Abstract

Nowadays, the problem of parking guidance information (PGI) is one of the great challenges of smart cities. Sensor networks have been traditionally used, but they sometimes constitute a high administrative cost. For this reason, this paper presents social parking, a system that is based on the citizens as sensors paradigm, where data are collected by users and are processed using data mining techniques. Moreover, an ontology is used to enable the standardization of information. This way, social parking is compatible with the FIWARE platform. A forecast algorithm was also designed and verified to estimate the number of free parking spots inside a parking lot. With this aim, we used public parking data from eight parking lots in the city of Zaragoza. Client applications allowed testing of all the functions of the parking system. These tests were carried out in three experimental parking lots in the city of Málaga.

Highlights

  • Nowadays, the concept of the smart city constitutes an important model for the scientific community [1]

  • This paper addresses the problem of parking guidance and information (PGI) by employing the citizens as sensors paradigm

  • We present social parking, a system that allows citizens to consult the availability of parking spots in their surrounding area in advance

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Summary

Introduction

The concept of the smart city constitutes an important model for the scientific community [1]. This paper addresses the problem of parking guidance and information (PGI) by employing the citizens as sensors paradigm. This paradigm implies important cost savings and allows a rapid expansion of controlled parking areas. With this aim, data mining techniques and predictive analysis were used. The system provides accurate and permanently updated information about parking to the local administration This fact will facilitate the planning of new infrastructure, promote certain parking areas, and decrease traffic with more accuracy.

Related Work
Description of the Technologies Used
Data Mining
Ontology
Design and Implementation
Discussion
Findings
Limitations of the Study
Full Text
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