Predicting parking space availability based on heterogeneous data using Machine Learning techniques

Abstract. These days, smart cities are focused on improving their services and bringing quality to everyday life, leveraging modern ICT technologies. For this reason, the data from connected IoT devices, environmental sensors, economic platforms, social networking sites, governance systems, and othe...

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Main Author: Mehmood, H. (Hassan)
Format: Dissertation
Language:English
Published: University of Oulu 2019
Online Access:http://jultika.oulu.fi/Record/nbnfioulu-201905101704
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spelling ndltd-oulo.fi-oai-oulu.fi-nbnfioulu-2019051017042019-06-07T03:20:39ZPredicting parking space availability based on heterogeneous data using Machine Learning techniquesMehmood, H. (Hassan)info:eu-repo/semantics/openAccess© Hassan Mehmood, 2019Abstract. These days, smart cities are focused on improving their services and bringing quality to everyday life, leveraging modern ICT technologies. For this reason, the data from connected IoT devices, environmental sensors, economic platforms, social networking sites, governance systems, and others can be gathered for achieving such goals. The rapid increase in the number of vehicles in major cities of the world has made mobility in urban areas difficult, due to traffic congestion and parking availability issues. Finding a suitable parking space is often influenced by various factors such as weather conditions, traffic flows, and geographical information (markets, hospitals, parks, and others). In this study, a predictive analysis has been performed to estimate the availability of parking spaces using heterogeneous data from Cork County, Ireland. However, accumulating, processing, and analysing the produced data from heterogeneous sources is itself a challenge, due to their diverse nature and different acquisition frequencies. Therefore, a data lake has been proposed in this study to collect, process, analyse, and visualize data from disparate sources. In addition, the proposed platform is used for predicting the available parking spaces using the collected data from heterogeneous sources. The study includes proposed design and implementation details of data lake as well as the developed parking space availability prediction model using machine learning techniques.University of Oulu2019-05-08info:eu-repo/semantics/masterThesisinfo:eu-repo/semantics/publishedVersionapplication/pdfhttp://jultika.oulu.fi/Record/nbnfioulu-201905101704eng
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language English
format Dissertation
sources NDLTD
description Abstract. These days, smart cities are focused on improving their services and bringing quality to everyday life, leveraging modern ICT technologies. For this reason, the data from connected IoT devices, environmental sensors, economic platforms, social networking sites, governance systems, and others can be gathered for achieving such goals. The rapid increase in the number of vehicles in major cities of the world has made mobility in urban areas difficult, due to traffic congestion and parking availability issues. Finding a suitable parking space is often influenced by various factors such as weather conditions, traffic flows, and geographical information (markets, hospitals, parks, and others). In this study, a predictive analysis has been performed to estimate the availability of parking spaces using heterogeneous data from Cork County, Ireland. However, accumulating, processing, and analysing the produced data from heterogeneous sources is itself a challenge, due to their diverse nature and different acquisition frequencies. Therefore, a data lake has been proposed in this study to collect, process, analyse, and visualize data from disparate sources. In addition, the proposed platform is used for predicting the available parking spaces using the collected data from heterogeneous sources. The study includes proposed design and implementation details of data lake as well as the developed parking space availability prediction model using machine learning techniques.
author Mehmood, H. (Hassan)
spellingShingle Mehmood, H. (Hassan)
Predicting parking space availability based on heterogeneous data using Machine Learning techniques
author_facet Mehmood, H. (Hassan)
author_sort Mehmood, H. (Hassan)
title Predicting parking space availability based on heterogeneous data using Machine Learning techniques
title_short Predicting parking space availability based on heterogeneous data using Machine Learning techniques
title_full Predicting parking space availability based on heterogeneous data using Machine Learning techniques
title_fullStr Predicting parking space availability based on heterogeneous data using Machine Learning techniques
title_full_unstemmed Predicting parking space availability based on heterogeneous data using Machine Learning techniques
title_sort predicting parking space availability based on heterogeneous data using machine learning techniques
publisher University of Oulu
publishDate 2019
url http://jultika.oulu.fi/Record/nbnfioulu-201905101704
work_keys_str_mv AT mehmoodhhassan predictingparkingspaceavailabilitybasedonheterogeneousdatausingmachinelearningtechniques
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