...
首页> 外文期刊>Data in Brief >Optimization data on total cost of ownership for conventional and battery electric heavy vehicles driven by humans and by automated driving systems
【24h】

Optimization data on total cost of ownership for conventional and battery electric heavy vehicles driven by humans and by automated driving systems

机译:对人类和自动化驾驶系统驱动的常规和电池电力重型车辆总体拥有成本的优化数据

获取原文

摘要

In road freight transport, the emerging technologies such as automated driving systems improve the mobility, productivity and fuel efficiency. However, the improved efficiency is not enough to meet environmental goals due to growing demands of transportation. Combining automated driving systems and electrified propulsion can substantially improve the road freight transport efficiency. However, the high cost of the battery electric heavy vehicles is a barrier hindering their adoption by the transportation companies. Automated driving systems, requiring no human driver on-board, make the battery electric heavy vehicles competitive to their conventional counterparts in a wider range of transportation tasks and use cases compared to the vehicles with human drivers. The presented data identify transportation tasks where the battery electric heavy vehicles driven by humans or by automated driving systems have lower cost of ownership than their conventional counterparts. The data were produced by optimizing the vehicle propulsion system together with the loading/unloading schemes and charging powers, with the objective of minimizing the total cost of ownership on 3072 different transportation scenarios, according to research article “Impact of automated driving systems on road freight transport and electrified propulsion of heavy vehicles” (Ghandriz et?al., 2020) [2]. The data help understanding the effects of traveled distance, road hilliness and vehicle size on the total cost of ownership of the vehicles with different propulsion and driving systems. Data also include sensitivity tests on the uncertain parameters.
机译:在公路货运中,自动化驾驶系统等新兴技术提高了移动性,生产力和燃油效率。然而,由于运输需求不断增长,提高效率不足以满足环境目标。结合自动化驾驶系统和电气化推进可以显着提高道路货运效率。然而,电池电力重型车辆的高成本是妨碍运输公司采用的障碍。自动化驾驶系统,无需人类驾驶员,使电池电力重型车辆在更广泛的运输任务和使用案例中竞争其传统的同行,与具有人类驱动程序的车辆相比。所呈现的数据识别由人类或自动化驾驶系统驱动的电池电力重型车辆的交通任务,其拥有成本低于传统的对应物。通过将车辆推进系统与装载/卸载方案和充电功率一起优化车辆推进系统,目的是通过研究文章“自动化驾驶系统对道路货运的影响,最大限度地减少3072种不同的交通方案的总体拥有成本的目的。重型车辆的运输和电气推进“(Ghandriz等,2020)[2]。这些数据有助于了解旅行距离,道路丘比特和车辆规模对具有不同推进和驱动系统的车辆总体拥有成本的影响。数据还包括对不确定参数的灵敏度测试。

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