Energies (Mar 2018)

FPGA-Based Online PQD Detection and Classification through DWT, Mathematical Morphology and SVD

  • Misael Lopez-Ramirez,
  • Eduardo Cabal-Yepez,
  • Luis M. Ledesma-Carrillo,
  • Homero Miranda-Vidales,
  • Carlos Rodriguez-Donate,
  • Rocio A. Lizarraga-Morales

DOI
https://doi.org/10.3390/en11040769
Journal volume & issue
Vol. 11, no. 4
p. 769

Abstract

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Power quality disturbances (PQD) in electric distribution systems can be produced by the utilization of non-linear loads or environmental circumstances, causing electrical equipment malfunction and reduction of its useful life. Detecting and classifying different PQDs implies great efforts in planning and structuring the monitoring system. The main disadvantage of most works in the literature is that they treat a limited number of electrical disturbances through personal computer (PC)-based computation techniques, which makes it difficult to perform an online PQD classification. In this work, the novel contribution is a methodology for PQD recognition and classification through discrete wavelet transform, mathematical morphology, decomposition of singular values, and statistical analysis. Furthermore, the timely and reliable classification of different disturbances is necessary; hence, a field programmable gate array (FPGA)-based integrated circuit is developed to offer a portable hardware processing unit to perform fast, online PQD classification. The obtained numerical and experimental results demonstrate that the proposed method guarantees high effectiveness during online PQD detection and classification of real voltage/current signals.

Keywords