Day-to-day route choice behavior of drivers is analyzed by the introduction of a new route choice model developed using stochastic learning automata (SLA) theory. This day-to-day route choice model addresses the learning behavior of travelers on the basis of experienced travel time and day-to-day learning. To calibrate the penalties of the model, an Internet-based route choice simulator (IRCS) was developed. The IRCS is a traffic simulation model that represents within-day and day-to-day fluctuations in traffic and was developed using Java programming. The calibrated SLA model is then applied to a simple transportation network to test if global user equilibrium, instantaneous equilibrium, and driver learning have occurred over a period of time. It is observed that the developed stochastic learning model accurately depicts the day-to-day learning behavior of travelers. Finally, the sample network converges to equilibrium in terms of both global user and instantaneous equilibrium.
[1]
Giulio Erberto Cantarella,et al.
Dynamic Processes and Equilibrium in Transportation Networks: Towards a Unifying Theory
,
1995,
Transp. Sci..
[2]
Samer Madanat,et al.
Perception updating and day-to-day travel choice dynamics in traffic networks with information provision
,
1998
.
[3]
Ryuichi Kitamura,et al.
Route Choice Model with Inductive Learning
,
2000
.
[4]
Gary A. Davis,et al.
Large Population Approximations of a General Stochastic Traffic Assignment Model
,
1993,
Oper. Res..
[5]
Giulio Erberto Cantarella,et al.
Modelling dynamics in transportation networks: State of the art and future developments
,
1993,
Simul. Pract. Theory.
[6]
Yasunori Iida,et al.
Experimental analysis of dynamic route choice behavior
,
1992
.