In many big cities, train delays are among the most complained-about events by the public. Although various models have been proposed for train delay prediction, prior studies on both primary and secondary train delay prediction are limited in number. Recent advances in deep learning approaches and increasing availability of various data sources has created new opportunities for more efficient and accurate train delay prediction. In this study, we propose a hybrid deep learning solution by integrating long short-term memory (LSTM) and Critical Point Search (CPS). LSTM deals with long-term prediction tasks of trains’ running time and dwell time, while CPS uses predicted values with a nominal timetable to identify primary and secondary delays...
Real-time prediction of train arrivals is important for proactive traffic control and information pr...
State-of-the-art train delay prediction systems do not exploit historical train movements data colle...
Time series prediction can be generalized as a process that extracts useful information from histori...
Train delays are among the most complained events by the public communities in urban cities. Train d...
Predictive analytics is an increasingly popular tool for enhancing decision-making processes but is ...
Passenger train delay significantly influences riders’ decision to choose rail transport as their mo...
Current train delay (TD) prediction systems do not take advantage of state-of-the-art tools and tech...
When urban rail transit is faced with a large number of commuter passengers during peak periods, pas...
Current train delay prediction systems do not take advantage of state-of-the-art tools and technique...
Different from the existing train delay studies that had strived to explore sophisticated algorithms...
We test the effect of a variety of feature sets representing passenger volumes, weather conditions a...
Nowadays a large amount of data is collected from sensor devices across the cyber-physical networks....
On the one hand, having a tight schedule is desirable and very efficient for freight transport compa...
Reactionary delays that propagate from a primary source throughout train journeys are an immediate c...
The short-term forecast of rail transit is one of the most essential issues in urban intelligent tra...
Real-time prediction of train arrivals is important for proactive traffic control and information pr...
State-of-the-art train delay prediction systems do not exploit historical train movements data colle...
Time series prediction can be generalized as a process that extracts useful information from histori...
Train delays are among the most complained events by the public communities in urban cities. Train d...
Predictive analytics is an increasingly popular tool for enhancing decision-making processes but is ...
Passenger train delay significantly influences riders’ decision to choose rail transport as their mo...
Current train delay (TD) prediction systems do not take advantage of state-of-the-art tools and tech...
When urban rail transit is faced with a large number of commuter passengers during peak periods, pas...
Current train delay prediction systems do not take advantage of state-of-the-art tools and technique...
Different from the existing train delay studies that had strived to explore sophisticated algorithms...
We test the effect of a variety of feature sets representing passenger volumes, weather conditions a...
Nowadays a large amount of data is collected from sensor devices across the cyber-physical networks....
On the one hand, having a tight schedule is desirable and very efficient for freight transport compa...
Reactionary delays that propagate from a primary source throughout train journeys are an immediate c...
The short-term forecast of rail transit is one of the most essential issues in urban intelligent tra...
Real-time prediction of train arrivals is important for proactive traffic control and information pr...
State-of-the-art train delay prediction systems do not exploit historical train movements data colle...
Time series prediction can be generalized as a process that extracts useful information from histori...