A Case Study on Strategic Planning of Mixed Fleets and Charging Infrastructure for Low-Emission Demand-Responsive Feeder Services in Bettembourg, Luxembourg

  • Haruko Nakao
  • , Tai-Yu Ma
  • , Richard Connors
  • , Francesco Viti

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Electrifying demand-responsive transport systems need to plan the charging infrastructure carefully, considering the trade-offs of charging efficiency and charging infrastructure costs. Earlier studies assume a fully electrified fleet and overlook the planning issue in the transition period. This study addresses the joint fleet size and charging infrastructure planning for a demand-responsive feeder service under stochastic demand, given a user-defined targeted CO2 emission reduction policy. We propose a bi-level optimization model where the upper-level determines charging station configuration given stochastic demand patterns, whereas the lower-level solves a mixed fleet dial-a-ride routing problem under the CO2 emission and capacitated charging station constraints. An efficient deterministic annealing metaheuristic is proposed to solve the CO2-constrained mixed fleet routing problem. The performance of the algorithm is validated by a series of numerical test instances with up to 500 requests. We apply the model for a real-world case study in Bettembourg, Luxembourg, with different demand and customized CO reduction targets. The results show that the proposed method provides a flexible tool for joint charging infrastructure and fleet size planning under different levels of demand and CO2 emission reduction targets.
Original languageEnglish
Title of host publication2025 9th International Conference on Models and Technologies for Intelligent Transportation Systems (MT-ITS), Luxembourg, Luxembourg, 2025
Place of PublicationLuxembourg
PublisherIEEE
DOIs
Publication statusPublished - 2025

Keywords

  • mixed fleet
  • charging infrastructure planning
  • demand responsive transport
  • bi-level optimization
  • electric vehicle

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