利用智能电力系统稳定器对输电线路进行故障检测、分类和定位

M. Othman, M. Mahfouf, D. Linkens
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引用次数: 23

摘要

提出了一种新颖的小波域最优特征选择和监督神经网络故障分类器技术。以多区域多机系统各发电机转速偏差的输出信号作为小波分析的输入。4台机器在“无故障状态”、有PSS和没有PSS的“故障”下的“振荡特征”被记录在不同的故障位置,用于使用多分辨率分析(MRA)小波变换进行故障检测。MRA将信号分解成不同的分辨率,允许对其能量含量和特征进行详细分析。然后将其用作故障的类别和位置的特征。使用了三种分类器,即广义回归神经网络(GRNN);比较了概率神经网络(PNN)和自适应网络模糊推理系统(ANFIS)对故障定位和分类的训练和发现效果。在两个区域之间采用双回路传输线的两区4机系统被修改为包括一个虚拟总线用于研究。为了控制各故障点的振荡,利用Simulink/spl / reg/软件设计了常规电力系统稳定器的各种增益和时间常数的查找表。在最小化过程中,采用平方误差积分和多目标函数作为适应度函数。Results show that the proposed control of the PSS is more robust in damping the oscillations as compared to the fixed conventional PSS.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transmission lines fault detection, classification and location using an intelligent power system stabiliser
A novel technique, namely optimal feature selection in the wavelet domain and supervised neural network-fault classifier is developed. An output signal of the speed deviations of each generator of the multi-area multi-machines system is taken as the input for the wavelet analysis. The "oscillation signature" for each of the 4 machines in a 'no fault condition', 'fault' with the PSS and without the PSS is recorded at various fault locations for fault detection using multi resolution analysis (MRA) wavelet transforms. The MRA decomposes the signal into different resolutions allowing a detailed analysis of its energy content and characteristics. It is then used as a feature for classes and locations of the fault. Three classifiers are used, namely the generalised regression neural network (GRNN); the probabilistic neural network (PNN), and the adaptive network fuzzy inference system (ANFIS), to train and find the fault location and classification and the results obtained are compared. The two-area 4-machine system with a double circuit transmission lines between the two areas is modified to include a fictitious bus for the study. To control the oscillation at various fault locations, a lookup table is devised using Simulink/spl reg/ for various values of the gain and the time constant of the conventional power system stabiliser. The integral square error and multiple objective functions are used as a fitness function during the minimization operation. Results show that the proposed control of the PSS is more robust in damping the oscillations as compared to the fixed conventional PSS.
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