LI Zewen, XIA Yixiang, WU Guorui, et al. Fault Identification Method for Distribution Networks Based on Spatio-temporal Data Cube[J]. 2025, (24): 9553-9562.
LI Zewen, XIA Yixiang, WU Guorui, et al. Fault Identification Method for Distribution Networks Based on Spatio-temporal Data Cube[J]. 2025, (24): 9553-9562. DOI: 10.13334/j.0258-8013.pcsee.241276.
Accurate fault identification in distribution networks is fundamental for fault detection
location
and line restoration
which are essential for ensuring the reliability of power supply to users. To address issues such as the susceptibility to local measurement point influence and the poor generalization ability of existing methods
this paper proposes a fault identification method for distribution networks based on spatio-temporal data cubes. It analyzes the differences in propagation characteristics of different types of faults and disturbance signals
and demonstrates the superiority of using panoramic fault data from the entire network. The approach decomposes fault signals into time-frequency spectra and stacks spectra from different measurement points to construct spatio-temporal data cubes. Finally
a convolutional neural network (CNN) model based on 3D convolutional kernels is proposed. The spatio-temporal data cube serves as the basic data unit input to the network model
and feature extraction and error identification are achieved through convolutional operations of 3D kernels. Through extensive simulations and field tests
the method proposed in the paper can accurately distinguish different types of faults and disturbances
has a high accuracy in identifying high-resistance grounding faults