Shalby Esraa M, Abdelaziz Almoataz Y, Ahmed Eman S, Abd-Elhamed Rashad Basem
Faculty of Engineering, Ain Shams University, Cairo, 11517, Egypt.
Department of Electrical Power and Machines Engineering, The Higher Institute of Engineering at El- Shorouk City, El-Shorouk Academy, Cairo, 11837, Egypt.
Sci Rep. 2025 Jan 7;15(1):1160. doi: 10.1038/s41598-024-82025-2.
The paper presents a comprehensive analysis of the IEEE-16 bus system under different operating conditions. It discusses the selection of suitable decomposition level and wavelet function for analyzing non-stationary signals to enhance power distribution network fault detection. MATLAB/Simulink is used to simulate the system, and transient fault current signals are processed with the MATLAB Wavelet Toolbox. The optimal decomposition level is determined by energy concentration, with the highest energy found in scales D9 (b4), D8 (b5), and D7 (b6), and D8 having the most concentration. Using MATLAB classifier learner, the article evaluates seven common mother wavelets with 53 wavelet functions, and sym3 is found to be the most efficient wavelet function in terms of training time, prediction speed, and accuracy of SVM classifiers. All fault types both symmetrical/unsymmetrical types, and various normal transient conditions such as load/capacitor/DG switching are detected/discriminated with nearly 100% accuracy at the midpoint of line 6-7 with various fault conditions, inception angles (0, 30, 45, 60, 90 and 120°) and a fault resistance of (5,10, 15, and 20 ohms). Additionally, 9 MW wind Farm is integrated at busbar 10, and various fault scenarios are simulated to assess system performance with 100% Accuracy.
本文对不同运行条件下的IEEE - 16母线系统进行了全面分析。讨论了为增强配电网故障检测而分析非平稳信号时合适的分解级别和小波函数的选择。使用MATLAB/Simulink对系统进行仿真,并利用MATLAB小波工具箱处理暂态故障电流信号。通过能量集中度确定最优分解级别,在尺度D9(b4)、D8(b5)和D7(b6)中发现能量最高,且D8的能量集中度最高。利用MATLAB分类器学习器,本文评估了具有53个小波函数的七种常见母小波,发现sym3在训练时间、预测速度和支持向量机分类器的准确性方面是最有效的小波函数。在6 - 7号线中点,针对各种故障情况、起始角度(0、30、45、60、90和120°)以及故障电阻(5、10、15和20欧姆),对所有故障类型(对称/不对称类型)以及各种正常暂态情况(如负载/电容器/分布式电源切换)进行检测/判别,准确率接近100%。此外,在母线10处集成了9兆瓦风电场,并对各种故障场景进行仿真,以100%的准确率评估系统性能。