Fixed routing or demand-responsive? Agent-based modelling of autonomous first and last mile services in light-rail systems

Jeppe Rich*, Ravi Seshadri, Ali Jamal Jomeh, Sofus Rasmus Clausen

*Corresponding author for this work

Research output: Contribution to journalJournal articleResearchpeer-review

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Abstract

This paper examines the potential of autonomous vehicle (AV) technology for enhancing first and last mile services for a light-rail station. We use an event- and agent-based simulation model to compare the performance of fixed and demand-responsive routing services. The routing of on-demand services is based on a matching algorithm in which incoming passenger requests are prioritized and assigned to vehicles under capacity constraints. Our findings indicate that, for a high-frequency light-rail feeder system, fixed routing is the preferred option, even with the assumed reduction in operational costs due to driver-less operations. However, we also observe that demand-responsive services can be as effective as fixed routing in off-peak hours, provided the heuristics for matching passengers to vehicles are effective. This implies that a combination of the two services could be beneficial in certain contexts. In addition, our results demonstrate that urban sprawl has an impact on the performance of the system, with the demand-responsive services becoming relatively better when urban sprawl increases, while the fixed routing remains superior across most key-performance indicators. To assess the performance of the different services, we employ cost–benefit analysis.
Original languageEnglish
Article number103676
JournalTransportation Research Part A: Policy and Practice
Volume173
Number of pages29
ISSN0965-8564
DOIs
Publication statusPublished - 2023

Keywords

  • Agent-based simulation
  • Autonomous transit
  • Cost–benefit analysis
  • Demand-responsive services
  • First and last mile transport

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