需求不确定下电动汽车共享系统的车队管理

Zihao Jiao, Lun Ran, Lei Guan, Xiaohan Wang, Hongrui Chu
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引用次数: 3

摘要

研究了需求不确定性条件下电动汽车共享服务的车队管理问题。为了解决这个问题,我们提出了两种稳健的方法来生成稳健的车队重新定位计划,以减轻租赁需求的不确定性和不平衡。针对具有不确定性的电动汽车动态分配和交通流再分配问题,建立了可调鲁棒优化模型(AROM)和联合机会约束模型(CCM)。这两种模型都是利用前一阶段关于已实现需求的信息(即CCM中的部分分布式信息和AROM中的全部信息),以可调的方式对未来阶段做出决策。计算试验表明,考虑不确定性的必要性,因为即使只有很小比例的不确定性存在,标称解决方案的总成本也会显著增加。此外,我们的模型生成的解不仅在平均目标值上优于确定性解,而且在与理想解的差距上优于确定性解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fleet management for Electric Vehicles sharing system under uncertain demand
In this paper, the problem of fleet management in electric vehicles (EVs) sharing service under demand uncertainty is studied. To solve this problem, we propose two robust methodologies to generate robust fleets reposition plans that mitigate rental demand uncertainty and imbalances. More specifically, an adjustable robust optimization model (AROM) and joint chance constraints model (CCM) are developed for dynamically assigning EVs and redistribute traffic flow problems with uncertainty. These two model both utilize the information (i.e., partial distributed information in CCM and all information in AROM) about the realized demand from the previous periods to make decision for future stages in an adjustable way. Computational test shows that necessity of accounting for uncertainty, as the total cost of nominal solution increase significantly even when only a small percentage of uncertainty is in place. Moreover, solutions generated by our models outperform deterministic solutions, not only on average objective value, but also in the gap with ideal solution.
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