Projects per year
Abstract
This study addresses the integrated dial-a-ride problem using a fleet of electric vehicles. We propose a mixed-integer-linear programming modelling approach considering multiple depots, customer rejection, partial recharge policy and capacitated charging stations. State-of-the-art mixed-integer-linear programming approaches can solve the problem exactly for only less than 10 requests. This is due to the cumbersome modeling of partial routes in a mass transit network, where the number of arcs expands rapidly with the network size. We developed an efficient departure-expanded transit graph to model the problem efficiently by trimming off unnecessary arcs, and we include a preprocessing step based on time-window tightening on the timetabled transit network. We test the proposed method on a set of test instances with up to 50 requests and different initial battery levels of vehicles within a four-hour computational time limit. The results show that the problem can be solved optimally to a larger problem size and about 95% faster compared to the state-of-the-art. We developed a novel compact arc-based formulation for optimizing electric vehicle routing problems with capacitated charging stations. Our computational results provide a reduction in computational time by up to two digits compared to the state-of-the-art replication-based method.
Original language | English |
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Publication status | Published - 4 Nov 2024 |
Keywords
- Electric vehicle
- Dial-a-Ride
- mixed-integer linear programming
- integrated demand-responsive transport
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)
Fonds National de la Recherche Luxembourg, Luxembourg Institute of Socio-Economic Research (LISER)
1/04/21 → 31/03/24
Project: Research