电力工程技术 (Jan 2022)

Identification of voltage sag source based on BAS-BP classifier model

  • YE Xiaoyi,
  • LIU Haitao,
  • LYU Ganyun,
  • HAO Sipeng

DOI
https://doi.org/10.12158/j.2096-3203.2022.01.011
Journal volume & issue
Vol. 41, no. 1
pp. 77 – 83

Abstract

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In order to improve the recognition accuracy of different voltage sag disturbance sources and effectively control the voltage sag, a method of voltage sag source identification based on beetle antennae search (BAS)-back propagation (BP) classifier model constructed by longicorn BAS and BP neural network is proposed. In this paper, the improved S-transform is used to extract 16 characteristic indicators to form a voltage sag source identification indicator system. In order to eliminate the influence of redundant information on the classification results, 9 indicators are selected as the input of the classifier using the combination weighting method. By optimizing the initial weights and thresholds of BP neural network by BAS, the BAS-BP classifier model is constructed to identify different types of voltage sag sources in distribution network. The simulation results show that the classifier model has certain anti-noise ability and applicability, and has a better classification than the conventional classifier model dose.

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