期刊论文详细信息
The Journal of Engineering
Detection and classification of disturbances in the islanded micro-grid by using wavelet transformation and feature extraction algorithm
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[1] School of Electrical Engineering and Telecommunications, The University of New South Wales, Sydney, NSW 2052, Australia;
关键词: digital signal processing chips;    signal processing;    power distribution faults;    distributed power generation;    power supply quality;    signal classification;    feature extraction;    wavelet transforms;    medical signal processing;    entropy;    classification;    wavelet transformation;    feature extraction algorithm;    digital signal processing methods;    detection;    transient disturbances;    fast abilities;    powerful abilities;    waveform distortions;    DSP methods;    noisy real data;    disturbance features;    wavelet domain;    signal energy;    noisy signals;    power systems;    islanded microgrid;    wavelet-based normalised Renyi entropy;    disturbance types;   
DOI  :  10.1049/joe.2018.9362
来源: publisher
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【 摘 要 】

Digital signal processing (DSP) methods have been used by many researchers for detection and classification of transient disturbances because of their fast and powerful abilities to recognise waveform distortions. However, some DSP methods such as the wavelet transformation (WT) show less accuracy when applied to noisy real data. In this study, disturbance features are extracted in the wavelet domain based on the WT levels. Moreover, a new feature extraction algorithm namely normalised Renyi entropy with the signal energy is applied. This algorithm has been proven to be effective and robust for noisy signals. However, their application in power systems has not yet been tested. Using a laboratory setup of an islanded micro-grid, experimental results validate the efficacy of the wavelet-based normalised Renyi entropy in the detection and classification of four disturbance types (voltage sag, interruption, harmonics, mixture of harmonics and sag).

【 授权许可】

CC BY   

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