风电企业风险管理与最优投标

A. Botterud, J. Wang, R. Bessa, H. Keko, Vladimiro Miranda
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引用次数: 74

摘要

本文讨论了风力发电企业的风险管理、承包和投标。美国的大部分风电都是通过长期电力购买协议出售的,这可以对冲风电生产商未来的价格风险。然而,大量电力作为商业电力出售,因此面临未来电价(前一天和实时)的波动和潜在的不平衡处罚。风电预测可以作为参与电力批发市场增加利润和降低风险的一种工具。我们提出了一种方法,在风力发电实现价格和市场价格不确定的情况下,为风力发电生产商导出最优日前报价。我们还提出了一个初步的说明性案例研究,该研究来自美国一个假设的风力站点,我们比较了不同的提前一天投标策略的结果。结果表明,最优日前出价高度依赖于预期日前电价和实时电价,同时也依赖于风力发电商的风险偏好。前一天出价和实时交付之间的偏差惩罚倾向于使出价更接近第二天的预期发电量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk management and optimal bidding for a wind power producer
This paper discusses risk management, contracting, and bidding for a wind power producer. A majority of the wind power in the United States is sold on long-term power purchase agreements, which hedge the wind power producer against future price risks. However, a significant amount is sold as merchant power and therefore is exposed to fluctuations in future electricity prices (day-ahead and real-time) and potential imbalance penalties. Wind power forecasting can serve as a tool to increase the profit and reduce the risk from participating in the wholesale electricity market. We propose a methodology to derive optimal day-ahead bids for a wind power producer under uncertainty in realized wind power and market prices. We also present an initial illustrative case study from a hypothetical wind site in the United States, where we compare the results of different day-ahead bidding strategies. The results show that the optimal day-ahead bid is highly dependent on the expected day-ahead and real-time prices, and also on the risk preferences of the wind power producer. A deviation penalty between day-ahead bid and real-time delivery tends to drive the bids closer to the expected generation for the next day.
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