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Optimal Demand Response Bidding and Pricing Mechanism With Fuzzy Optimization: Application for a Virtual Power Plant

机译:模糊优化的最优需求响应报价与定价机制:在虚拟电厂中的应用

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摘要

In this paper, a virtual power plant (VPP) that consists of generation, both renewable and conventional, and controllable demand is enabled to participate in the wholesale markets. The VPP makes renewable energy sources (RES) and distributed generations controllable and observable to the system operator. The main objective is to introduce a framework that optimizes the bidding strategies and maximizes the VPP's profit on day-ahead and real-time bases. To achieve this goal, the VPP trades energy externally with a wholesale market, and trades energy and demand response (DR) internally with the consumers in its territory. That is, when generation exceeds demand, the VPP sells the excess energy to the market, and it buys energy from the market when the generation and reduction in demand due to DR scheme are less than the required demand in its territory. Both load curtailment and load shift are modeled. For the day-ahead internal VPP market, fuzzy optimization is proposed to consider the uncertainty in the RES. Comparison results with deterministic and probabilistic optimizations demonstrate the effectiveness of the fuzzy approach in terms of achieving higher realized profits with reasonable computation effort. It is also shown that considering uncertainties in the optimization can result in reduced dependence on the conventional generator.
机译:在本文中,由可再生和常规发电组成且可控需求的虚拟电厂(VPP)能够参与批发市场。 VPP使系统操作员可以控制和观察可再生能源(RES)和分布式发电。主要目的是引入一个框架,该框架可以优化投标策略并在日间和实时基础上最大化VPP的利润。为了实现此目标,VPP与批发市场在外部进行能源交易,并与所在地区的消费者在内部进行能源和需求响应(DR)交易。即,当发电量超过需求时,VPP将多余的能量出售给市场,并在由于DR计划导致的发电量和需求减少量少于其所在区域的需求量时,从市场购买能量。减少负荷和转移负荷均已建模。对于日间内部VPP市场,提出了模糊优化以考虑RES中的不确定性。确定性和概率性优化的比较结果证明了模糊方法在通过合理的计算工作量获得更高的已实现利润方面的有效性。还表明,考虑优化中的不确定性可以减少对常规发电机的依赖。

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