首页> 外文期刊>Transportation >Relocating shared automated vehicles under parking constraints: assessing the impact of different strategies for on-street parking
【24h】

Relocating shared automated vehicles under parking constraints: assessing the impact of different strategies for on-street parking

机译:在停车限制下重新安置共享自动化车辆:评估不同策略对街边停车的影响

获取原文
获取原文并翻译 | 示例
       

摘要

With shared mobility services becoming increasingly popular and vehicle automation technology advancing fast, there is an increasing interest in analysing the impacts of large-scale deployment of shared automated vehicles. In this study, a large fleet of shared automated vehicles providing private rides to passengers is introduced to an agent-based simulation model based on the city of Amsterdam, the Netherlands. The fleet is dimensioned for a sufficient service efficiency during peak-hours, meaning that in off-peak hours a substantial share of vehicles is idle, requiring vehicle relocation strategies. This study assesses the performance of zonal pro-active relocation strategies for on-demand passenger transport under constrained curbside parking capacity: (1) demand-anticipation, (2) even supply dispersion and (3) balancing between demand and supply of vehicles. The strategies are analysed in regard to service efficiency (passenger waiting times, operational efficiency), service externalities (driven mileage, parking usage) and service equity (spatial distribution of externalities and service provision). All pro-active relocation strategies are outperformed by a naive remain-at-drop off-location strategy in a scenario where curbside parking capacity is in abundance. The demand-anticipation heuristic leads to the highest average waiting times due to vehicle bunching at demand-hotspots which results in an uneven usage of parking facilities. The most favourable results in regard to service efficiency and equity are achieved with the heuristics balancing demand and supply, at the costs of higher driven mileage due to the relocation of idle vehicles. These results open up opportunities for municipalities to accompany the introduction of large fleets of shared automated vehicles with suitable curbside management strategies that mitigate undesired effects.
机译:随着共同移动服务越来越受欢迎,车辆自动化技术快速推进,越来越兴趣地分析了分析自动化车辆的大规模部署的影响。在本研究中,将乘坐乘客提供私人游乐设施的大型队列,以荷兰阿姆斯特丹市为基于代理的仿真模型。舰队在峰值小时内为足够的维修效率方面的维修效率,这意味着在非高峰时段,大量的车辆闲置是空闲的,需要车辆搬迁策略。本研究评估了受限制的路边停车能力下按需客运的局部积极搬迁策略的表现:(1)需求 - 预期,(2)甚至提供分散和(3)车辆需求与供应之间的平衡。关于服务效率(客人等待时间,运营效率),服务外部性(驱动的里程,停车使用)和服务权益(外部性和服务提供的空间分布),分析了策略。所有Pro-Active Relocation策略都是在路边停车能力丰富的情况下在场景中的天真剩余的偏离位置策略。需求 - 期待的启发式引发通向最高的平均等待时间,因为车辆在需求热点划分的情况下导致停车设施不均匀的使用。由于闲置车辆搬迁,在高等行程的成本下,通过启发式的平衡需求和供应,实现了服务效率和股权的最有利的结果。这些结果为市政当局开辟了伴随着引入的共用自动化车队的机会,并利用适当的路边管理策略来减轻不期望的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号