Optimal mixed fleet and charging infrastructure planning to electrify demand responsive feeder services under stochastic demand

Haruko Nakao, Tai-Yu Ma, Richard Connord, Francesco Viti, Yumeng Fang

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Abstract

This paper addresses the joint optimization of fleet size and charging infrastructure planning for a demand-responsive feeder service under stochastic demand and a targeted CO2 emission reduction policy. The problem is formulated as a bi-level optimization problem where the up-per-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 considering also partial recharge options. An efficient deterministic annealing metaheuristic is proposed. The results show that the good performance of the algorithm. The preliminary results for the bi-level optimization problem with 50 requests highlighted the trade-off between the decisions of different components (mixed fleet size, charging station configuration and targeted CO2 reduction levels).
Original languageEnglish
Number of pages7
Publication statusPublished - Dec 2023
EventThe 9th International Symposium on Transport Network Resilience (INSTR2023) - InterContinental Grand Stanford Hong Kong, Hong Kong, China
Duration: 13 Dec 202314 Dec 2023
https://www.institute-of-transport-studies.hku.hk/instr2023

Conference

ConferenceThe 9th International Symposium on Transport Network Resilience (INSTR2023)
Abbreviated titleINSTR2023
Country/TerritoryChina
CityHong Kong
Period13/12/2314/12/23
Internet address

Keywords

  • bi-level optimization
  • fleet size optimization
  • Charging infrastructure optimization
  • electric vehicle
  • demand responsive transport

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