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A comprehensive overview on signal processing and artificial intelligence techniques applications in classification of power quality disturbances

机译:信号处理和人工智能技术在电能质量扰动分类中的应用概述

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The increasing trend towards renewable energy sources requires higher power quality (PQ) at the generation, transmission and distribution systems. The PQ disturbances are produced due to the nonlinear loads, power electronic converters, system faults and switching events. The utilities and consumers of electric power are expected to acquire ideal voltage and current waveforms at rated power frequency. The development of new techniques for the automatic classification of PQ events is at present a major concern. This paper presents a comprehensive literature review on the applications of digital signal processing, artificial intelligence and optimization techniques in the classification of PQ disturbances. Various signal processing techniques used for the feature extraction such as Fourier transform, wavelet transform, S-transform, Hilbert transform, Gabor transform and their hybrids have been reviewed. The artificial intelligent techniques used for the pattern recognition such as artificial neural network, fuzzy logic, support vector machine are reviewed in detail. The optimization techniques used for the optimal feature selection such as genetic algorithm, particle swarm optimization and ant colony optimization are also reviewed. A comparison of various classification systems is presented in tabular form which highlights the important techniques used in the field of PQ disturbance monitoring. The comparison of research works carried out on the classification of PQ disturbances points out that many researchers have focussed on the feature extraction and classification techniques. Only few authors have used the feature selection techniques for selecting the best suitable features. This review may be considered a valuable source for researchers as a reference point to explore the opportunities for further improvement in the field of PQ classification. (C) 2015 Elsevier Ltd. All rights reserved.
机译:向可再生能源发展的趋势要求在发电,输电和配电系统中提高电能质量(PQ)。由于非线性负载,电力电子转换器,系统故障和开关事件,会产生PQ干扰。公用事业和电力使用者有望在额定功率频率下获得理想的电压和电流波形。当前,对PQ事件自动分类的新技术的发展是一个主要问题。本文对数字信号处理,人工智能和优化技术在PQ干扰分类中的应用进行了全面的文献综述。审查了用于特征提取的各种信号处理技术,例如傅立叶变换,小波变换,S变换,希尔伯特变换,Gabor变换及其混合。详细介绍了用于模式识别的人工智能技术,如人工神经网络,模糊逻辑,支持向量机。还综述了用于最优特征选择的优化技术,例如遗传算法,粒子群优化和蚁群优化。以表格形式比较了各种分类系统,突出了在PQ扰动监测领域中使用的重要技术。对PQ干扰分类进行的研究工作的比较表明,许多研究人员集中于特征提取和分类技术。只有很少的作者使用特征选择技术来选择最合适的特征。这篇综述可能被认为是研究人员的宝贵资源,可作为参考点,以探索进一步改善PQ分类领域的机会。 (C)2015 Elsevier Ltd.保留所有权利。

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