Passenger incidence (station arrival) behavior has been studied primarily to understand how changes to a transit service will affect passenger waiting times. The impact of one intervention (e.g., increasing frequency) could be overestimated when compared with another (e.g., improving reliability), depending on the assumption of incidence behavior. Understanding passenger incidence allows management decisions to be based on realistic behavioral assumptions. Earlier studies on passenger incidence chose their data samples from stations with a single service pattern such that the linking of passengers to services was straightforward. This choice of data samples simplifies the analysis but heavily limits the stations that can be studied. In any ...
This paper explores the potential of using automated fare card data to quantify the reliability of s...
Metro system disruptions are a big concern due to their impacts on safety, service quality, and oper...
In this paper we apply flexible data-driven analysis methods on large scale mass transit data to ide...
Passenger incidence (station arrival) behavior has been studied primarily to understand how changes ...
Excess journey time (EJT), the difference between actual passenger journey times and journey times i...
Waiting time at public transport stops is perceived by passengers to be more onerous than in-vehicle...
In this paper, we investigate the influence of train headways on passenger platform wait times using...
The amount of time spent waiting at a public transport station is a key element in a passenger’s ass...
In this paper, we investigate the influence of train headways on passenger platform wait times using...
Waiting for public transit is recognized as being more onerous than travel time itself. Previous res...
The availability of smart card data from public transport travelling the last decades allows analyzi...
Schedule disturbances in public transport operations have a tendency to intensify along the line and...
Smart card systems are becoming increasingly popular on a global scale, not just for purchasing gene...
The estimation of platform waiting time has so far received little attention. This research aimed to...
AbstractThis work provides initial investigation into whether equivalence between the mean-variance ...
This paper explores the potential of using automated fare card data to quantify the reliability of s...
Metro system disruptions are a big concern due to their impacts on safety, service quality, and oper...
In this paper we apply flexible data-driven analysis methods on large scale mass transit data to ide...
Passenger incidence (station arrival) behavior has been studied primarily to understand how changes ...
Excess journey time (EJT), the difference between actual passenger journey times and journey times i...
Waiting time at public transport stops is perceived by passengers to be more onerous than in-vehicle...
In this paper, we investigate the influence of train headways on passenger platform wait times using...
The amount of time spent waiting at a public transport station is a key element in a passenger’s ass...
In this paper, we investigate the influence of train headways on passenger platform wait times using...
Waiting for public transit is recognized as being more onerous than travel time itself. Previous res...
The availability of smart card data from public transport travelling the last decades allows analyzi...
Schedule disturbances in public transport operations have a tendency to intensify along the line and...
Smart card systems are becoming increasingly popular on a global scale, not just for purchasing gene...
The estimation of platform waiting time has so far received little attention. This research aimed to...
AbstractThis work provides initial investigation into whether equivalence between the mean-variance ...
This paper explores the potential of using automated fare card data to quantify the reliability of s...
Metro system disruptions are a big concern due to their impacts on safety, service quality, and oper...
In this paper we apply flexible data-driven analysis methods on large scale mass transit data to ide...