首页> 外文会议>IEEE/RSJ International Conference on Intelligent Robots and Systems >Data-Driven Distributionally Robust Electric Vehicle Balancing for Mobility-on-Demand Systems under Demand and Supply Uncertainties
【24h】

Data-Driven Distributionally Robust Electric Vehicle Balancing for Mobility-on-Demand Systems under Demand and Supply Uncertainties

机译:数据驱动的分布鲁棒电动车辆适用于需求和供应不确定因素的移动性按需系统

获取原文

摘要

As electric vehicle (EV) technologies become mature, EV has been rapidly adopted in modern transportation systems, and is expected to provide future autonomous mobility-on-demand (AMoD) service with economic and societal benefits. However, EVs require frequent recharges due to their limited and unpredictable cruising ranges, and they have to be managed efficiently given the dynamic charging process. It is urgent and challenging to investigate a computationally efficient algorithm that provide EV AMoD system performance guarantees under model uncertainties, instead of using heuristic demand or charging models. To accomplish this goal, this work designs a data-driven distributionally robust optimization approach for vehicle supply-demand ratio and charging station utilization balancing, while minimizing the worst-case expected cost considering both passenger mobility demand uncertainties and EV supply uncertainties. We then derive an equivalent computationally tractable form for solving the distributionally robust problem in a computationally efficient way under ellipsoid uncertainty sets constructed from data. Based on E-taxi system data of Shenzhen city, we show that the average total balancing cost is reduced by 14.49%, the average unfairness of supply-demand ratio and utilization is reduced by 15.78% and 34.51% respectively with the distributionally robust vehicle balancing method, compared with solutions which do not consider model uncertainties.
机译:随着电动汽车(EV)技术成熟,EV已在现代运输系统中迅速采用,预计将提供经济和社会福利的未来自主流动性(AMOD)服务。然而,电动汽车需要由于其有限的和不可预知的巡航范围经常充电,而且他们给的动态充电过程进行有效的管理。迫切和具有挑战性地调查了在模型不确定性下提供EV AMOD系统性能保证的计算有效算法,而不是使用启发式需求或充电模型。为实现这一目标,这项工作设计了一种用于车辆供需比率和充电站利用平衡的数据驱动的分布稳健优化方法,同时最小化考虑乘客移动性需求不确定性和EV供应不确定性的最坏情况的预期成本。然后,我们得出了一种等效的计算,用于在从数据构造的椭球不确定性集下以计算有效的方式解决分布稳健的问题。基于深圳市E-TAXI系统数据,我们认为平均平衡成本降低了14.49%,供需比率和利用的平均不公平分别减少了15.78%和34.51%,分布强大的车辆平衡方法,与不考虑模型不确定性的解决方案相比。

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