1. Identification of transmission line voltage sag sources based on multi‐location information convolutional transformer
- Author
-
Qionglin Li, Chen Zheng, Shuming Liu, Shuangyin Dai, Bo Zhang, Yuzheng Tang, and Yi Wang
- Subjects
fault diagnosis ,power transmission faults ,pattern recognition ,wavelet transforms ,Renewable energy sources ,TJ807-830 - Abstract
Abstract Conventional methods for identifying voltage sag sources are difficult to categorize accurately due to the complexity of transmission lines and the influence of noise. In order to solve the problem of difficulty in recognizing voltage sag sources of transmission lines under different locations, this paper proposes a new method for transmission line fault diagnosis based on modified wavelet denoising and multi‐location information convolution transformer. The improved wavelet denoising method proposed in this paper solves the problems of discontinuity and bias of the traditional wavelet denoising method, and is able to better reconstruct the original voltage signal in a strong noise environment. In addition, multi‐location information convolution transformer adopts a new model combining multi‐location information convolution and multi‐scale convolution transformer, which realizes the combination of global information and local context information capturing ability under multi‐location faults. This paper validates the method through simulation experiments and practical situations, and the results show that the method can well classify and identify the type and location of voltage sag sources in transmission lines.
- Published
- 2024
- Full Text
- View/download PDF