Energies (Nov 2021)

Photovoltaic Power Quality Analysis Based on the Modulation Broadband Mode Decomposition Algorithm

  • Zucheng Wang,
  • Yanfeng Peng,
  • Yanfei Liu,
  • Yong Guo,
  • Yi Liu,
  • Hongyan Geng,
  • Sai Li,
  • Chao Fan

DOI
https://doi.org/10.3390/en14237948
Journal volume & issue
Vol. 14, no. 23
p. 7948

Abstract

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The Broadband Mode Decomposition (BMD) method was previously proposed to solve the Gibbs phenomenon that occurs during photovoltaic signal decomposition; its main idea is to build a dictionary which contains signal features, and to search in the dictionary to solve the problem. However, BMD has some shortcomings; especially if the relative bandwidth of the decomposed signal is not small enough, it may treat a square wave signal as several narrowband signals, resulting in a deviation in the decomposition effect. In order to solve the problem of relative bandwidth, the original signal is multiplied by a high-frequency, single-frequency signal, and the wideband signal is processed as an approximate wideband signal. This is the modulation broadband mode decomposition algorithm (MBMD) proposed in this article. In order to further identify and classify the disturbances in the photovoltaic direct current (DC) signal, the experiment uses composite multi-scale fuzzy entropy (CMFE) to calculate the components after MBMD decomposition, and then uses the calculated value in combination with the back propagation (BP) neural network algorithm. Simulation and experimental signals verify that the method can effectively extract the characteristics of the square wave component in the DC signal, and can successfully identify various disturbance signals in the photovoltaic DC signal.

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