DCCA Enhanced Forced Oscillation Frequency Detection Using Real-world PMU Data

Abraham Canafe, Yunchuan Liu, Lei Yang, H. Livani
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Abstract

This paper studies forced oscillation frequency detection using real-world Phasor Measurement Unit (PMU) data. The accurate identification of forced oscillations can help operators prevent power system failures and take appropriate remedial actions. To detect forced oscillation frequencies, we first decompose the PMU data into a series of intrinsic mode functions (IMFs) using the Improved Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (ICEEMDAN) technique, which can effectively de-noise the raw PMU data. Then, we choose the optimal mode for frequency detection by selecting the IMF most strongly correlated with the original signal based on detrended cross correlation analysis (DCCA), as real-world PMU data obtained from oscillation events are often non-stationary. Compared with the cross-correlation coefficient used in the existing studies, the DCCA coefficient can better analyze non-stationary data and thus find a better mode for frequency detection. Using the real-world PMU datasets for oscillation events from the ISO-NE grid, experimental results show that the proposed DCCA enhanced forced oscillation frequency detection can accurately detect the oscillation frequency.
DCCA增强强迫振荡频率检测使用真实世界的PMU数据
本文研究了基于真实相量测量单元(PMU)数据的强迫振荡频率检测。准确识别强迫振荡可以帮助操作员防止电力系统故障并采取适当的补救措施。为了检测受迫振荡频率,我们首先使用改进的全系综经验模态分解自适应噪声(ICEEMDAN)技术将PMU数据分解为一系列本征模态函数(IMFs),该技术可以有效地去除原始PMU数据的噪声。然后,我们根据去趋势互相关分析(DCCA)选择与原始信号相关性最强的IMF来选择频率检测的最佳模式,因为从振荡事件获得的真实PMU数据通常是非平稳的。与现有研究中使用的互相关系数相比,DCCA系数可以更好地分析非平稳数据,从而找到更好的频率检测模式。利用来自ISO-NE网格的真实PMU振荡事件数据集,实验结果表明,所提出的DCCA增强强制振荡频率检测方法能够准确地检测出振荡频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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