Journal of Electrical Engineering ›› 2022, Vol. 17 ›› Issue (3): 184-193.doi: 10.11985/2022.03.022

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Method of Sag Type Recognition Based on Deep Learning SDAE-BP

ZHANG Jinluan1,2(), DENG Zuqiang1,2(), ZHANG Xin1,2(), WANG Liang2   

  1. 1. Beijing Energy Technology Branch, NARI Technology Co., Ltd., Beijing 100085
    2. NARI Group Corporation/State Grid Electric Power Research Institute, Nanjing 211000
  • Received:2021-09-11 Revised:2022-02-20 Online:2022-09-25 Published:2022-10-28

Abstract:

The types of sags caused by different short-circuit faults are different, and the impact on users is different. Accurately identifying the types of sags can analyze, compensate and suppress the actual voltage sags, which is of great significance to the management of voltage sags. At the same time, it can also be used as a basis for the coordination of disputes between power supply departments and users. Considering that there may be a phase jump when a short-circuit fault occurs in the actual system, based on the classification of the sag caused by the short-circuit fault in the original literature, the type of the voltage sag caused by the short-circuit fault is derived when the impedance angle of the system impedance and the line impedance are not equal. The expression and its characteristics are analyzed. In order to accurately identify the type of voltage sag and avoid the problem of information loss in the process of artificial feature extraction, a sag type recognition method based on stacked denoised autoencoder-back propagation(SDAE-BP) is proposed. A certain probability of noise is added to the input signal, and then a multi-layer noise reduction self-encoding network is trained layer by layer by constructing to achieve signal feature extraction with the smallest error, and BP neural network is used to identify the type of sag. The correctness of the above-mentioned propagation characteristics and voltage sag type identification method is verified by Matlab simulation.

Key words: Short circuit fault, voltage sag type, stack noise reduction autoencoder, BP neural network, voltage sag type recognition

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