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A data-driven methodology for dynamic pricing and demand response in electric power networks

机译:电力网络中动态定价和需求响应的数据驱动方法

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The practice of disclosing price of electricity before consumption (dynamic pricing) is essential to promote aggregator-based demand response in smart and connected communities. However, both practitioners and researchers have expressed fear that wild fluctuations in demand response resulting from dynamic pricing may adversely affect the stability of both the network and the market. This paper presents a comprehensive methodology guided by a data-driven learning model to develop stable and coordinated strategies for both dynamic pricing as well as demand response. The methodology is designed to learn offline without interfering with network operations. Application of the methodology is demonstrated using simulation results from a sample 5 bus PJM network. Results show that it is possible to arrive at stable dynamic pricing and demand response strategies that can reduce cost to the consumers as well as improve network load balance.
机译:在用电量之前披露电价的做法(动态定价)对于在智能社区和互联社区中促进基于聚集者的需求响应至关重要。但是,从业人员和研究人员均表示担心,动态定价导致需求响应的剧烈波动可能会对网络和市场的稳定性产生不利影响。本文提出了一种以数据驱动的学习模型为指导的综合方法论,以针对动态定价以及需求响应开发稳定且协调的策略。该方法旨在离线学习而不会干扰网络操作。通过使用示例5总线PJM网络的仿真结果证明了该方法的应用。结果表明,可以实现稳定的动态定价和需求响应策略,从而可以降低消费者的成本并改善网络负载平衡。

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