Electric vehicles (EVs) are being rapidly adopted due to their economic and societal benefits. Autonomous mobility-on-demand (AMoD) systems also embrace this trend. However, the long charging time and high recharging frequency of EVs pose challenges to efficiently managing EV AMoD systems. The complicated dynamic charging and mobility process of EV AMoD systems makes the demand and supply uncertainties significant when designing vehicle balancing algorithms. In this work, we design a data-driven distributionally robust optimization (DRO) approach to balance EVs for both the mobility service and the charging process. The optimization goal is to minimize the worst-case expected cost under both passenger mobility demand uncertainties and EV supply uncertainties. We then propose a novel distributional uncertainty sets construction algorithm that guarantees the produced parameters are contained in desired confidence regions with a given probability. To solve the proposed DRO AMoD EV balancing problem, we derive an equivalent computationally tractable convex optimization problem. Based on real-world EV data of a taxi system, we show that with our solution the average total balancing cost is reduced by 14.49%, and the average mobility fairness and charging fairness are improved by 15.78% and 34.51%, respectively, compared to solutions that do not consider uncertainties.
翻译:电动电动车(EV)由于经济和社会效益而正在迅速被采用。自动随需流动(AMOD)系统也包含这一趋势。然而,长期的充电时间和高充电频率对有效管理EVAD系统构成挑战。EVAMOD系统复杂的动态充电和流动过程使得设计车辆平衡算法时,供需电动车辆(EV)的需求和供应的不确定性很大。在这项工作中,我们设计了一种数据驱动的稳健分配优化(DRO)方法,以平衡流动服务和收费过程的EV。优化的目标是尽量减少乘客流动需求不确定和EV供应不确定情况下最坏的预期成本。我们然后提出一个新的分配不确定性算法,保证所设定的参数包含在预期的信任区,并有一定的可能性。为了解决拟议的DRO AMOD EV平衡问题,我们得出一个可计算到的等量的convex优化问题。根据出租车系统真实世界的EV数据,我们表明,我们的解决办法是平均总平衡成本减少14.49%,而平均流动公平性和收费率分别考虑通过15.751%来改进。