电能质量扰动分类新技术

N. Talaat, W. Ibrahim, G. Kusic
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引用次数: 7

摘要

为各种电能质量事件提供有效的分类技术正受到研究界的关注。电能质量分析和诊断的过程是一个复杂的过程,原因有很多,包括电力系统的复杂建模,目前通过PQ监视器可获得的大量系统数据,以及缺乏专家知识。因此,计算机化系统分析对于实现有效、高效的电能质量诊断系统至关重要。本文开发了两种实现电能质量分类功能的智能技术。这些技术是基于小波分析、减法聚类算法和人工神经网络(ANN)。为了模拟不同类型的电能质量现象,产生了许多信号,然后对这些信号进行小波分析。提出了不同的特征提取方法来减少处理的数据量,这大大提高了所提出的PQ分类器的性能,与其他提出的技术相比。然后使用提取的特征来训练不同的人工神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New technique for categorization of Power Quality disturbances
Providing effective classification techniques for various power quality (PQ) events is gaining the attention of the research community. The process of power quality analysis and diagnosis is a complex one for many reasons, including the complex modeling of power systems, the extensive amount of system data that is currently available through PQ monitors, and the lack of expert knowledge. Therefore, it is evident that computerized system analysis is vital for the realization of effective and efficient power quality diagnosis systems. In this paper two intelligent techniques are developed that perform power quality classification functions. These techniques are based on wavelet analysis, subtractive cluster algorithms and Artificial Neural Networks (ANN). Many signals are generated to simulate different types of power quality phenomena then wavelet analysis is applied to these signals. Different feature extraction methods are proposed to reduce the amount of processed data which dramatically improves the performance of the proposed PQ classifier compared to other techniques proposed elsewhere. The extracted features are then used to train different ANNs.
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