Bus Travel Time Prediction: A Lognormal Auto-Regressive (AR) Modeling Approach
B. Dhivyabharathi, B. Anil Kumar, Avinash Achar, Lelitha Vanajakshi

TL;DR
This paper introduces novel lognormal auto-regressive models for real-time bus travel time prediction, leveraging temporal correlations and partial correlation techniques to improve accuracy under heterogeneous traffic conditions.
Contribution
It proposes a new non-stationary AR approach exploiting partial correlation and incorporates log-normal distribution modeling for Indian bus GPS data.
Findings
Improved prediction accuracy over existing methods
Effective modeling of log-normal travel time data
Enhanced multi-segment ahead travel time prediction
Abstract
Providing real time information about the arrival time of the transit buses has become inevitable in urban areas to make the system more user-friendly and advantageous over various other transportation modes. However, accurate prediction of arrival time of buses is still a challenging problem in dynamically varying traffic conditions especially under heterogeneous traffic condition without lane discipline. One broad approach researchers have adopted over the years is to segment the entire bus route into segments and work with these segment travel times as the data input (from GPS traces) for prediction. This paper adopts this approach and proposes predictive modelling approaches which fully exploit the temporal correlations in the bus GPS data. Specifically, we propose two approaches: (a) classical time-series approach employing a seasonal AR model (b)unconventional linear,…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation Planning and Optimization · Traffic control and management
