Over the past two decades, smart card data have received increasing interest from transport researchers as a new source of data for travel behaviour investigation. Collected by smart card systems, smart card data surpass traditional travel survey data in providing more comprehensive spatial–temporal information about urban public transport-based (UPT) trips. However, the utility of smart card data has arguably yet to be exploited fully in terms of extracting and exploring the spatial–temporal dynamics of UPT passenger travel behaviour. To advance previous work in this area, this paper demonstrates a multi-step methodology in order to render more insightful spatial–temporal patterns of UPT passenger travel behaviour. Drawing on the Brisbane,...
The potential role of smart card data for travel behaviour analysis is considered. Case studies of s...
This paper aims to define an algorithm capable of building the origin-destination matrix from check-...
There is a huge potential for exploiting information centered on individual transit users’ behavior ...
Over the past two decades, a growing international trend has been the implementation of Bus Rapid Tr...
Over the past two decades, Location Based Service (LBS) data have been increasingly applied to urban...
All around the world, a large number of people rely on public transport. These days, most transport ...
This study examines the potential of using smart card data in public transit systems to infer attrib...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
Smart card datasets in the public transit network provide opportunities to analyse the behaviour of ...
This study uses smartcard data to quantify and visualize the most popular destinations (‘central pla...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
As the basic travel service for urban transit, bus services carry the majority of urban passengers. ...
Thesis: Ph. D. in Urban and Regional Planning, Massachusetts Institute of Technology, Department of ...
Data collected by Automated Fare Collection (AFC) systems are a valuable resource for studying the t...
This paper explores how we can use smart card data for bus passengers to reveal individual and aggre...
The potential role of smart card data for travel behaviour analysis is considered. Case studies of s...
This paper aims to define an algorithm capable of building the origin-destination matrix from check-...
There is a huge potential for exploiting information centered on individual transit users’ behavior ...
Over the past two decades, a growing international trend has been the implementation of Bus Rapid Tr...
Over the past two decades, Location Based Service (LBS) data have been increasingly applied to urban...
All around the world, a large number of people rely on public transport. These days, most transport ...
This study examines the potential of using smart card data in public transit systems to infer attrib...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
Smart card datasets in the public transit network provide opportunities to analyse the behaviour of ...
This study uses smartcard data to quantify and visualize the most popular destinations (‘central pla...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
As the basic travel service for urban transit, bus services carry the majority of urban passengers. ...
Thesis: Ph. D. in Urban and Regional Planning, Massachusetts Institute of Technology, Department of ...
Data collected by Automated Fare Collection (AFC) systems are a valuable resource for studying the t...
This paper explores how we can use smart card data for bus passengers to reveal individual and aggre...
The potential role of smart card data for travel behaviour analysis is considered. Case studies of s...
This paper aims to define an algorithm capable of building the origin-destination matrix from check-...
There is a huge potential for exploiting information centered on individual transit users’ behavior ...