Predicting the probability distribution of bus travel time to move towards reliable planning of public transport services
L\'ea Ricard, Guy Desaulniers, Andrea Lodi, Louis-Martin Rousseau

TL;DR
This paper introduces a probabilistic approach to predict bus travel time distributions to improve the reliability of public transport planning, comparing models on real data to identify the most effective methods.
Contribution
It presents a novel comparison of probabilistic models for travel time density prediction, enhancing the reliability of vehicle scheduling in public transport planning.
Findings
Similarity-based density estimation models outperform non-probabilistic models.
Kernel Density Estimation and k Nearest Neighbors best predict travel time distributions.
Probabilistic models provide valuable uncertainty estimates for planning.
Abstract
An important aspect of the quality of a public transport service is its reliability, which is defined as the invariability of the service attributes. Preventive measures taken during planning can reduce risks of unreliability throughout operations. In order to tackle reliability during the service planning phase, a key piece of information is the long-term prediction of the density of the travel time, which conveys the uncertainty of travel times. We introduce a reliable approach to one of the problems of service planning in public transport, namely the Multiple Depot Vehicle Scheduling Problem (MDVSP), which takes as input a set of trips and the probability density function (p.d.f.) of the travel time of each trip in order to output delay-tolerant vehicle schedules. This work empirically compares probabilistic models for the prediction of the conditional p.d.f. of the travel time, as a…
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Taxonomy
TopicsTransportation Planning and Optimization · Traffic Prediction and Management Techniques · Human Mobility and Location-Based Analysis
Methodstravel james · Emirates Airlines Office in Dubai · Logistic Regression
