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首页> 外文期刊>Journal of Zhejiang University. Science, A >Classification of power quality combined disturbances based on phase space reconstruction and support vector machines
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Classification of power quality combined disturbances based on phase space reconstruction and support vector machines

机译:基于相空间重构和支持向量机的电能质量联合扰动分类

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摘要

power Quality (PQ) combined disturbances become common along with ubiquity of voltage flickers and harmonics. This paper presents a novel approach to classify the different patterns of PQ combined disturbances. The classification system consists of two parts, namely the feature extraction and the automatic recognition. In the feature extraction stage, phase Space Reconstruction (PSR), a time series analysis tool, is utilized to construct disturbance signal trajectories. For these trajectories, several indices are proposed to form the feature vectors. support Vector Machines (SVMs) are then implemented to recognize the different patterns and to evaluate the efficiencies. The types of disturbances discussed include a combination of short-term disturbances (voltage sags, swells) and long-term disturbances (flickers, harmonics), as well as their homologous single ones. The feasibilities of the proposed approach are verified by simulation with thousands of PQ events. Comparison studies based on Wavelet Transform (WT) and Artificial Neural Network (ANN) are also reported to show its advantages.
机译:电力质量(PQ)组合干扰与电压闪烁和谐波的普遍相同。本文提出了一种对分类不同模式的PQ结合扰动模式的新方法。分类系统由两部分组成,即特征提取和自动识别。在特征提取阶段,相位空间重建(PSR),时间序列分析工具用于构建干扰信号轨迹。对于这些轨迹,提出了几个指标来形成特征向量。然后实施支持向量机(SVM)以识别不同的模式并评估效率。所讨论的干扰类型包括短期扰动(电压凹凸,膨胀)和长期扰动(闪烁,谐波)以及它们同源单个扰动的组合。通过数千个PQ事件的模拟来验证所提出的方法的可行性。还报告了基于小波变换(WT)和人工神经网络(ANN)的比较研究表明其优点。

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