Abstract

Social media and big data have emerged to be a useful source of information that can be used for planning purposes, particularly transportation planning and trip-distribution studies. Cities in developing countries such as South Africa often struggle with out-dated, unreliable and cumbersome techniques such as traffic counts and household surveys to conduct origin and destination studies. The emergence of ubiquitous crowd sourced data, big data, social media and geolocation based services has shown huge potential in providing useful information for origin and destination studies. Perhaps such information can be utilised to determine the origin and destination of commuters using the Gautrain, a high-speed railway in Gauteng province South Africa. To date little is known about the origins and destinations of Gautrain commuters. Accordingly, this study assesses the viability of using geolocation-based services namely Facebook and Twitter in mapping out the network movements of Gautrain commuters. Explorative Spatial Data Analysis (ESDA), Echo-social and ArcGis software were used to extract social media data, i.e. tweets and Facebook posts as well as to visualize the concentration of Gautrain commuters. The results demonstrate that big data and geolocation based services have the significant potential to predict movement network patterns of commuters and this information can thus, be used to inform and improve transportation planning. Nevertheless use of crowd sourced data and big data has privacy concerns that still need to be addressed.

Highlights

  • Over the past 30 years Origin-Destination models (O-D) have evolved from static to real-time dynamic traffic models (Zhou & Mahmassani, 2007)

  • This study aims to assess the feasibility of using geolocation-based services such as Twitter and Facebook as data mining tools to map the movement network patterns of the Gautrain commuters

  • The Gautrain Park station is located near the largest train station in Africa. This station is commonly known as Park station and it is renowned for offering a variety of modes of transport to commuters from all over the county and Africa

Read more

Summary

Introduction

Over the past 30 years Origin-Destination models (O-D) have evolved from static to real-time dynamic traffic models (Zhou & Mahmassani, 2007) These models have been crucial in establishing Intelligent Transportation Systems (ITS) for a city, since they provide predictions of traffic flows and network movements of commuters amongst other things (Hu & Liou, 2014). Various scholars have identified Intelligent Communication Technologies (ICT) as efficient tools which have the potential to assist with the effective management of transportation systems (European Commission, 2010) This is seen evident in cities such as Barcelona and Dubai, given that both cities are well renowned for being prominent smart cities established to date (Bonnel et al, 2015 & Dassani et al, 2015). South Africa has recently caught on to this trend, as it has established its first rapid train system known as the Gautrain, which is a first of its kind to be established in Africa

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call