基于小波近似系数的输电线路保护方案的质心差

A. Gangwar, Abdul Gafoor Shaik
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引用次数: 0

摘要

提出了一种基于k均值聚类的输电线路故障诊断与分类算法。将三相电流信号与GPS时钟同步,并在一个周期的移动窗口内计算近似小波系数。使用k均值聚类计算连续周期的两个质心。将本地母线和远端母线的质心差相加,得到最终的质心差。将得到的质心差与检测故障的阈值进行比较。同样,计算三相的质心差来对断层进行分类。从故障阻抗、故障入射角和故障定位三个方面对该算法进行了验证。在存在噪声的情况下,该算法具有良好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Centroidal Difference of Wavelet Approximate Coefficients Based Protection Scheme for Transmission Line
This paper presents an algorithm for transmission line fault diagnosis and classification using K-means clustering. The three-phase current signal is synchronized with the GPS clock and approximate wavelet coefficients are computed over a moving window of one cycle. Two centroids of successive cycles are computed using K-means clustering. The centroidal difference of local and remote bus are added to obtain resultant centroidal difference. The resultant centroidal difference is compared with the threshold to detect the fault. Similarly, the centroidal difference is computed of three-phases to classify the fault. A number of case studies have carried out to validate the proposed algorithm by fault impedance, fault incidence angle and, fault location. The robustness of the algorithm has been established in the presence of noise.
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