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Wavelet-based fuzzy reasoning approach to power-quality disturbance recognition

机译:基于小波的模糊推理在电能质量扰动识别中的应用

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This paper proposes a wavelet-based extended fuzzy reasoning approach to power-quality disturbance recognition and identification. To extract power-quality disturbance features, the energy distribution of the wavelet part at each decomposition level is introduced and its calculation mathematically established. Based on these features, rule bases are generated for extended fuzzy reasoning. The power-quality disturbance features are finally mapped into a real number, in terms of which different power-quality disturbance waveforms are classified. Numerical results obtained from a large database show that the disturbance waveforms such as high- and low-frequency capacitor switching, voltage sag, impulsive transient, transformer energizing, and perfect sine waveform can all be correctly identified. The effect of the amplitude and frequency content of power-quality disturbance on the energy distribution patterns and the effect of noise on classification accuracy are also discussed in the paper.
机译:本文提出了一种基于小波的扩展模糊推理方法,用于电能质量扰动的识别与识别。为了提取电能质量扰动特征,引入了每个分解级别的小波部分的能量分布,并在数学上建立了计算。基于这些功能,可以生成规则库以进行扩展的模糊推理。最终,将电能质量扰动特征映射到实数,并根据实数对不同的电能质量扰动波形进行分类。从大型数据库获得的数值结果表明,可以正确识别高频和低频电容器开关,电压骤降,脉冲瞬变,变压器励磁和理想正弦波等干扰波形。本文还讨论了电能质量扰动的幅度和频率含量对能量分布模式的影响,以及噪声对分类精度的影响。

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