Neuro-wavelet based islanding detection technique

Y. Fayyad, A. Osman
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引用次数: 43

Abstract

Connecting distributed generators to the normal radial distribution system improve the power quality and increase the capacity of the electric grid. However, they disturb the radial nature of the network and thus give rise to many problems. Unintentional islanding is one of the encountered problems. In this paper a neuro-wavelet islanding detection technique has been developed. The method is based on the transient voltage signals generated during the islanding event. Discrete wavelet transform is adopted to extract feature vectors which will then be fed to a trained artificial neural network classifier to classify the transients generated as islanding or non-islanding events. The trained classifier was then tested using novel voltage signals. The test results indicate that this approach can detect islanding events with a good degree of accuracy.
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基于神经小波的孤岛检测技术
将分布式发电机接入正常的径向配电系统,可以改善电能质量,增加电网容量。然而,它们扰乱了网络的径向特性,从而产生了许多问题。无意的孤岛是遇到的问题之一。本文提出了一种神经小波孤岛检测技术。该方法基于孤岛事件期间产生的瞬态电压信号。采用离散小波变换提取特征向量,然后将特征向量馈送到训练好的人工神经网络分类器中,将生成的瞬态事件分类为孤岛事件或非孤岛事件。然后使用新的电压信号对训练好的分类器进行测试。实验结果表明,该方法能较好地检测孤岛事件。
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