Rail transit delays are generally discussed in terms of on-time performance or problems at individual stops. Such stop-scale approaches ignore the fact that delays are also caused and perpetuated by network-wide factors (e.g., bottlenecks caused by shared tracks by multiple transit lines). The objective of this paper is to develop a network model and metrics that can quantify the delay dependencies between transit network stops, and identify local sources of network-wide issues. For this purpose, Bayesian network learning (at the intersection of machine learning and network science) was utilized. Based on the calculated Bayesian networks (BNs), network metrics (inducer and susceptible) were formulated to quantify the network-wide impacts of...
The final publication is available at Elsevier via https://doi.org/10.1016/j.jedc.2018.11.005. © 201...
Passenger train delay significantly influences riders’ decision to choose rail transport as their mo...
Railway network operations form complex systems. Any disruption adversely impacts the operations, ca...
Delays in transport networks has adverse implications for infrastructure and service managers as wel...
Train delay evolutions exhibit different patterns (i.e., increasing delays, decreasing delays, or un...
In order for public transportation to remain an attractive travel option, its reliability must be im...
Disruptions in public transport can have major implications for passengers and service providers. Ou...
Reliability and punctuality are the key evaluation criteria in railway service for both passengers a...
A new Bayesian Network (BN) learning approach is developed in this work to analyze the effect of dif...
In this paper we present a stochastic model for predicting the propagation of train delays based on ...
Reactionary delays that propagate from a primary source throughout train journeys are an immediate c...
Predictions of transit delays are crucial to passengers and operators. Passengers utilize the predic...
A Railway Traffic Management problem can be defined as forecasting fu- ture progression of trains, i...
© 2019 Australasian Transport Research Forum, ATRF 2019 - Proceedings. All rights reserved. Reliabil...
Smart card data enables the estimation of passenger delays throughout the public transit network. Ho...
The final publication is available at Elsevier via https://doi.org/10.1016/j.jedc.2018.11.005. © 201...
Passenger train delay significantly influences riders’ decision to choose rail transport as their mo...
Railway network operations form complex systems. Any disruption adversely impacts the operations, ca...
Delays in transport networks has adverse implications for infrastructure and service managers as wel...
Train delay evolutions exhibit different patterns (i.e., increasing delays, decreasing delays, or un...
In order for public transportation to remain an attractive travel option, its reliability must be im...
Disruptions in public transport can have major implications for passengers and service providers. Ou...
Reliability and punctuality are the key evaluation criteria in railway service for both passengers a...
A new Bayesian Network (BN) learning approach is developed in this work to analyze the effect of dif...
In this paper we present a stochastic model for predicting the propagation of train delays based on ...
Reactionary delays that propagate from a primary source throughout train journeys are an immediate c...
Predictions of transit delays are crucial to passengers and operators. Passengers utilize the predic...
A Railway Traffic Management problem can be defined as forecasting fu- ture progression of trains, i...
© 2019 Australasian Transport Research Forum, ATRF 2019 - Proceedings. All rights reserved. Reliabil...
Smart card data enables the estimation of passenger delays throughout the public transit network. Ho...
The final publication is available at Elsevier via https://doi.org/10.1016/j.jedc.2018.11.005. © 201...
Passenger train delay significantly influences riders’ decision to choose rail transport as their mo...
Railway network operations form complex systems. Any disruption adversely impacts the operations, ca...