Comparison of Principal Component Analysis Techniques for PMU Data Event Detection
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Principal component analysis (PCA) is a dimensionality
reduction technique often applied to process and detect
events in large amounts of data collected by phasor measurement
units (PMU) at transmission and distribution level. This article
considers five different approaches to select an appropriate
number of principal components, builds the statistical model
of the PMU data online over a sliding window of 10 seconds
and 1 minute, and evaluates the computation times and the
accuracy of correct event detections with use of two statistical
tests in a 1−hour data file from the UT-Austin Independent
Texas Synchrophasor Network with phasor quantities collected
at different PMU substations
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