Article

A Probabilistic Model for Vehicle Scheduling Based on Stochastic Trip Times

Details

Citation

Shen Y, Xu J & Li J (2016) A Probabilistic Model for Vehicle Scheduling Based on Stochastic Trip Times. Transportation Research - Part B - Methodological, 85, pp. 19-31. https://doi.org/10.1016/j.trb.2015.12.016

Abstract
Vehicle scheduling plays a profound role in public transit planning. Traditional approaches for the Vehicle Scheduling Problem (VSP) are based on a set of predetermined trips in a given timetable. Each trip contains a departure point/time and an arrival point/time whilst the trip time (i.e. the time duration of a trip) is fixed. Based on fixed durations, the resulting schedule is hard to comply with in practice due to the variability of traffic and driving conditions. To enhance the robustness of the schedule to be compiled, the VSP based on stochastic trip times instead of fixed ones is studied. The trip times follow the probability distributions obtained from the data captured by Automatic Vehicle Locating (AVL) systems. A network flow model featuring the stochastic trips is devised to better represent this problem, meanwhile the compatibility of any pair of trips is redefined based on trip time distributions instead of fixed values as traditionally done. A novel probabilistic model of the VSP is proposed with the objectives of minimizing the total cost and maximizing the on-time performance. Experiments show that the probabilistic model may lead to more robust schedules without increasing fleet size.

Keywords
Vehicle scheduling; Probabilistic model; Stochastic trip time; Delay propagation

Journal
Transportation Research - Part B - Methodological: Volume 85

StatusPublished
Publication date31/03/2016
Publication date online15/01/2016
Date accepted by journal29/12/2015
URLhttp://hdl.handle.net/1893/23282
PublisherElsevier
ISSN0191-2615