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An Expert System Based On S-transform And Neural Network For Automatic Classification Of Power Quality Disturbances

机译:基于S变换和神经网络的电能质量扰动自动分类专家系统。

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In this paper, an S-transform-based neural network structure is presented for automatic classification of power quality disturbances. The S-transform (ST) technique is integrated with neural network (NN) model with multi-layer perceptron to construct the classifier. Firstly, the performance of ST is shown for detecting and localizing the disturbances by visual inspection. Then, ST technique is used to extract the significant features of distorted signal. In addition, an optimum combination of the most useful features is identified for increasing the accuracy of classification. Features extracted by using the S-transform are applied as input to NN for automatic classification of the power quality (PQ) disturbances that solves a relatively complex problem. Six single disturbances and two complex disturbances as well pure sine (normal) selected as reference are considered for the classification. Sensitivity of proposed expert system under different noise conditions is investigated. The analysis and results show that the classifier can effectively classify different PQ disturbances.
机译:本文提出了一种基于S变换的神经网络结构,用于电能质量扰动的自动分类。 S变换(ST)技术与带有多层感知器的神经网络(NN)模型集成在一起,构造了分类器。首先,通过目视检查显示ST的性能,以检测和定位干扰。然后,采用ST技术提取失真信号的显着特征。另外,确定了最有用功能的最佳组合以提高分类的准确性。通过使用S变换提取的特征被用作NN的输入,以自动分类电能质量(PQ)干扰,从而解决了一个相对复杂的问题。考虑将六个单一扰动和两个复杂扰动以及纯正弦(正弦)(参考)选作参考。研究了提出的专家系统在不同噪声条件下的灵敏度。分析和结果表明,该分类器可以有效地分类不同的PQ干扰。

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