Dynamic bus arrival time prediction with artificial neural networks
Document Type
Article
Publication Date
9-1-2002
Abstract
Transit operations are interrupted frequently by stochastic variations in traffic and ridership conditions that deteriorate schedule or headway adherence and thus lengthen passenger wait times. Providing passengers with accurate vehicle arrival information through advanced traveler information systems is vital to reducing wait time. Two artificial neural networks (ANNs), trained by link-based and stop-based data, are applied to predict transit arrival times. To improve prediction accuracy, both are integrated with an adaptive algorithm to adapt to the prediction error in real time. The bus arrival times predicted by the ANNs are assessed with the microscopic simulation model CORSIM, which has been calibrated and validated with real-world data collected from route number 39 of the New Jersey Transit Corporation. Results show that the enhanced ANNs outperform the ones without integration of the adaptive algorithm.
Identifier
0036719106 (Scopus)
Publication Title
Journal of Transportation Engineering
External Full Text Location
https://doi.org/10.1061/(ASCE)0733-947X(2002)128:5(429)
ISSN
0733947X
First Page
429
Last Page
438
Issue
5
Volume
128
Recommended Citation
Chien, Steven I.Jy; Ding, Yuqing; and Wei, Chienhung, "Dynamic bus arrival time prediction with artificial neural networks" (2002). Faculty Publications. 14624.
https://digitalcommons.njit.edu/fac_pubs/14624
