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A Fault Classification Method for Medium Voltage Networks with a high Penetration of Photovoltaic Systems using Artificial Neural Networks

机译:使用人工神经网络高渗透光伏系统渗透的中压网故障分类方法

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With the rapid advancement of power electronic technologies and the reduction of photovoltaic cell price, the share of solar energy in the total power production has been booming recently. On the one hand, the increase in the amount of power delivered by solar energy can be beneficial in many economic and environmental aspects. On the other hand, this can cause various technical challenges to network operators. One of these issues is related to classifying faults located in distribution networks with high penetration of photovoltaic systems. Although many studies have paid significant attention to developing new algorithms applicable for a more active today distribution networks, there is still space for other improvements. Hence, after reviewing state-of-the-art researches, this paper was intended to develop a fault classification that is based on artificial neural networks. In particular, a technique so-called Multiplayer Perceptron Classifier was selected for the proposed algorithm. First, the authors generated a data set for the study by modeling and simulating a real distribution network with practical parameters provided by a local utility in the environment software PowerFactory/DigSILENT. Multiple fault scenarios were simulated. Second, a part of the generated data collection was used for network learning. Finally, the performance of the proposed methodology was demonstrated via testing on the remaining number of generated data.
机译:随着电力电子技术的快速进步和光伏电池价格的减少,最近太阳能的太阳能份额已经蓬勃发展。一方面,太阳能提供的电力量的增加可能在许多经济和环境方面都有益。另一方面,这可能会对网络运营商造成各种技术挑战。其中一个问题与位于具有高渗透光伏系统的分销网络中的分类故障有关。虽然许多研究对开发适用于更活跃的今天分销网络的新算法有重大关注,但仍有其他改进的空间。因此,在审查最先进的研究之后,本文旨在开发基于人工神经网络的故障分类。特别地,为所提出的算法选择了所谓的多人Perceptron分类器的技术。首先,作者通过使用环境软件PowerFactory / DigSilent中的本地实用程序提供的实用参数来生成用于研究的数据集。模拟了多个故障场景。其次,生成的数据收集的一部分用于网络学习。最后,通过测试剩余的生成数据数来证明所提出的方法的性能。

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