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Mode Shape Estimation using Complex Principal Component Analysis and k-Means Clustering

机译:模式形状估计使用复杂主成分分析和k均值聚类

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We propose an empirical method for identifying low damped modes and corresponding mode shapes using frequency measurements from a Wide Area Monitoring System. The method consists of two main steps: Firstly, Complex Principal Component Analysis is used in combination with the Hilbert Transform and Empirical Mode Decomposition to provide estimates of modes and mode shapes. The estimates are stored as multidimensional points. Secondly, the points are grouped using a clustering algorithm, and new averaged estimates of modes and mode shapes are computed as the centroids of the clusters. Applying the method on data resulting from a non-linear power system simulator yields estimates of dominant modes and corresponding mode shapes that are similar to those resulting from modal analysis of the linearized system model. Encouraged by the results, the method is further tested with real PMU data at transmission grid level. Initial results indicate that the performance of the proposed method is promising.
机译:我们提出了一种用来自广域监测系统的频率测量来识别低阻尼模式和对应模式形状的经验方法。该方法包括两个主要步骤:首先,复杂的主成分分析与Hilbert变换和经验模式分解组合使用,以提供模式和模式形状的估计。估计存储为多维点。其次,使用聚类算法分组点,并且将新的平均估计和模式形状的估计数被计算为集群的质心。应用来自非线性电力系统模拟器产生的数据的方法产生主导模式的估计和相应的模式形状,其类似于线性化系统模型的模态分析所产生的模式。通过结果鼓励,该方法在传输电网级别用真实的PMU数据进行了进一步测试。初始结果表明所提出的方法的性能是有前途的。

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