Fair Allocation of Distribution Losses based on Neural Networks

J. N. Fidalgo, J.A.F.M. Torres, M. Matos
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引用次数: 7

Abstract

In a competitive energy market environment, the procedure for fair loss allocation constitutes a matter of considerable importance. This task is often based on rough principles, given the difficulties on the practical implementation of a fairest process. This paper proposes a methodology based on neural networks for the distribution of power distribution losses among the loads. The process is based on the knowledge of load profiles and on the usual consumption measures. Simulations are carried out for a typical MV network, with an extensive variety of load scenarios. For each scenario, losses were calculated and distributed by the consumers. The allocation criterion is established assuming a distribution proportional to the squared power. Finally, a neural network is trained in order to obtain a fast and accurate losses allocation. Illustrative results support the feasibility of the proposed methodology.
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基于神经网络的配电损失公平分配
在竞争激烈的能源市场环境中,公平分配损失的程序是一个相当重要的问题。考虑到在实际执行一个最公平的程序方面存在的困难,这项任务往往以粗略的原则为基础。本文提出了一种基于神经网络的负载间配电损耗分配方法。该过程是基于负载概况和通常的消耗措施的知识。对一个典型的中压网络进行了仿真,并对各种负载情况进行了仿真。对于每种情况,损失都是由消费者计算和分配的。在假定与平方成正比的分布条件下,建立了分配准则。最后,对神经网络进行训练,以获得快速准确的损失分配。说明性结果支持所提出方法的可行性。
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