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The Classification of Power Quality Disturbances using Statistical S-Transform and Probabilistic Neural Network

机译:使用统计S转换和概率神经网络进行电能质量扰动的分类

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This article compares the ability of the Probabilistic Neural Network in the classification of several Power Quality Disturbances (PQD) using statistical parameters. The objective is to investigate the effectiveness of the classifier in modeling the low-dimensional feature vectors describing several PQD disturbances. In the process, several statistical parameters such as the mean, RMS value, standard deviation, skewness, Kurtosis, form factor, Crest factor, Energy, normalized entropy, log entropy, and Shannon entropy have been extracted using the Feature vectors of the well-known Stockwell Transform (ST). The statistical coefficients corresponding to ten-PQDs have been fetched and fed to the chosen PNN for efficient modeling. A comparison of the recognition accuracy of the PQDs has been made to that of the conventional statistical parameters extracted directly from the synthetic raw signals. The ST statistical parameters have shown to outperform with an average recognition accuracy of 92.6%. On the contrary, the conventional statistical parameters have provided a lower accuracy of 79.5%. In the case of PNN, the number of hidden layer neurons is made equal to the number of training data. A suitable selection of the spread factor leads to better recognition accuracy as revealed from our results.
机译:本文比较了概率神经网络在使用统计参数的几种电力质量干扰(PQD)分类中的能力。目的是研究分类器在模拟描述几个PQD干扰的低维特征向量方面的有效性。在该过程中,使用井的特征向量提取了几种统计参数,例如平均值,rms值,标准偏差,偏振,能量,归一化熵,日志熵和香农熵已知的斯托克尔变换(ST)。已经提出了对应于10-PQD的统计系数并将其馈送到所选择的PNN以进行有效建模。已经对直接从合成原始信号提取的传统统计参数的识别精度进行比较。 ST统计参数表明,平均识别精度为92.6%。相反,传统的统计参数提供了79.5%的较低精度。在PNN的情况下,隐藏层神经元的数量等于训练数据的数量。 A suitable selection of the spread factor leads to better recognition accuracy as revealed from our results.

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