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Hybrid technique for fault location of a distribution line

机译:配电线路故障定位的混合技术

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This paper presents a hybrid technique for fault location in a 11 KV, 30 km distribution line with the R-L load placed at the receiving end. The method proposed in this paper analyzes with post-fault sending end one cycle current signal of the distribution system. Preprocessing of the raw signal is done by wavelet packet transform to acquire the information of frequency sub-bands. Here, four level decomposition is performed by wavelet packet transform having sampled frequency of 30 kHz. Thereafter energy feature is collected from the decomposed coefficient for further preprocessing. From a total set of 16 features, 6 optimal features are selected by a feature selection method during the training process. Train and test matrix are produced by applying various simulation conditions like the fault inception angle, resistance of faults path, location of the fault and fault type. The operating conditions of train data set are made entirely dissimilar from the test data set in order to make the method robust to parameter variations. SVM (Support vector machine) and RBFNN (radial basis function neural network) is used for fault distance prediction. Thereafter the optimal features with the test data set are fed to the SVM (support vector machine) and RBFNN (radial basis function neural network) for fault distance estimation. It was seen from the results that wavelet packet transform with particle swarm optimization based feature selection provides minimum fault location error less than 0.21% as compared to other schemes discussed by various researchers.
机译:本文提出了一种混合技术,用于在11 KV,30 km的配电线路中进行故障定位,并将R-L负载置于接收端。本文提出的方法是在故障后发送端分析配电系统的一周期电流信号。通过小波包变换对原始信号进行预处理,以获取频率子带的信息。这里,通过具有30kHz的采样频率的小波包变换来执行四级分解。之后,从分解后的系数中收集能量特征,以进行进一步的预处理。在训练过程中,通过特征选择方法从总共16个特征中选择6个最佳特征。通过应用各种仿真条件(例如故障起始角度,故障路径的阻力,故障位置和故障类型)来生成列车和测试矩阵。使火车数据集的操作条件与测试数据集完全不同,以使该方法对参数变化具有鲁棒性。 SVM(支持向量机)和RBFNN(径向基函数神经网络)用于故障距离预测。此后,将具有测试数据集的最佳特征馈送到SVM(支持向量机)和RBFNN(径向基函数神经网络)以进行故障距离估计。从结果中可以看出,与各种研究人员讨论的其他方案相比,基于粒子群优化的特征选择的小波包变换提供的最小故障定位误差小于0.21%。

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