Publication | Open Access
Review of Low-Rank Data-Driven Methods Applied to Synchrophasor Measurement
12
Citations
53
References
2021
Year
EngineeringMeasurementPower System AmbientClock SynchronizationStatistical Signal ProcessingData ScienceData MiningPower System AutomationSystems EngineeringMultilinear Subspace LearningStatisticsLow-rank ApproximationPower SystemsComputer ScienceSystem IdentificationPower System OperationsSignal ProcessingTensor AnalysisSynchrophasor MeasurementSmart Grid
There is a growing acceptance of using synchrophasor data collected over large power systems in control centers to enhance the reliability of power system operations. The spatial and temporal nature of power system ambient and disturbance response allows the analysis of large amount of synchrophasor data by low-rank methods. This paper provides an overview of several applications of synchrophasor data utilizing the low-rank property. The tools to capitalize on the low-rank property include matrix completion methods, tensor analysis, adaptive filtering, and machine learning. The applications include missing data recovery, bad data correction, and disturbance recognition.
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