公共交通
调度(生产过程)
火车
运输工程
线性规划
工作量
钥匙(锁)
禁忌搜索
汽车工程
可变邻域搜索
计算机科学
本地巴士
组分(热力学)
地铁列车时刻表
运筹学
作业车间调度
元启发式
变量(数学)
交通系统
过境(卫星)
可变成本
数学优化
总成本
营业成本
衡平法
拖延
总拥有成本
作业成本法
运营成本
城市轨道交通
工程类
作者
Qiang Feng,Di Bai,Rui Feng,Bin Yu
标识
DOI:10.1061/jtepbs.teeng-9231
摘要
As cities strive for cleaner and more efficient transit systems, electric buses (EBs) have emerged as a key component of public transportation decarbonization strategies. However, high battery costs and charging constraints hinder full electrification, leading transit operators to adopt mixed fleets comprising EBs and conventional diesel buses (CBs) as a transitional solution for the foreseeable future. These heterogeneous fleets pose new challenges for scheduling, particularly due to the differences in vehicle characteristics and driver familiarity with bus types. This study proposes a collaborative scheduling framework that integrates vehicle operational features and driver heterogeneity into a unified model for a single transit route. A mixed-integer linear programming (MILP) model is formulated to minimize operational costs while promoting workload equity among drivers. A tailored metaheuristic algorithm based on variable neighborhood tabu search (VNTS) is developed to solve the model efficiently. A case study on a real-world bus route in Dalian, China, demonstrates the effectiveness of the proposed approach in addressing both cost efficiency and fairness.
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