Author:
Tang Zhen,Han Jing,Wang ShiJian,Ding Li,Zhu YiChao
Abstract
Abstract
At present, the conventional automatic localization method of the power quality disturbance signal of the distribution network mainly extracts the feature vector of the disturbance signal. It constructs the target localization function, which leads to poor localization accuracy because the noise part of the disturbance signal is ignored. In this regard, the automatic localization method of PV access power quality disturbance signal based on big data is proposed. By using the wavelet decomposition algorithm, the noise part of the power quality disturbance signal is removed, and the measurement matrix and reconstruction function are combined with compressing and reconstructing the disturbance signal. Finally, the automatic positioning of the disturbance signal is achieved by extracting the characteristics of the disturbance signal data and clustering analysis processing. In the experiment, the designed signal localization method is tested for the localization effect. The results can prove that when the proposed method is used to automatically localize the disturbed signal, the localization results are consistent with the spatial feature distribution of the signal and have a more desirable automatic localization effect.
Subject
Computer Science Applications,History,Education
Reference9 articles.
1. Susceptibility of Large Wind Power Plants to Voltage Disturbances-Recommendations to Stakeholders[J];Oliveira;Journal of Modern Power Systems and Clean Energy,2022
2. Wavelet Transform and Fractal Theory for Detection and Classification of Self-extinguishing and Fugitive Power Quality Disturbances[J];Lakrih;International Journal of Circuits,2021
3. A new reconstruction algorithm based on temporal neural network and its application in power quality disturbance data: [J];Liu;Measurement and Control,2021
4. PQ disturbance detection and classification combining advanced signal processing and machine learning tools - ScienceDirect[J];Shafiullah,2021
5. Hyperbolic Window S-Transform Aided Deep Neural Network Model-Based Power Quality Monitoring Framework in Electrical Power System[J];Nandi;IEEE Sensors Journal,2021