Quantifying the Fleet Composition at Full Adoption of Shared Autonomous Electric Vehicles: An Agent-based Approach

Q3 Social Sciences
P. Hogeveen, M. Steinbuch, G. Verbong, Auke Hoekstra
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引用次数: 2

Abstract

Exploring the impact of full adoption of fit-for-demand shared and autonomous electric vehicles on the passenger vehicle fleet of a society. Shared Eutonomous Electric Vehicles (SAEVs) are expected to have a disruptive impact on the mobility sector. Reduced cost for mobility and increased accessibility will induce new mobility demand and the vehicles that provide it will be fit-for-demand vehicles. Both these aspects have been qualitatively covered in recent research, but there have not yet been attempts to quantify fleet compositions in scenarios where passenger transport is dominated by fit-for-demand, one-person autonomous vehicles. To quantify the composition of the future vehicle fleet when all passenger vehicles are autonomous, shared and fit-for-demand and where cheap and accessible mobility has significantly increased the mobility demand. An agent-based model is developed to model detailed travel dynamics of a large population. Numerical data is used to mimic actual driving motions in the Netherlands. Next, passenger vehicle trips are changed to trips with fit-for-demand vehicles, and new mobility demand is added in the form of longer tips, more frequent trips, modal shifts from public transport, redistribution of shared vehicles, and new user groups. Two scenarios are defined for the induced mobility demand from SAEVs, one scenario with limited increased mobility demand, and one scenario with more than double the current mobility demand. Three categories of fit-for-demand vehicles are stochastically mapped to all vehicle trips based on each trip's characteristics. The vehicle categories contain two one-person vehicle types and one multi-person vehicle type. The simulations show that at full adoption of SAEVs, the maximum daily number of passenger vehicles on the road increases by 60% to 180%. However, the total fleet size could shrink by up to 90% if the increase in mobility demand is limited. An 80% reduction in fleet size is possible at more than doubling the current mobility demand. Additionally, about three-quarters of the SAEVs can be small one-person vehicles. Full adoption of fit-for-demand SAEVs is expected to induce new mobility demand. However, the results of this research indicate that there would be 80% to 90% less vehicles required in such a situation, and the vast majority would be one-person vehicles. Such vehicles are less resource-intense and, because of their size and electric drivetrains, are significantly more energy-efficient than the average current-day vehicle. This research indicates the massive potential of SAEVs to lower both the cost and the environmental impact of the mobility sector. Quantification of these environmental benefits and reduced mobility costs are proposed for further research.
全面采用共享自动驾驶电动汽车时的车队组成量化:基于代理的方法
探索全面采用符合需求的共享和自动驾驶电动汽车对社会乘用车车队的影响。共享经济型电动汽车(SAEV)预计将对移动行业产生破坏性影响。移动成本的降低和可达性的提高将引发新的移动需求,提供这种需求的车辆将适合需求车辆。最近的研究定性地涵盖了这两个方面,但在客运以满足需求的单人自动驾驶汽车为主的情况下,还没有试图量化车队组成。量化未来车队的组成,当所有乘用车都是自主的、共享的、适合需求的,并且廉价和无障碍的出行显著增加了出行需求。开发了一个基于代理的模型来对大量人口的详细旅行动态进行建模。数字数据用于模拟荷兰的实际驾驶动作。接下来,乘用车出行转变为适合需求的车辆出行,并以更长的小费、更频繁的出行、公共交通的模式转变、共享汽车的再分配和新的用户群体的形式增加了新的出行需求。针对SAEV引发的移动需求,定义了两种场景,一种是移动需求增加有限的场景,另一种是当前移动需求增加一倍以上的场景。基于每次出行的特征,将三类适合需求的车辆随机映射到所有车辆出行。车辆类别包括两种单人车辆类型和一种多人车辆类型。模拟表明,在完全采用SAEV的情况下,道路上的最大日载客车辆数量增加了60%至180%。然而,如果移动需求的增长受到限制,车队总规模可能会缩减90%。在当前移动需求增加一倍以上的情况下,车队规模可能减少80%。此外,大约四分之三的SAEV可以是小型单人车。全面采用符合需求的SAEV预计将引发新的移动需求。然而,这项研究的结果表明,在这种情况下,所需的车辆将减少80%至90%,绝大多数将是单人车。这种车辆的资源密集度较低,而且由于其尺寸和电动传动系统,其能效明显高于当前的普通车辆。这项研究表明,SAEV在降低移动行业的成本和环境影响方面具有巨大潜力。建议对这些环境效益和降低的移动成本进行量化,以供进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Open Transportation Journal
Open Transportation Journal Social Sciences-Transportation
CiteScore
2.10
自引率
0.00%
发文量
19
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