Smart City Gnosys

Smart city article details

Title A New Approach To Interoperability Within The Smart City Based On Time Series-Embedded Adaptive Traffic Prediction Modelling
ID_Doc 2983
Authors Fernandez V.; Pérez V.
Year 2024
Published Networks and Spatial Economics
DOI http://dx.doi.org/10.1007/s11067-024-09662-y
Abstract The rapid urbanization observed over recent decades has led to important challenges in urban mobility, notably traffic congestion, pollution, and inefficient energy consumption. Concurrently, the rise in electric vehicles (EVs) offers a promising shift towards sustainable urban transport yet introduces complexities such as the need for extensive charging infrastructure and effective energy demand management. This study addresses these challenges by proposing a predictive model for real-time and future traffic volume estimation, leveraging historical data, real-time information, scheduled city events, and the availability of EV charging infrastructure. The methodology proposed employs actuarial techniques to create a comprehensive framework that predicts traffic patterns and optimizes energy resources within smart cities. By integrating variables such as historical traffic patterns and real-time data, our model provides accurate traffic forecasts essential for urban planning and energy distribution. We utilize a time-series based algorithm to predict traffic, validated through real data from pilot projects in Ljubljana, Slovenia. The study’s findings underscore the model’s potential to enhance urban mobility and energy efficiency, providing a robust tool for city planners and policymakers. © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2024.
Author Keywords Electric vehicles; Energy management; Predictive modelling; Smart cities; Traffic prediction; Urban mobility


Similar Articles


Id Similarity Authors Title Published
43443 View0.894Pratap Singh A.; Sharma K.; Rengarajan A.; Gautam A.K.Promoting Sustainable Transportation Solutions Through Electric Vehicles In Smart CitiesE3S Web of Conferences, 540 (2024)
40803 View0.89Fernandez V.; Pérez V.; Roig R.Optimizing Energy Supply For Full Electric Vehicles In Smart Cities: A Comprehensive Mobility Network ModelWorld Electric Vehicle Journal, 16, 1 (2025)
34056 View0.885Mutambik I.Iot-Enabled Adaptive Traffic Management: A Multiagent Framework For Urban Mobility OptimisationSensors, 25, 13 (2025)
22524 View0.885Doda D.K.; Beemkumar N.; Awasthi A.; Gautam A.K.Electric Vehicle Energy Management: Charging In Sustainable Urban Settings For Smart CitiesE3S Web of Conferences, 540 (2024)
32238 View0.881Jain V.; Mitra A.Integrative Hybrid Information Systems For Enhanced Traffic Maintenance And Control In Bangalore: A Synchronized ApproachHybrid Information Systems: Non-Linear Optimization Strategies with Artificial Intelligence (2024)
58162 View0.879Tao X.; Cheng L.; Zhang R.; Chan W.K.; Chao H.; Qin J.Towards Green Innovation In Smart Cities: Leveraging Traffic Flow Prediction With Machine Learning Algorithms For Sustainable Transportation SystemsSustainability (Switzerland), 16, 1 (2024)
57627 View0.878Fatnassi, E; Harrabi, O; Chaouachi, JToward A Smart Mobility System: Integrating Electric Vehicles Within Smart CitiesPROCEEDINGS OF THE 2017 GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE COMPANION (GECCO'17 COMPANION) (2017)
26862 View0.876Kharchenko V.; Kharchenko H.; Vilchynska O.Forecasting The Electric Vehicle Market In An Urbanized EnvironmentLecture Notes in Networks and Systems, 1336 LNNS (2025)
8929 View0.875Mrad S.; Mraihi R.An Overview Of Model-Driven And Data-Driven Forecasting Methods For Smart TransportationStudies in Big Data, 132 (2023)
8060 View0.873Shouaib M.; Metwally K.; Badran K.An Enhanced Time-Dependent Traffic Flow Prediction In Smart CitiesAdvances in Electrical and Computer Engineering, 23, 3 (2023)