Báo Cáo Recognition and classification of power quality disturbances using the wavelet-based neural networ

Thảo luận trong 'Điện - Điện Tử' bắt đầu bởi Thúy Viết Bài, 5/12/13.

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    Recognition and classification of power quality disturbances using the wavelet-based neural networ
    ABSTRACT

    ​In this paper, a pattern wavelet-based neural network classifier is applied to recognize power-quality
    disturbances such as harmonic distortion, capacitor switching, voltage sag/swell, momentary interruption,
    over/under voltage, and flicker. The discrete wavelet transform (DWT) is combined with the probabilistic
    neural network (PNN) model to construct the classifier. Firstly, the multi-resolution analysis of DWT and
    Parseval’s theorem are employed to extract the energy distribution features of the distorted signal at different
    resolution levels. Next, the energy curve of the given signal is calculated and a relationship between this energy
    curve and the one of the corresponding fundamental component is established. Finally, the PNN classifies and
    identifies the disturbance type according to the energy curve deviation. The paper shows that each power
    quality disturbance has specific deviations from the pure sinusoidal waveform and this is good at recognizing of
    the type of disturbance.
     
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