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Towards Embedding Network Usage Charges Within a Peer-to-Peer Electricity Marketplace

机译:在对等电力市场中嵌入网络使用费

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This paper proposes a novel tariff regime for peer-to-peer energy trading, with an aim to increase transmission efficiency and grid stability by penalising long distance power transactions. In this scheme a portion of the transacted energy is withheld based on the electrical distance between buying and selling parties, calculated here according to the Klein Resistance Distance. This tariff regime is simulated using a dataset of producers and consumers over a 24-hour period. First, a notional marketplace equilibrium simulation is performed, in which consumers can optimally activate demand response resources to exploit local availability of energy. Consumers are observed to move some demand away from peak times to make use of local generation availability. These simulated market out-turns are then used as inputs to a time series power flow analysis, in order to evaluate the network’s electrical performance. The regime is found to decrease grid losses and the magnitude of global voltage angle separation. However, the metric whereby taxes are calculated is found to be too skewed in the utility’s favour and may discourage adoption of the peer-to-peer system. The method also attempts to encourage regulatory adoption by existing grid operators and utilities. Some counter-intuitive allocations of tokenised energy occur, owing to specific consumers’ demand profiles and proximity to generators.
机译:本文提出了一种针对点对点能源交易的新型电价制度,旨在通过惩罚长距离电力交易来提高输电效率和电网稳定性。在该方案中,根据买卖双方之间的电气距离保留部分交易能量,此处根据克莱因电阻距离计算得出。该关税制度是使用24小时内的生产者和消费者数据集进行模拟的。首先,执行概念性市场均衡模拟,其中消费者可以最佳地激活需求响应资源以开发本地能源可用性。观察到消费者会从高峰时段转移一些需求,以利用当地的发电能力。然后,将这些模拟的市场结果用作时间序列潮流分析的输入,以评估网络的电气性能。发现该方案减少了电网损耗和整体电压角分离的幅度。但是,用于计算税款的度量标准被发现过于偏向公用事业,可能会阻碍采用点对点系统。该方法还试图鼓励现有电网运营商和公用事业机构采用法规。由于特定消费者的需求概况以及与发电机的接近性,出现了一些与直觉相反的,分配权能的分配。

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