Modeling the Dynamics of Driver's Dilemma Zone Perception Using Agent Based Modeling Techniques
Authored by Montasir Abbas, Sahar Ghanipoor Machiani
Date Published: 2016
DOI: 10.14257/ijt.2016.4.2.01
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Abstract
Several research efforts investigated and targeted the issue of reducing
dilemma zone (DZ) related crashes (where drivers upstream of
intersections are uncertain about their decision to stop or go at the
onset of yellow). One of the important unanswered questions in the
literature is whether driver's perception of DZ changes individually as
a function of their safe and unsafe past experience at similar
situations. This paper investigates the use of agent-based methods in
capturing the effect of driver's learning/dynamic perception of DZ. A
driving simulator was used to collect driver behavior data. An
actor-critic reinforcement learning algorithm was implemented to model
the dynamic behavior of driver in dilemma zone. Fuzzy logic is used to
partition traffic state variables and a reinforcement learning technique
is used in policy calibration and update. The study results show a close
matching between the driver's action from the driving simulator and the
model output.
The research reported here contributes to improved modeling of driver
definition and behavior in dilemma zone, which will have significant
impacts on the design of optimal control methods and the assessment of
intersection safety. Moreover, it lays the groundwork for several
subsequent simulator studies and scenario development in driving
simulator to investigate the drivers' behavior at signalized
intersections.
Tags
behavior
Light
Speed signalized intersections
Fuzzy-sets