Smart City Gnosys

Smart city article details

Title A Deep Learning Approach To Real-Time Parking Availability Prediction For Smart Cities
ID_Doc 1340
Authors Arjona J.; Linares M.P.; Casanovas J.
Year 2019
Published ACM International Conference Proceeding Series
DOI http://dx.doi.org/10.1145/3368691.3368707
Abstract Nowadays, urban traffic affects the quality of life in cities and metropolitan areas as the problem becomes ever more exacerbated by parking issues: congestion increases due to drivers looking for slots to park their vehicles. An Internet of Things approach permits drivers to know the parking space availability in real time through wireless networks of sensor devices. This research focuses on studying the data generated by parking systems in order to develop predictive models that generate forecasted information. This can be useful in improving the management of parking areas, especially on-street parking, while having an important effect on urban traffic. This work begins by looking at the state of the art in predictive methods based on machine learning for time series. Similar proposed solutions for parking prediction are described in terms of the technology and current state-of-the-art predictive models. This paper then introduces the recurrent neural network method that was used in this research, namely Gated Recurrent Unit, as well as the model developed according to a real scenario in the city of Riyadh. In order to improve the quality of the model, exogenous variables related with weather and calendar effects are considered, and the baseline model is compared to the models that used this extra information. Finally, the obtained results are described, followed by suggestions for future research. © Copyright 2019 Association for Computing Machinery.
Author Keywords Deep learning; Parking prediction; Time series


Similar Articles


Id Similarity Authors Title Published
30883 View0.982Arjona J.; Linares M.; Casanovas-Garcia J.; Vázquez J.J.Improving Parking Availability Information Using Deep Learning TechniquesTransportation Research Procedia, 47 (2020)
41316 View0.929Xiao 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)
18526 View0.927Canlı H.; Toklu S.Design And Implementation Of A Prediction Approach Using Big Data And Deep Learning Techniques For Parking OccupancyArabian Journal for Science and Engineering, 47, 2 (2022)
51295 View0.924Jakkaladiki S.P.; Poulová P.; Pražák P.; Tesařová B.Smart Parking System: Optimized Ensemble Deep Learning Model With Internet Of Things For Smart CitiesScalable Computing, 24, 4 (2023)
46059 View0.917Hassan T.U.; Khurram A.B.; Iqbal S.; Malik A.W.; Fraz M.M.Resolving Community Parking Issues: An Iot Enabled Statistical And Deep Learning Approach For Enhanced Urban Parking Management2024 International Conference on Frontiers of Information Technology, FIT 2024 (2024)
2383 View0.917Ramkumar G.A Logical Appliance Of Deep Learning Methodology For An Intelligent Parking System For Smart Cities Using Internet Of Things Association5th International Conference on Electronics and Sustainable Communication Systems, ICESC 2024 - Proceedings (2024)
38660 View0.916Inam 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)
19257 View0.911Rajyalakshmi V.; Lakshmanna K.Detection Of Car Parking Space By Using Hybrid Deep Densenet Optimization AlgorithmInternational Journal of Network Management, 34, 1 (2024)
6516 View0.91Bondaruc R.; Cazzetta D.; Anisetti M.Advanced Iot Edge Architecture For Smart CityProceedings - 17th International Conference on Signal-Image Technology and Internet-Based Systems, SITIS 2023 (2023)
44321 View0.91Alghoniemy 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)