论文标题

在潜在的游戏框架下,在分布强劲的日期安排了动力交通网络的日程安排

Distributionally Robust Day-ahead Scheduling for Power-traffic Network under a Potential Game Framework

论文作者

Deng, Haoran, Yang, Bo, Ning, Chao, Chen, Cailian, Guan, Xinping

论文摘要

电动汽车(EV)的广泛利用会产生更多的不确定性和对电力运输耦合网络计划的影响。本文考虑了与光伏(PV)的多种不确定性以及车辆的交通需求有关的多种不确定性,研究了日前的能源市场中的功率传输耦合网络的最佳功率计划。这个问题的症结在于在日前调度阶段对两个网络之间的耦合关系进行建模,并考虑源和负载的日内空间不确定性。同时,引入了具有一定调整余量的柔性载荷,以确保电源节点的供求平衡,并更好地消耗可再生能源。此外,我们从潜在的游戏理论角度展示了电力系统与电动汽车用户之间的交互,其中不确定性的特征是歧义集。为了在统一的框架中确保两个网络的个人最优性在日前的功率调度中,建立了一个两阶段的分布在稳健的集中优化模型,以执行功率传输耦合网络的平衡。在此基础上,开发了二元性理论和弯曲器分解的组合来解决分布强大的优化(DRO)模型。模拟表明,所提出的方法可以获得个人最佳且不保守的策略。

Widespread utilization of electric vehicles (EVs) incurs more uncertainties and impacts on the scheduling of the power-transportation coupled network. This paper investigates optimal power scheduling for a power-transportation coupled network in the day-ahead energy market considering multiple uncertainties related to photovoltaic (PV) generation and the traffic demand of vehicles. The crux of this problem is to model the coupling relation between the two networks in the day-ahead scheduling stage and consider the intra-day spatial uncertainties of the source and load. Meanwhile, the flexible load with a certain adjustment margin is introduced to ensure the balance of supply and demand of power nodes and consume the renewable energy better. Furthermore, we show the interactions between the power system and EV users from a potential game-theoretic perspective, where the uncertainties are characterized by an ambiguity set. In order to ensure the individual optimality of the two networks in a unified framework in day-ahead power scheduling, a two-stage distributionally robust centralized optimization model is established to carry out the equilibrium of power-transportation coupled network. On this basis, a combination of the duality theory and the Benders decomposition is developed to solve the distributionally robust optimization (DRO) model. Simulations demonstrate that the proposed approach can obtain individual optimal and less conservative strategies.

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