Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data

Looking for available parking slots has become a serious issue in contemporary urban mobility. The selection of suitable car parks could be influenced by multiple factors-e.g., the walking distance to destination, driving and waiting time, parking prices, availability, and accessibility-while the av...

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Main Authors: Claudio Badii, Paolo Nesi, Irene Paoli
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8430514/
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spelling doaj-d3cc5b2644074e7fb03200f751ca177c2021-03-29T20:50:58ZengIEEEIEEE Access2169-35362018-01-016440594407110.1109/ACCESS.2018.28641578430514Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open DataClaudio Badii0Paolo Nesi1https://orcid.org/0000-0003-1044-3107Irene Paoli2Department of Information Engineering, Distributed Systems and Internet Technologies Lab, University of Florence, Florence, ItalyDepartment of Information Engineering, Distributed Systems and Internet Technologies Lab, University of Florence, Florence, ItalyDepartment of Information Engineering, Distributed Systems and Internet Technologies Lab, University of Florence, Florence, ItalyLooking for available parking slots has become a serious issue in contemporary urban mobility. The selection of suitable car parks could be influenced by multiple factors-e.g., the walking distance to destination, driving and waiting time, parking prices, availability, and accessibility-while the availability of unused parking slots might depend on parking location, events in the area, traffic flow, and weather conditions. This paper presents a set of metrics and techniques to predict the number of available parking slots in city garages with gates. With this aim, we have considered three different predictive techniques, while comparing different approaches. The comparison has been performed according to the data collected in a dozen of garages in the area of Florence by using Sii-Mobility National Research Project and Km4City infrastructure. The resulting solution has demonstrated that a Bayesian regularized neural network exploiting historical data, weather condition, and traffic flow data can offer a robust approach for the implementation of reliable and fast predictions of available slots in terms of flexibility and robustness to critical cases. The solution adopted in a Smart City Apps in the Florence area for sustainable mobility has been welcomed with broad appreciation or has been praised as successful.https://ieeexplore.ieee.org/document/8430514/Smart cityavailable parking lotsprediction modelparking garagemachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Claudio Badii
Paolo Nesi
Irene Paoli
spellingShingle Claudio Badii
Paolo Nesi
Irene Paoli
Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data
IEEE Access
Smart city
available parking lots
prediction model
parking garage
machine learning
author_facet Claudio Badii
Paolo Nesi
Irene Paoli
author_sort Claudio Badii
title Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data
title_short Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data
title_full Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data
title_fullStr Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data
title_full_unstemmed Predicting Available Parking Slots on Critical and Regular Services by Exploiting a Range of Open Data
title_sort predicting available parking slots on critical and regular services by exploiting a range of open data
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Looking for available parking slots has become a serious issue in contemporary urban mobility. The selection of suitable car parks could be influenced by multiple factors-e.g., the walking distance to destination, driving and waiting time, parking prices, availability, and accessibility-while the availability of unused parking slots might depend on parking location, events in the area, traffic flow, and weather conditions. This paper presents a set of metrics and techniques to predict the number of available parking slots in city garages with gates. With this aim, we have considered three different predictive techniques, while comparing different approaches. The comparison has been performed according to the data collected in a dozen of garages in the area of Florence by using Sii-Mobility National Research Project and Km4City infrastructure. The resulting solution has demonstrated that a Bayesian regularized neural network exploiting historical data, weather condition, and traffic flow data can offer a robust approach for the implementation of reliable and fast predictions of available slots in terms of flexibility and robustness to critical cases. The solution adopted in a Smart City Apps in the Florence area for sustainable mobility has been welcomed with broad appreciation or has been praised as successful.
topic Smart city
available parking lots
prediction model
parking garage
machine learning
url https://ieeexplore.ieee.org/document/8430514/
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