Smart City Gnosys

Smart city article details

Title Parking Occupancy Prediction And Traffic Assignment In A University Environment
ID_Doc 41315
Authors Farag M.; Hilal A.; El-Tawab S.
Year 2022
Published Proceedings of the 10th International Japan-Africa Conference on Electronics, Communications, and Computations, JAC-ECC 2022
DOI http://dx.doi.org/10.1109/JAC-ECC56395.2022.10044079
Abstract The fourth industrial revolution has given rise to large-scale data-driven models like smart cities and Intelligent transportation. Within these models, applications like smart parking have been growing rapidly in research and industry. However, different scenarios and environments (e.g., shopping areas, residential places, and business complexes) can require special handling due to the various factors impacting people's schedules and behavior. In this paper, we provide an initial investigation of traffic assignment based on parking prediction for a mid-size university environment where parking is concentrated in three parking garages around the campus. Our initial investigation includes results for parking prediction using a statistical method and plans for an augmenting study using variations of Neural Networks. On top of the parking prediction layer, we propose an application layer that directs and fuses the model predictions to produce the parking options provided to the application user. The presented investigation can help the university administration in their consideration of building additional garages. © 2022 IEEE.
Author Keywords Case Studies; Intelligent Transportation Systems (ITS); Machine Learning techniques; Smart Parking


Similar Articles


Id Similarity Authors Title Published
44321 View0.925Alghoniemy A.; Susko J.; Kahle D.; Saunders L.; Belsare P.; El-Tawab S.Real-Time Cloud-Based Data Analysis Using Machine Learning For Smart Parking2024 International Conference on Computer and Applications, ICCA 2024 (2024)
7088 View0.902Shalini M.K.; Hanumanthappa J.; Santhosh Kumar K.S.; Shiva Prakash S.P.Ai-Powered Hybrid Smart Parking: Optimizing Parking Management Across Diverse Applications In Smart CitiesProcedia Computer Science, 258 (2025)
41316 View0.897Xiao X.; Peng Z.; Lin Y.; Jin Z.; Shao W.; Chen R.; Cheng N.; Mao G.Parking Prediction In Smart Cities: A SurveyIEEE Transactions on Intelligent Transportation Systems, 24, 10 (2023)
1340 View0.891Arjona J.; Linares M.P.; Casanovas J.A Deep Learning Approach To Real-Time Parking Availability Prediction For Smart CitiesACM International Conference Proceeding Series (2019)
27581 View0.89Sumini M.V.; Mulerikkal J.; Ramkumar P.B.; Tharakan P.Fuzzy Concepts And Machine Learning Algorithms For Car Park Occupancy And Route PredictionLecture Notes in Networks and Systems, 120 (2020)
30883 View0.89Arjona J.; Linares M.; Casanovas-Garcia J.; Vázquez J.J.Improving Parking Availability Information Using Deep Learning TechniquesTransportation Research Procedia, 47 (2020)
38660 View0.887Inam S.; Mahmood A.; Khatoon S.; Alshamari M.; Nawaz N.Multisource Data Integration And Comparative Analysis Of Machine Learning Models For On-Street Parking PredictionSustainability (Switzerland), 14, 12 (2022)
32479 View0.887Errousso H.; Alaoui E.A.A.; Benhadou S.; Nayyar A.Intelligent Parking Space Management: A Binary Classification Approach For Detecting Vacant SpotsMultimedia Tools and Applications, 84, 8 (2025)
42679 View0.885Stolfi, DH; Alba, E; Yao, XPredicting Car Park Occupancy Rates In Smart CitiesSMART CITIES, 10268 (2017)
36188 View0.885Miao L.Making Smart Parking Decisions: A Driver'S PerspectiveProceedings - 2019 4th International Conference on Computational Intelligence and Applications, ICCIA 2019 (2019)