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Integrated DWT-FFT approach for detection and classification of power quality disturbances

机译:集成的DWT-FFT方法用于电能质量扰动的检测和分类

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The signals in the electrical power system always have some power quality disturbances and noise contents which is the biggest obstacle in detection and time localization. In this paper, an integrated rule based approach of discrete wavelet transform - fast Fourier transform is proposed. For the detection of power quality disturbance present in the input signal, the input waveform is processed by discrete wavelet transform. The discrete wavelet coefficients are used to calculate average energy entropy of squared detailed coefficients feature. The various power quality disturbances are initially detected and then classified into four main categories as disturbances related to sag, swell, interruption and harmonics using this feature. Further classification of each main category is done using fast Fourier transform features. The total twelve types of power quality disturbances including seven basic and five combinations which are very close to real situations, are considered for the classification which are generated by parametric equations. Also four another cases are considered by adding noise to four basic disturbances sag, swell, harmonics and flicker. All sixteen cases are simulated using Mathworks Matlab R2008b. The performance of classifier is tested for 150 test signals for various durations with different disturbances with and without noise. The developed classifier is able to achieve 99.043% accuracy. From the simulation results, it can be seen that the proposed approach is effective for the detection and classification of various power quality disturbances.
机译:电力系统中的信号总是存在一些电能质量扰动和噪声含量,这是检测和时间定位的最大障碍。本文提出了一种基于规则的离散小波变换-快速傅立叶变换方法。为了检测输入信号中存在的电能质量扰动,通过离散小波变换处理输入波形。离散小波系数用于计算平方详细系数特征的平均能量熵。最初会检测到各种电能质量扰动,然后使用此功能将其分为与下垂,骤升,中断和谐波有关的四个主要类别。使用快速傅立叶变换功能对每个主要类别进行进一步分类。对于通过参数方程式生成的类别,考虑了总共十二种电能质量扰动类型,包括与实际情况非常接近的七个基本和五个组合。通过将噪声添加到四个基本干扰垂度,骤升,谐波和闪烁,还可以考虑另外四个情况。使用MathWorks Matlab R2008b模拟所有16种情况。分类器的性能针对150种测试信号进行了测试,测试信号持续时间各不相同,带有和不带有噪声的不同干扰。所开发的分类器能够达到99.043%的准确性。从仿真结果可以看出,该方法对于各种电能质量扰动的检测和分类是有效的。

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