Projects per year
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 language | English |
|---|---|
| Title of host publication | 2025 9th International Conference on Models and Technologies for Intelligent Transportation Systems (MT-ITS), Luxembourg, Luxembourg, 2025 |
| Place of Publication | Luxembourg |
| Publisher | IEEE |
| DOIs | |
| Publication status | Published - 2025 |
Keywords
- mixed fleet
- charging infrastructure planning
- demand responsive transport
- bi-level optimization
- electric vehicle
Projects
- 1 Finished
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M-EVRST: Multimodal Electric VEhicle demand RESponsive Transport
Ma, T.-Y. (PI), Klein, S. (CoI), Viti, F. (CoPI), Chow, J. Y. J. (Non Contracting Partner), Connord, R. (CoI) & Venditti, S. (CoI)
Luxembourg National Research Fund (FNR), Luxembourg Institute of Socio-Economic Research (LISER)
1/04/21 → 31/03/24
Project: Research