Integrated Intelligent Energy ›› 2024, Vol. 46 ›› Issue (6): 8-15.doi: 10.3969/j.issn.2097-0706.2024.06.002

• New Energy Modelling • Previous Articles     Next Articles

Research on fault diagnosis of active distribution network based on parallel fusion deep residual shrinkage network

FENG Ji1(), YANG Guohua1,2,*(), SHI Lei2, PAN Huan1, LU Yuxiang1, ZHANG Yuanxi1, LI Zhen1   

  1. 1. School of Electronic and Electrical Engineering, Ningxia University, Yinchuan 750021, China
    2. Ningxia Key Laboratory of Electrical Energy Security, Yinchuan 750004, China
  • Received:2024-01-03 Revised:2024-03-18 Published:2024-06-25
  • Contact: YANG Guohua E-mail:fj065frontile@163.com;ygh@nxu.edu.cn
  • Supported by:
    National Natural Science Foundation of China(61763040);Ningxia Natural Science Foundation Project(2021AAC03062)

Abstract:

Since the faults of the distribution networks with distributed generators present diversity,and the fault diagnoses are vulnerable to nonlinear factors such as the type of distributed generators and their outputs, a fault diagnosis model based on a parallel fusion deep residual shrinkage network(P-FDRSN) is proposed. The P-FDRSN is constructed by two parallel networks, a fault identification branch and a fault location branch. The parallel structure introduces shrinkage mechanism into its residual module to reduce the influence of noise or redundant information on the network and to improve the robustness of the network against noise. After transforming fault recording signal waveforms into grayscale images and time-frequency images,the signals are fed into the DRSN for deep feature extraction, and then, the acquired features are fused in the convergence layer, so as to enhance the feature learning capability on the fault recording signals. Finally, the simulation results show that the fault location and identification accuracies of the proposed model for various types of distributed generators of different outputs can be maintained above 98.75% and 97.25%, respectively. Even under the interference of noise,the diagnosis accuracy of the model will be kept above 96.75%,showing a high accuracy and decent robustness.

Key words: active distribution network, distributed generator, fault diagnosis, parallel network structure, fusion deep residual shrinkage network

CLC Number: