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Day-Ahead Self-Scheduling of a Virtual Power Plant in Energy and Reserve Electricity Markets Under Uncertainty

机译:在不确定度下的能量和储备电力市场中虚拟发电厂的一天自我调度

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摘要

This paper proposes a novel model for the day-ahead self-scheduling problem of a virtual power plant trading in both energy and reserve electricity markets. The virtual power plant comprises a conventional power plant, an energy storage facility, a wind power unit, and a flexible demand. This multi-component system participates in energy and reserve electricity markets as a single entity in order to optimize the use of energy resources. As a salient feature, the proposed model considers the uncertainty associated with the virtual power plant being called upon by the system operator to deploy reserves. In addition, uncertainty in available wind power generation and requests for reserve deployment is modeled using confidence bounds and intervals, respectively, while uncertainty in market prices is modeled using scenarios. The resulting model is thus cast as a stochastic adaptive robust optimization problem, which is solved using a column-and-constraint generation algorithm. Results from a case study illustrate the effectiveness of the proposed approach.
机译:本文提出了一种新型模型,用于在能源和储备电力市场的虚拟电厂交易中的前瞻性自我调度问题。虚拟发电厂包括传统的发电厂,能量存储设备,风电单元和灵活的需求。该多组分系统作为单一实体参与能源和储备电量市场,以优化能源的使用。作为突出特征,所提出的模型考虑与系统操作员调用的虚拟电厂相关联的不确定性以部署储备。此外,可用风力发电和保留部署请求的不确定性分别使用置信度范围和间隔进行建模,而市场价格的不确定性是使用场景建模的。因此,所产生的模型作为随机自适应稳健优化问题的转换,其使用列和约束生成算法来解决。案例研究的结果说明了所提出的方法的有效性。

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