Artigo
A statistical signal processing approach to islanding detection
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Brazilian Society on Computational Intelligence
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Programa de Pós-Graduação
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Abstract
The integration of distributed generation (DG) sources in the electric energy systems may bring new problems
that need attention, one of these problems is the occurrence of unintentional islanding. Islanding is a condition in which part of
the distribution network is disconnected from the system, and consumer units are still powered by one or more DGs, which can
cause damage to equipment and pose risks to the safety of technicians. This paper shows an islanding detection method (IDM) in
Power Systems with DG based on statistical signal processing. We used a MathWorks Simulink model of a grid-connected 250
kW photovoltaic (PV) array to simulate the behavior of the three-phase voltage signal in the point of common coupling (PCC)
under the nominal operation, islanding condition, and fault condition using different load compositions. Principal Component
Analysis (PCA) was used to extract the transitory events from the voltage signals, and then we used second-, third-, and fourthorder cumulants to generate features and the best ones were selected using the Fisher’s Discriminant Ratio (FDR). A Radial Basis
Function Network (RBFN) makes the classification of the events. We found that, for this setup, we can achieve detection rates of
99% for both islanding condition detection and fault occurrence classification, no matter the power mismatch between the load
and the DG.
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LIMA, R. R. de et al. A statistical signal processing approach to islanding detection. Learning and NonLinear Models, [S.l.], v. 21, n. 1, p. 60-76, 2023.
