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基于自适应动态规划的车网能量公平调度。

Fair Energy Scheduling for Vehicle-to-Grid Networks Using Adaptive Dynamic Programming.

出版信息

IEEE Trans Neural Netw Learn Syst. 2016 Aug;27(8):1697-707. doi: 10.1109/TNNLS.2016.2526615. Epub 2016 Feb 25.

DOI:10.1109/TNNLS.2016.2526615
PMID:26930694
Abstract

Research on the smart grid is being given enormous supports worldwide due to its great significance in solving environmental and energy crises. Electric vehicles (EVs), which are powered by clean energy, are adopted increasingly year by year. It is predictable that the huge charge load caused by high EV penetration will have a considerable impact on the reliability of the smart grid. Therefore, fair energy scheduling for EV charge and discharge is proposed in this paper. By using the vehicle-to-grid technology, the scheduler controls the electricity loads of EVs considering fairness in the residential distribution network. We propose contribution-based fairness, in which EVs with high contributions have high priorities to obtain charge energy. The contribution value is defined by both the charge/discharge energy and the timing of the action. EVs can achieve higher contribution values when discharging during the load peak hours. However, charging during this time will decrease the contribution values seriously. We formulate the fair energy scheduling problem as an infinite-horizon Markov decision process. The methodology of adaptive dynamic programming is employed to maximize the long-term fairness by processing online network training. The numerical results illustrate that the proposed EV energy scheduling is able to mitigate and flatten the peak load in the distribution network. Furthermore, contribution-based fairness achieves a fast recovery of EV batteries that have deeply discharged and guarantee fairness in the full charge time of all EVs.

摘要

由于智能电网在解决环境和能源危机方面的重要意义,全球范围内正在对其进行大力支持。电动汽车(EV)作为清洁能源的动力源,其采用率逐年递增。可以预见,高渗透率的电动汽车将产生巨大的充电负荷,这将对智能电网的可靠性产生相当大的影响。因此,本文提出了公平的电动汽车充放电能源调度。通过使用车到电网技术,调度器在住宅配电网中考虑公平性来控制电动汽车的电力负荷。我们提出了基于贡献的公平性,其中具有高贡献的电动汽车具有更高的优先级来获得充电能量。贡献值由充放电能量和动作时间共同定义。电动汽车在负荷高峰时段放电时可以获得更高的贡献值。然而,在这段时间充电会严重降低贡献值。我们将公平的能源调度问题形式化为无限时域马尔可夫决策过程。采用自适应动态规划方法通过在线网络训练来最大化长期公平性。数值结果表明,所提出的电动汽车能源调度能够减轻和平衡配电网的高峰负荷。此外,基于贡献的公平性能够快速恢复深度放电的电动汽车电池,并保证所有电动汽车的完全充电时间的公平性。

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