Article ID Journal Published Year Pages File Type
1132310 Transportation Research Part B: Methodological 2011 22 Pages PDF
Abstract

In this paper, we extend the α-reliable mean-excess traffic equilibrium (METE) model of Chen and Zhou (Transportation Research Part B 44(4), 2010, 493–513) by explicitly modeling the stochastic perception errors within the travelers’ route choice decision processes. In the METE model, each traveler not only considers a travel time budget for ensuring on-time arrival at a confidence level α, but also accounts for the impact of encountering worse travel times in the (1 − α) quantile of the distribution tail. Furthermore, due to the imperfect knowledge of the travel time variability particularly in congested networks without advanced traveler information systems, the travelers’ route choice decisions are based on the perceived travel time distribution rather than the actual travel time distribution. In order to compute the perceived mean-excess travel time, an approximation method based on moment analysis is developed. It involves using the conditional moment generation function to derive the perceived link travel time, the Cornish–Fisher Asymptotic Expansion to estimate the perceived travel time budget, and the Acerbi and Tasche Approximation to estimate the perceived mean-excess travel time. The proposed stochastic mean-excess traffic equilibrium (SMETE) model is formulated as a variational inequality (VI) problem, and solved by a route-based solution algorithm with the use of the modified alternating direction method. Numerical examples are also provided to illustrate the application of the proposed SMETE model and solution method.

► A stochastic approach is developed to model the perception error within the METE model. ► The stochastic perception error is conditionally dependent on the actual travel time distribution. ► A moment approximation method is developed to compute the perceived mean-excess travel time. ► The proposed model is formulated as a variational inequality problem. ► A route-based traffic assignment algorithm is developed to solve the SMETE model.

Related Topics
Social Sciences and Humanities Decision Sciences Management Science and Operations Research
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