Multi-step prediction of experienced travel times using agent-based modeling
Authored by Hao Chen, Hesham A Rakha
Date Published: 2016
DOI: 10.1016/j.trc.2016.07.004
Sponsors:
Virginia Department of Transportation (VDOT)
Mid-Atlantic Universities Transportation Center (MAUTC)
Platforms:
MATLAB
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
This paper develops an agent-based modeling approach to predict
multi-step ahead experienced travel times using real-time and historical
spatiotemporal traffic data. At the microscopic level, each agent
represents an expert in a decision-making system. Each expert predicts
the travel time for each time interval according to experiences from a
historical dataset. A set of agent interactions is developed to preserve
agents that correspond to traffic patterns similar to the real-time
measurements and replace invalid agents or agents associated with
negligible weights with new agents. Consequently, the aggregation of
each agent's recommendation (predicted travel time with associated
weight) provides a macroscopic level of output, namely the predicted
travel time distribution. Probe vehicle data from a 95-mile freeway
stretch along I-64 and I-264 are used to test different predictors. The
results show that the agent-based modeling approach produces the least
prediction error compared to other state-of-the-practice and
state-of-the-art methods (instantaneous travel time, historical average
and k-nearest neighbor), and maintains less than a 9\% prediction error
for trip departures up to 60 min into the future for a two-hour trip.
Moreover, the confidence boundaries of the predicted travel times
demonstrate that the proposed approach also provides high accuracy in
predicting travel time confidence intervals. Finally, the proposed
approach does not require offline training thus making it easily
transferable to other locations and the fast algorithm computation
allows the proposed approach to be implemented in real-time applications
in Traffic Management Centers. (C) 2016 Elsevier Ltd. All rights
reserved.
Tags
Market
Real-time
Framework
Neural-networks
Decision-support-system
Freeways