infrastructure to analyze and regulate the traffic and network flow. The collected data optimizes ITS functional capacity and efficiency to build smart infrastructure or smart cities. The issue arises when huge data volumes from rapidly transitioning vehicles result in missing data points, poor analytical capabilities, replication, higher cost, big volumes, increased time, and congestion followed by frequent network disruptions and disoriented communication. Ensuring transport resilience is crucial to maintaining stable and adaptive mobility systems that can withstand such disruptions and optimize real-time decision-making. To practically design solutions for previously mentioned challenges, an optimized Intelligent Information System (IDT) is proposed that is a self-maturing data information system set to independently train data streams coming from real-time traffic to facilitate data communication. Data is set to be processed and stored through designated smart interchangeable logs established using Apache Spark. Live data streams are integrated into the information system to induce independent learning within vehicles for smooth ITS operation. IDT’s functionalities are enhanced through dynamic segmentation switching which is a smart feature of calculated division and time-dependent interoperability of segments to avoid replicated data and network bottlenecks. IDT’s features and modules are real-time implemented on Ireland’s largest road network M50. Its operations, functionalities, and features are set to perform model training based on collected data for transparent communication in a cost-effective way. The validated results have shown that the given data information system is accomplishing higher performance with optimal resource utilization with rich and time-efficient data communication ranging from 70% to 94% based on architectural complexities and traffic ratios. © 2013 IEEE.
Author Keywords Data communication systems; data information systems; energy-efficient communication; intelligent mobility; intelligent transport systems; machine learning; real-time protocol; smart cities; transport resilience; VANETs; vehicular communication


Similar Articles


Id Similarity Authors Title Published
32634 View0.873Alharb M.; Alabdulatif A.Intelligent Transport Systems: Analysis Of Applications, Security Challenges, And Robust CountermeasuresInternational Journal of Advanced Computer Science and Applications, 15, 6 (2024)
32632 View0.872Shankaran R.S.; Rajendran L.Intelligent Transport Systems And Traffic ManagementSmart Cities Concepts, Practices, and Applications (2022)
35927 View0.87Gillani M.; Niaz H.A.Machine Learning Based Data Collection Protocol For Intelligent Transport Systems: A Real-Time Implementation On Dublin M50, IrelandComplex and Intelligent Systems, 10, 2 (2024)
1832 View0.869Selvaraj D.C.; Hegde S.; Chiasserini C.F.; Amati N.; Deflorio F.; Zennaro G.A Full-Fledge Simulation Framework For The Assessment Of Connected CarsTransportation Research Procedia, 52 (2021)
51664 View0.867Mahrez Z.; Sabir E.; Badidi E.; Saad W.; Sadik M.Smart Urban Mobility: When Mobility Systems Meet Smart DataIEEE Transactions on Intelligent Transportation Systems, 23, 7 (2022)
1000 View0.864Mangiaracina R.; Perego A.; Salvadori G.; Tumino A.A Comprehensive View Of Intelligent Transport Systems For Urban Smart MobilityInternational Journal of Logistics Research and Applications, 20, 1 (2017)
42395 View0.862Adigopula V.K.Possibilities And Proposals Of Intelligent Transportation System In The Indian Context: A Synthesis Of The LiteratureInnovative Infrastructure Solutions, 7, 1 (2022)
32436 View0.86Mandžuka S.Intelligent MobilityLecture Notes in Networks and Systems, 76 (2020)
5781 View0.859Miranda C.; Santos da Silva A.; Paulo Javidi da Costa J.; Almeida Santos G.; Alves da Silva D.; Pignaton de Freitas E.; Vinel A.A Virtual Infrastructure Model Based On Data Reuse To Support Intelligent Transportation System ApplicationsIEEE Access, 13 (2025)
37374 View0.859Celes C.; Boukerche A.; Loureiro A.A.F.Mobility Trace Analysis For Intelligent Vehicular NetworksACM Computing Surveys, 54, 3 (2022)