4.6 Article

Islanding detection based on impedance estimation using small signal injection

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ijepes.2022.107983

Keywords

Power quality; Smart grids; Islanding detection; Impedance estimation; Multiple islanding detection

Funding

  1. Federal University of Juiz de Fora, Brazil
  2. Federal University of Lavras, Brazil
  3. CAPES, Brazil
  4. CNPq, Brazil
  5. FAPEMIG, Brazil
  6. INERGE, Brazil

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This paper presents a new impedance estimation approach for islanding detection, which injects a small signal into the power system to estimate the impedance seen by the distributed generator. An islanding event is detected if the measured impedance exceeds a pre-defined threshold. Validation results using HIL show that the proposed method is superior to existing active methods and can be used for multiple generator connections.
This paper presents a new impedance estimation approach for islanding detection (ID). To estimate the impedance seen by the distributed generator (DG), a small signal produced by the DG's electronic converter is injected into the power system. This signal produces small disturbances in the network that enable the estimation of the impedance without causing major damage to its power quality. In the proposed method, an islanding event is detected if the measured impedance exceeds a pre-defined threshold. This methodology provides better stability against many non-islanding events, avoiding false ID tripping. Additionally, it can identify islanding events even in the case of a perfect power balance condition. Validation was performed using the Hardware-in-the-Loop (HIL) approach. The results showed that the proposed method is superior to an existing active method in the literature for distinguishing islanding and non-islanding events. The methodology can be used for the case where more than two generators are connected at the same access point.

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