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Selecting the Best Wavelet Function for Power Quality Disturbances Identification Patterns

机译:选择电力质量干扰识​​别模式的最佳小波功能

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This paper proposes a technique to select a wavelet function that shows good characteristics for the identification of power quality disturbances. It considers the low frequency disturbances such as flicker and harmonics as well as high frequency disturbances such as transient and voltage sags. Due to time-frequency localization properties, the Discrete Wavelet Transform permits signal decomposition in different energy levels, which are used to characterize disturbances that contain information on the frequency domain. Four wavelet families were studied in which Biorthogonal showed excellent performance.
机译:本文提出了一种选择小波函数的技术,该小波功能显示出识别电能质量扰动的良好特性。它考虑了低频干扰,如闪烁和谐波以及高频干扰,如瞬态和电压凹陷。由于时频定位特性,离散小波变换允许在不同能级中的信号分解,其用于表征包含在频域上的信息的干扰。研究了四个小波家族,其中双正交表现出优异的性能。

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