So-called tap-in–tap-off smart card data have become increasingly available and popular as a result of the deployment of automatic fare collection systems on transit systems in many cities and areas worldwide. An opportunity to obtain much more accurate transit demand data than before has thus been opened to both researchers and practitioners. However, given that travelers in some cases can choose different origin and destination stations, as well as different transit lines, depending on their personal acceptable walking distances, being able to aggregate the demand of spatially close stations becomes essential when transit demand matrices are constructed. With the aim of investigating such problems using data-driven approaches, this paper ...
Smart card data gathered by Automated Fare Collection (AFC) systems are a valuable resource for stud...
Route-level, bus passenger origin-destination (O-D) matrices summarize useful information on travel ...
Clustering methods are popular tools for pattern recognition in spatial databases. Existing clusteri...
So-called tap-in–tap-off smart card data have become increasingly available and popular as a result ...
So-called tap-in–tap-off smart card data have become increasingly available and popular as a result ...
Transit market segmentation enables transit providers to comprehend the commonalities and heterogene...
Smart card datasets in the public transit network provide opportunities to analyse the behaviour of ...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
Public transport (PT) plays an increasingly important role in solving mobility challenges, especiall...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
On-demand transport has become a common mode of transport with ride-sourcing companies like Uber, Ly...
Data collected by Automated Fare Collection (AFC) systems are a valuable resource for studying the t...
Thesis: Ph. D. in Transportation, Massachusetts Institute of Technology, Department of Civil and Env...
On-demand transit has become a common mode of transport with ride-sourcing companies like Uber, Lyft...
Smart card data gathered by automated fare collection (AFC) systems are valuable resources for study...
Smart card data gathered by Automated Fare Collection (AFC) systems are a valuable resource for stud...
Route-level, bus passenger origin-destination (O-D) matrices summarize useful information on travel ...
Clustering methods are popular tools for pattern recognition in spatial databases. Existing clusteri...
So-called tap-in–tap-off smart card data have become increasingly available and popular as a result ...
So-called tap-in–tap-off smart card data have become increasingly available and popular as a result ...
Transit market segmentation enables transit providers to comprehend the commonalities and heterogene...
Smart card datasets in the public transit network provide opportunities to analyse the behaviour of ...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
Public transport (PT) plays an increasingly important role in solving mobility challenges, especiall...
The public transport industry faces challenges in catering to the variety of mobility patterns and c...
On-demand transport has become a common mode of transport with ride-sourcing companies like Uber, Ly...
Data collected by Automated Fare Collection (AFC) systems are a valuable resource for studying the t...
Thesis: Ph. D. in Transportation, Massachusetts Institute of Technology, Department of Civil and Env...
On-demand transit has become a common mode of transport with ride-sourcing companies like Uber, Lyft...
Smart card data gathered by automated fare collection (AFC) systems are valuable resources for study...
Smart card data gathered by Automated Fare Collection (AFC) systems are a valuable resource for stud...
Route-level, bus passenger origin-destination (O-D) matrices summarize useful information on travel ...
Clustering methods are popular tools for pattern recognition in spatial databases. Existing clusteri...