Symmetry (Jun 2022)

A Residual Voltage Data-Driven Prediction Method for Voltage Sag Based on Data Fusion

  • Chen Zheng,
  • Shuangyin Dai,
  • Bo Zhang,
  • Qionglin Li,
  • Shuming Liu,
  • Yuzheng Tang,
  • Yi Wang,
  • Yifan Wu,
  • Yi Zhang

DOI
https://doi.org/10.3390/sym14061272
Journal volume & issue
Vol. 14, no. 6
p. 1272

Abstract

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Voltage sag is the most serious power quality problem in the three-phase symmetrical power system. The influence of multiple factors on the voltage sag level and low computational efficiency also pose challenges to the prediction of residual voltage amplitude of voltage sag. This paper proposes a voltage sag amplitude prediction method based on data fusion. First, the multi-dimensional factors that influence voltage sag residual voltage are analyzed. Second, these factors are used as input, and a model for predicting voltage sag residual voltage based on data fusion is constructed. Last, the model is trained and debugged to enable it to predict the voltage sag residual voltage. The accuracy and feasibility of the method are verified by using the actual power grid data from East China.

Keywords