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Classification of Power Quality Disturbances Using Convolutional Network and Long Short-Term Memory Network

机译:利用卷积网络和长短期记忆网络对电能质量扰动进行分类

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The Electrical Power Quality (PQ) studies are commonly related to disturbances that alter the sinusoidal voltage features and/or current wave shapes. The classification approaches of electrical power quality disturbances found in the literature mainly consist of three steps: 1) signal analysis and feature extraction, 2) feature selection and 3) disturbances classification. However, there are some problems inherent in disturbances classification. The manual extraction of features is an imprecise and complex process, which can influence the resuits and, therefore, does not deal well with noisy signals. This paper proposes an approach based on Deep Learning using the raw data, without pre-processing, manual extraction or manual feature selection of the PQ disturbances signals for the classification of fifteen electrical power quality disturbances. A deep network is used, which consists of a hybrid architecture, composed by convolutional layers, a pooling layer, an LSTM layer, and batch normalization to extract features automatically. We adopted a 1-D convolution to adapt the input. The extracted features are used as input to fully connected layers, the last one being a SoftMax layer. The results are compared with state of the art methods based on the three steps, showing that the proposed approach had satisfactory performance even with noisy data.
机译:电能质量(PQ)研究通常与会改变正弦电压特征和/或电流波形的干扰有关。文献中发现的电能质量扰动的分类方法主要包括三个步骤:1)信号分析和特征提取; 2)特征选择; 3)扰动分类。但是,干扰分类存在一些固有的问题。手动提取特征是一个不精确且复杂的过程,可能会影响结果,因此不能很好地处理嘈杂的信号。本文提出了一种基于深度学习的方法,该方法使用原始数据,而无需对PQ干扰信号进行预处理,手动提取或手动特征选择来对15种电能质量干扰进行分类。使用的深度网络由混合体系结构组成,由卷积层,池化层,LSTM层和批处理规范化组成,以自动提取特征。我们采用了一维卷积来适应输入。提取的要素用作全连接层的输入,最后一个是SoftMax层。将结果与基于这三个步骤的最新方法进行了比较,表明所提出的方法即使在嘈杂的数据下也具有令人满意的性能。

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