Smart City Gnosys

Smart city article details

Title An Intelligent Parking Allocation Framework For Digital Society 5.0
ID_Doc 8532
Authors Velayuthapandian K.; Veyilraj M.; Jayakumaraj M.A.
Year 2024
Published Intelligent Decision Technologies, 18, 3
DOI http://dx.doi.org/10.3233/IDT-230339
Abstract In recent smart city innovations, parking lot location has garnered a lot of focus. The issue of where to put cars has been the subject of a lot of literature. However, these efforts rely heavily on algorithms built on centralized servers using historical data as their basis. In this study, we propose a smart parking allocation system by fusing k-NN, decision trees, and random forests with the boosting techniques Adaboost and Catboost. Implementing the recommended intelligent parking distribution technique in Smart Society 5.0 offers promise as a practical means of handling parking in contemporary urban settings. Users will be given parking spots in accordance with their preferences and present locations as recorded in a centralized database using the proposed system’s hybrid algorithms. The evaluation of performance considers the effectiveness of both the ML classifier and the boosting technique, and it finds that the combination of Random Forest and Adaboost achieves 98% accuracy. Users and operators alike can benefit from the suggested method’s optimised parking allocation and pricing structure, which in turn provides more convenient and efficient parking options. © 2024 – IOS Press. All rights reserved.
Author Keywords control scheme; hybrid-mechanism; k-nearest neighbour; machine learning; Parking space administration


Similar Articles


Id Similarity Authors Title Published
7088 View0.928Shalini 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)
32479 View0.906Errousso 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)
36188 View0.899Miao L.Making Smart Parking Decisions: A Driver'S PerspectiveProceedings - 2019 4th International Conference on Computational Intelligence and Applications, ICCIA 2019 (2019)
27581 View0.893Sumini 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)
32480 View0.893Bante K.; Bawankule S.; Dhule C.; Agrawal R.; Kumbhare K.Intelligent Parking Systems Design Using Iot And Ai2024 International Conference on Innovations and Challenges in Emerging Technologies, ICICET 2024 (2024)
41769 View0.892Dia I.; Ahvar E.; Lee G.M.Performance Evaluation Of Machine Learning And Neural Network-Based Algorithms For Predicting Segment Availability In Aiot-Based Smart ParkingNetwork, 2, 2 (2022)
51295 View0.891Jakkaladiki 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)
41316 View0.89Xiao 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)
51287 View0.889Tair K.; Benmessaoud L.; Boukhedouma S.Smart Parking System Based On Dynamic And Optimal Resource AllocationLecture Notes in Networks and Systems, 960 (2024)
36516 View0.889Agrawal P.; Mundada P.; Ikhar J.; Rakesh N.; Kaur G.; Pinjarkar L.Maximizing Urban Space: A Survey Of Smart Parking Techniques And InnovationsProceedings - 2024 1st International Conference on Technological Innovations and Advance Computing, TIACOMP 2024 (2024)