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An automatic voltage disturbance classification system based on Clonal Selection Algorithm

机译:基于克隆选择算法的电压干扰自动分类系统

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Classification of voltage disturbances in power systems is essential for modern society and can be very demanding according to the used method or the aimed accuracy. This paper presents a new intelligent approach aimed to automatically analyse power quality disturbances including sag, swell, outage, harmonics and normal waveform. The approach is based on Artificial Immune System and focuses on the application of a Clonal Selection Algorithm to extract features from disturbance waveforms and classify the disturbances in each 0.5 cycle of the fundamental frequency. Other important feature of the proposed approach is that it can be embedded since the resulted on-line classification tool achieves very low computational complexity. Comparisons and experimental results obtained from the application of the proposed method validate the approach and achieved a classification accuracy at least better than previous work.
机译:电力系统中电压干扰的分类对于现代社会至关重要,根据使用的方法或目标精度可能非常苛刻。本文提出了一种新的智能方法,旨在自动分析电能质量扰动,包括下垂,骤升,断电,谐波和正态波形。该方法基于人工免疫系统,侧重于克隆选择算法的应用,以从干扰波形中提取特征,并对基频的每个0.5周期中的干扰进行分类。所提出的方法的另一个重要特征是它可以被嵌入,因为最终的在线分类工具实现了非常低的计算复杂度。从所提出的方法的应用获得的比较和实验结果验证了该方法,并至少比以前的工作获得了更好的分类精度。

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