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Stochastic programming-based optimal bidding of compressed air energy storage with wind and thermal generation units in energy and reserve markets

机译:基于随机规划的能源和储备市场中带有风力和热力发电机组的压缩空气储能的最优竞标

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摘要

One effective way to compensate for uncertainties is the use and management of energy storage. Therefore, a new method based on stochastic programming (SP) is proposed here, for optimal bidding of a generating company (GenCo) owning a compressed air energy storage (CAES) along with wind and thermal units to maximize profits. This scheduling has been presented for the GenCo's participation in day-ahead energy and spinning reserve (SR) markets and CVaR is also considered as a risk-controlling index. Firstly, the obtained results are validated by comparing with those of two previous studies. Then, the complete results of the proposed method are presented on a real power system, which indicate the capability of SP in scheduling CAES units. Furthermore, it is observed that CAES units can gain greater profits in joint energy and reserve markets due to their high ramp rates. In addition, the value of stochastic solution (VSS) is used to quantify the advantage of the stochastic method over a deterministic one, which illustrates the advantage of SP-based optimal bidding method especially for CAES and wind units and also for risk-averse GenCos. Overall, it is concluded that the stochastic method is efficient for optimal-bidding of GenCos owning CAES and wind units. (C) 2019 Elsevier Ltd. All rights reserved.
机译:补偿不确定性的一种有效方法是储能的使用和管理。因此,在此提出了一种基于随机规划(SP)的新方法,用于对拥有压缩空气储能(CAES)以及风能和火力装置的发电公司(GenCo)进行最佳投标,以最大程度地提高利润。已针对GenCo参与日前能源和旋转储备(SR)市场提出了此计划,并且CVaR也被视为风险控制指标。首先,通过与之前两项研究的比较来验证所获得的结果。然后,将所提出的方法的完整结果展示在一个有功电力系统上,表明SP在调度CAES单元中的能力。此外,据观察,由于CAES装置的高升温速率,它们可以在联合能源和储备市场中获得更大的利润。此外,随机解(VSS)的值用于量化随机方法相对于确定性方法的优势,这说明了基于SP的最优竞标方法的优势,尤其是对于CAES和风电单位以及规避风险的GenCos 。总体而言,得出的结论是,随机方法对于拥有CAES和风力发电机组的GenCos的最优竞标是有效的。 (C)2019 Elsevier Ltd.保留所有权利。

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