A micro-simulation model system of departure time using a perception updating model under travel time uncertainty

Dick Ettema*, Guus Tamminga, Harry Timmermans, Theo Arentze

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Existing microscopic traffic models have often neglected departure time change as a possible response to congestion. In addition, they lack a formal model of how travellers base their daily travel decisions on the accumulated experience gathered from repetitively travelling through the transport network. This paper proposes an approach to account for these shortcomings. A micro-simulation approach is applied, in which individuals base their consecutive departure time decisions on a mental model. The mental model is the outcome of a continuous process of perception updating according to principles of reinforcement learning. Individuals' daily travel decisions are linked to the traffic simulator SIAS-PARAMICS to create a simulation system in which both individual decision-making and system performance (and interactions between these two levels) are adequately represented. The model is applied in a case study that supports the feasibility of this approach.

Original languageEnglish
Pages (from-to)325-344
Number of pages20
JournalTransportation Research Part A: Policy and Practice
Volume39
Issue number4 SPEC. ISSS.
DOIs
Publication statusPublished - May 2005

Keywords

  • Congestion
  • Departure time choice
  • Learning and adaptation
  • Micro-simulation

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