Faster Islanding Detection of Microgrid Based on Multiscale Mathematical Morphology

Pravati Nayak, Arya Avilash, Ranjan Kumar Mallick

Abstract


Faster and reliable islanding detection of microgrid is necessary to protect the equipment and maintenance personnel. Voltage and frequency are two important parameters needs to be controlled in microgrid; Voltage and frequency stability of microgrid depends merely on main grid during grid connected mode and depends on individual controllers during islanding mode. This research proposes a time domain technique based on multi-scale mathematical morphology (MMM) for islanding detection. The proposed technique uses multiscale dilation-erosion difference filter (MDEDF) with peak value of the signal. The performance of the proposed technique is validated in IEEE-13bus system with different cases such as mismatch in real power, reactive power, load switching, motor switching; L-G fault .The results validate the accuracy and efficacy of the proposed technique and also compared with recently published work.

Keywords


Islanding detection; multi-scale dilation-erosion difference filler; microgrid; mathematical morphology

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References


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DOI (PDF): https://doi.org/10.20508/ijrer.v10i2.10455.g7969

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