基于多阶段随机规划的能源及辅助服务市场风力发电机组最优自调度

M. Shafie‐khah, A. A. S. de la Nieta, J. Catalão, E. Heydarian‐Forushani
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引用次数: 8

摘要

在未来的智能电网中,风力发电将占据重要的发电份额。然而,风力发电的间歇性带来了许多经济挑战。针对竞争电力市场中风力发电机组的自调度问题,提出了一个多阶段随机模型。该模型包括三个交易层次,即;向前,提前一天,平衡会议。采用蒙特卡罗方法考虑了风电、市场价格和ISO激活储备数量等问题的不确定性。此外,在模型中还采用了条件风险值(CVaR)作为一种合适的风险度量技术。该模型给出了wpp参与日前能源和辅助服务市场(即旋转储备和调节)的最优行为。仿真结果表明,wpp同时参与上述市场不仅可以增加其利润,而且可以显著降低相关风险。
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Optimal self-scheduling of a wind power producer in energy and ancillary services markets using a multi-stage stochastic programming
Wind power is expected to deliver a significant part of power generation in future smart grid. However, many economic challenges have arisen from the intermittent nature of wind power. In this paper, a multi-stage stochastic model is proposed for self-scheduling problem of Wind Power Producers (WPPs) in competitive electricity markets. The proposed model includes three trading levels namely; forward, day-ahead, and balancing sessions. The problem uncertainties, such as wind power, market prices and quantity of activated reserve by ISO are considered by the Monte Carlo method. Moreover, Conditional Value-at-Risk (CVaR) is employed in the model as an appropriate risk measuring technique. The proposed model yields the optimal behavior of WPPs to participate in day-ahead energy and ancillary services markets (i.e. spinning reserve and regulation). Simulation results indicate that simultaneous participation of the WPPs in the mentioned markets not only augments their profit but also can significantly decrease the associated risks.
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