首页> 外文会议>International symposium on advances in spatial and temporal databases >EasyEV: Monitoring and Querying System for Electric Vehicle Fleets Using Smart Car Data
【24h】

EasyEV: Monitoring and Querying System for Electric Vehicle Fleets Using Smart Car Data

机译:EasyEV:使用智能汽车数据的电动车队监控和查询系统

获取原文

摘要

Electric vehicles (EVs) have great potential as a modern mobility concept. Electricity already relies on a broad infrastructure and is available anywhere in developed countries. Furthermore, EVs are emmission-free which makes them the preferable form of individual transportation in urban areas where air pollution is often alarmingly high. However, operating EVs has several drawbacks compared to common combustion engine cars. The range of most EVs is raxely above 150 km, and when running out of energy, recharging an EV usually takes up to several hours. In order to benefit from the advantages of EVs without being afflicted with the disadvantages, it is advisable to rely on the support from smart systems for trip and charge planning. In the project Shared E-Fleet, the shared use of a fleet of electric cars by a heterogeneous group of drivers is examined. In the presented demo, we introduce a spatio-temporal query system which was developed to support drivers and fleet managers alike. For the driver, the system provides assistance to keep in range of charging stations and provides routing alternatives to a specified destination. For the fleet manager, the system incorporates real-time information to identify possible delays or battery drainages and thereby detect deviations from the fleet schedule to allow for early rescheduling.
机译:电动汽车(EV)作为现代出行概念具有巨大潜力。电力已经依靠广泛的基础设施,并且在发达国家的任何地方都可以使用。此外,电动汽车是无排放的,这使其成为空气污染经常令人震惊的城市地区的个人交通工具的首选形式。但是,与普通内燃机汽车相比,电动汽车有几个缺点。大多数电动汽车的续航里程超过150公里,并且当能量耗尽时,给电动汽车充电通常需要几个小时。为了在不遭受缺点困扰的情况下受益于EV的优势,建议依靠智能系统的支持来进行行程和充电计划。在“共享电子舰队”项目中,研究了一组异类驾驶员对电动车队的共享使用。在演示中,我们介绍了一个时空查询系统,该系统旨在支持驾驶员和车队管理人员。对于驾驶员而言,该系统可提供帮助以保持在充电站范围内,并提供前往指定目的地的替代路线。对于车队管理者,该系统结合了实时信息,以识别可能的延误或电池排空,从而检测与车队时间表的偏差,以便尽早进行重新安排。

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