Passenger demand prediction on bus services

Public transport, especially the bus transport, can reduce the private car usage and fuel consumption, and alleviate traffic congestion. However, when traveling with buses, the travelers not only care about the waiting time, but also care about the crowdedness in the bus itself. Excessively overcrowded bus may drive away the anxious travelers and make them reluctant to take buses. So accurate, real-time and reliable passenger demand prediction becomes necessary, which can help determine the bus headway and reduce the waiting time of passengers. However, there are three major challenges for predicting the passenger demand on bus services: inhomogeneous, seasonal bursty periods and periodicities. To overcome the challenges, we propose three predictive models and further take a data stream ensemble framework to predict the number of passengers. We develop an experiment over a 22-week period. The evaluation results suggest that the proposed method achieves outstanding prediction accuracy among 86,411 passenger demands on bus services, more than 78% of them are accurately forecasted.

[1]  Dongjoo Park,et al.  Dynamic multi-interval bus travel time prediction using bus transit data , 2010 .

[2]  G. F. Newell Dispatching Policies for a Transportation Route , 1971 .

[3]  Ozan K. Tonguz,et al.  Self-organized traffic control , 2010, VANET '10.

[4]  D.N. Ranasinghe,et al.  Discovering automobile congestion and volume using vanet’s , 2008, 2008 8th International Conference on ITS Telecommunications.

[5]  Moumena Chaqfeh,et al.  A novel method for reducing road traffic congestion using vehicular communication , 2010, IWCMC.

[6]  Anupam Joshi,et al.  StreetSmart Traffic: Discovering and Disseminating Automobile Congestion Using VANET's , 2007, 2007 IEEE 65th Vehicular Technology Conference - VTC2007-Spring.

[7]  Spyros Makridakis,et al.  The M3-Competition: results, conclusions and implications , 2000 .

[8]  Ilja Radusch,et al.  V2X-Based Traffic Congestion Recognition and Avoidance , 2009, 2009 10th International Symposium on Pervasive Systems, Algorithms, and Networks.

[9]  Bin Yu,et al.  Bus arrival time prediction at bus stop with multiple routes , 2011 .

[10]  Carlos F. Daganzo,et al.  A headway-based approach to eliminate bus bunching: Systematic analysis and comparisons , 2009 .

[11]  Shangyao Yan,et al.  Inter-city bus routing and timetable setting under stochastic demands , 2006 .

[12]  C. Holt Author's retrospective on ‘Forecasting seasonals and trends by exponentially weighted moving averages’ , 2004 .

[13]  Wasan Pattara-Atikom,et al.  Estimating Road Traffic Congestion using Cell Dwell Time with Simple Threshold and Fuzzy Logic Techniques , 2007, 2007 IEEE Intelligent Transportation Systems Conference.