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CNN-Based Fault Phase Identification Method of Double Circuit Transmission Lines

机译:基于CNN的双电路输电线路故障相位识别方法

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摘要

In order to address the problems that model-based distance protection cannot correctly identify the fault phases in the DCTL (Double Circuit Transmission Lines on the same tower), a CNN-based (Convolutional Neural Network) fault phase identification method is proposed. The proposed method only uses the current and voltage waveforms of single-ended and single-circuit of DCTL to identify the fault phases. The CNN includes two convolution layers and two pooling layers, which are used to automatically extract the features of the waveforms. Furthermore, the CNN realizes the phase identification function by the extracted features. A training set is constructed by the simulation result of PSCAD, which is used for training the CNN to fit the mapping relationship between the waveforms and the fault types. Then, a validation set is used to optimize the hyper-parameters of CNN. Finally, several test sets are used to test the performance of CNN for phase identification. Compared with the traditional model-driven methods, the CNN-based method avoids manually analyzing the fault characteristics under different fault types and constructing identification criteria. The test results show that the proposed method can greatly improve the fault phase identification accuracy of DCTL.
机译:为了解决基于模型的距离保护无法正确识别DCTL中的故障阶段(同一塔上的双电路传输线)的问题,提出了基于CNN的(卷积神经网络)故障相位识别方法。所提出的方法仅使用单端和单电路的DCTL电流和电压波形来识别故障阶段。 CNN包括两个卷积层和两个汇集层,用于自动提取波形的特征。此外,CNN通过提取的特征实现相位识别功能。通过PSCAD的仿真结果构造了一个训练集,用于训练CNN以适应波形和故障类型之间的映射关系。然后,验证集用于优化CNN的超参数。最后,几种测试集用于测试CNN的性能进行相位识别。与传统的模型驱动方法相比,基于CNN的方法避免了手动分析不同故障类型下的故障特性和构建识别标准。测试结果表明,该方法可以大大提高DCTL的故障相位鉴定精度。

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