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首页> 外文期刊>International Transactions on Electrical Energy Systems >Optimal operating strategy of virtual power plant considering plug-in hybrid electric vehicles load
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Optimal operating strategy of virtual power plant considering plug-in hybrid electric vehicles load

机译:考虑插电式混合动力汽车负荷的虚拟电厂最优运行策略

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摘要

Virtual power plant (VPP) is the owner and/or manager of a group of distributed generations as well as some end consumers, which may have random behavior. In addition to the uncertainties associated with generation and demand, the market price is also a source of uncertainty in VPP scheduling. In this paper, a novel stochastic operating strategy is proposed for VPPs to participate in day-ahead market, considering different uncertainties in generation, consumption, and electricity market price. Highly stochastic consumption of plug-in hybrid electric vehicles (PHEVs) is also considered in the present study, as an emerging source of uncertainty. To mitigate the loading effect of PHEVs on the network, a smart charging strategy is proposed, which encourages the owners to charge their PHEVs in off-peak hours, and the results of this strategy are used in estimating the load. To achieve the maximum profit for the VPP in an electricity market, different methods based on point estimation method and Monte Carlo simulation are analyzed to handle the uncertainties. Moreover, three strategies are proposed for charging PHEVs, and their effect on VPP’s total cost is compared. The proposed stochastic programming is solved by a modified version of teaching– learning-based optimization algorithm. Numerical simulations on modified 18-bus distribution system corroborate the efficacy of the proposed methodology. Copyright © 2015 John Wiley & Sons, Ltd.
机译:虚拟电厂(VPP)是一组分布式发电的所有者和/或管理者以及一些最终用户,这些用户可能具有随机行为。除了与发电和需求相关的不确定性之外,市场价格也是VPP计划中不确定性的来源。考虑到发电,消费和电力市场价格的不同不确定性,本文提出了一种新颖的随机操作策略,供VPP参与日前市场。本研究还考虑了插电式混合动力汽车(PHEV)的高度随机消耗,这是不确定性的新兴来源。为了减轻PHEV在网络上的负载影响,提出了一种智能充电策略,该策略鼓励所有者在非高峰时段为PHEV充电,并将该策略的结果用于估计负载。为了在电力市场中实现VPP的最大利润,分析了基于点估计方法和蒙特卡洛模拟的不同方法来处理不确定性。此外,提出了三种为PHEV充电的策略,并比较了它们对VPP总成本的影响。所提出的随机程序设计通过基于教学的基于学习的优化算法的改进版本得以解决。改进的18总线配电系统的数值模拟证实了所提出方法的有效性。版权所有©2015 John Wiley&Sons,Ltd.

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