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Non-intrusive harmonic source identification using neural networks

机译:基于神经网络的非侵入式谐波源识别

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This paper proposes the neural network (NN) based approach for the identification of various harmonic sources present in an electrical installation. In this method the harmonic injecting devices are identified using their distinct ‘harmonic signatures’ extracted from the input current waveform. The complexity increases with increase in the number of loads and their combinations. Such automated non-intrusive device identification helps in monitoring and enhancing power quality. The performance of a neural network to a large extent depends upon the type of architecture used and their learning algorithm. Eight commonly used domestic loads are identified and their harmonic signatures obtained. The data is used to design a Feed Forward neural networks (FF) and Single Neuron Cascade networks (SNC). The performance of these models was compared in terms of their recognition accuracy and network complexity. Both the networks are shown to perform well in terms of accuracy. However CC network has been found to be the most suitable architecture because of its low computational requirements and ease in design.
机译:本文提出了一种基于神经网络(NN)的方法来识别电气设备中存在的各种谐波源。在这种方法中,谐波注入设备使用从输入电流波形中提取的独特的“谐波特征”来识别。复杂度随着负载数量及其组合的增加而增加。这种自动的非侵入式设备识别有助于监视和增强电能质量。神经网络的性能在很大程度上取决于所使用的体系结构类型及其学习算法。确定了八个常用的家用负载,并获得了它们的谐波特征。该数据用于设计前馈神经网络(FF)和单神经元级联网络(SNC)。根据识别精度和网络复杂性比较了这些模型的性能。两种网络均显示出良好的准确性。然而,由于CC网络的低计算要求和易于设计,已发现它是最合适的体系结构。

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