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Comparisons on Kalman-Filter-Based Dynamic State Estimation Algorithms of Power Systems

Hui Liu, Fei Hu, Jinshuo Su, Xiaowei Wei, Risheng Qin

2020IEEE Access158 citationsDOIOpen Access PDF

Abstract

The Kalman-filter-based algorithms as the mainstream algorithms of dynamic state estimation of power systems have been extensively used to provide accurate data for power system applications. However, few comparisons are made to show their advantages and disadvantages. In this paper, four Kalman-filter-based algorithms (i.e., extended Kalman filter, unscented Kalman filter, cubature Kalman filter, and ensemble Kalman filter) are compared to show their differences from implementation complexity, estimation accuracy and calculation efficiency, the resistance to measurement errors, and the sensitivity to system scales. Finally, the simulation results on the 3-machine, 10-machine, and 48-machine power systems show their advantages and disadvantages.

Topics & Concepts

Kalman filterFast Kalman filterAlpha beta filterInvariant extended Kalman filterComputer scienceEnsemble Kalman filterExtended Kalman filterAlgorithmControl theory (sociology)Unscented transformMoving horizon estimationArtificial intelligenceControl (management)Meteorological Phenomena and SimulationsComputational Physics and Python ApplicationsEnergy Load and Power Forecasting
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