Bidding strategies for battery energy storage in the energy and regulation electricity market

Jiahua Hu, Z. Lan, Jianing Li, Yang Wu, Weiwei Zhang, Changsen Feng
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Abstract

With the increasing penetration of renewable energy in the power system, regulation capacity in the power system is highly demanded. To ensure the flexible operations of the power system, it is necessary to explore the potential flexibility regulation capacity and further promote the accommodation of the renewable energy. Under this context, a joint bidding strategy for battery energy storage in the regulation and energy electricity market is proposed in this paper. Firstly, a deep neural network method is used to predict the power system load, and reasonably divide the bid-accepted probability of flexible ramping products in the electricity market according to the predicted load. Then, an optimization model is proposed to offer the bidding strategies for battery electric storage providing flexible ramping products in the energy and regulation market. Finally, the effectiveness of the proposed model is verified by case studies and sensitivity analysis.
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能源与监管电力市场中电池储能竞价策略研究
随着可再生能源在电力系统中的渗透率不断提高,对电力系统的调节能力提出了更高的要求。为了保证电力系统的灵活运行,有必要探索潜在的灵活调节能力,进一步促进可再生能源的调节。在此背景下,本文提出了一种监管与能源电力市场下的电池储能联合竞价策略。首先,采用深度神经网络方法对电力系统负荷进行预测,并根据预测负荷合理划分柔性坡道产品在电力市场的中标概率;在此基础上,提出了一个优化模型,给出了在能源和监管市场中提供柔性爬坡产品的电池储能竞价策略。最后,通过案例分析和敏感性分析验证了该模型的有效性。
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