Knowledge Agora



Similar Articles

Title Predicting Car Park Occupancy Rates in Smart Cities
ID_Doc 44822
Authors Stolfi, DH; Alba, E; Yao, X
Title Predicting Car Park Occupancy Rates in Smart Cities
Year 2017
Published
Abstract In this article we address the study of parking occupancy data published by the Birmingham city council with the aim of testing several prediction strategies (polynomial fitting, Fourier series, k-means clustering, and time series) and analyzing their results. We have used cross validation to train the predictors and then tested them on unseen occupancy data. Additionally, we present a web page prototype to visualize the current and historical parking data on a map, allowing users to consult the occupancy rate forecast to satisfy their parking needs up to one day in advance. We think that the combination of accurate intelligent techniques plus final user services for citizens is the direction to follow for knowledge-based real smart cities.
PDF

Similar Articles

ID Score Article
43293 Muntean, MV Car Park Occupancy Rates Forecasting based on Cluster Analysis and kNN in Smart Cities(2019)
39480 Badii, C; Nesi, P; Paoli, I Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data(2018)
40383 Unlu, E; Delfau, JB; Nguyen, B; Chau, E; Chouiten, M A Generic Predictive Model for On-Street Parking Availability(2020)
41774 Vlahogianni, EI; Kepaptsoglou, K; Tsetsos, V; Karlaftis, MG A Real-Time Parking Prediction System for Smart Cities(2016)Journal Of Intelligent Transportation Systems, 20, 2
Scroll