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Practical Implementation and Testing of RNN Based Synchronous Generator Internal-Fault Protection

机译:基于RNN的同步发电机内部故障保护的实用实施和测试

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Background: Differential relay is normally used to detect faults in Synchronous Generator (SG) stator windings. Nevertheless, detection of ground fault depends on the generator grounding type. For high impedance grounding, the ground faults near the neutral terminal of the stator windings are not detectable by the differential relay. So, the ability to identify the internal fault of SG is a very important task for stable and safe operation of power systems. Methods: Accurate algorithms for fault detection and classification based on Recurrent Neural Network (RNN) are suggested in this paper. RNNs are trained using different data available from SG MATLAB/ SIMULINK model. Simulation of different fault scenarios based on Lab VIEW~(?) program is discussed. The studied fault scenarios include; fault type, location, resistance and fault inception angle. The RNN based algorithm is experimentally tested using an actual SG. Practical design and implementation of the proposed fault detector and classifier are presented. The hardware system is designed and built to acquire the currents at both ends of SG terminals. Results: The presented results confirm the effectiveness of the proposed algorithm to detect minor ground faults near the neutral terminal (less than 5% of stator winding). Conclusion: The experimental analysis shows that the proposed RNN detects and classifies the internal faults correctly, fastly and remain stable after the faults occur.
机译:背景:差动继电器通常用于检测同步发电机(SG)定子绕组中的故障。然而,接地故障的检测取决于发电机接地类型。对于高阻抗接地,定子绕组的中性端子附近的接地故障是不可通过差动继电器检测的。因此,识别SG内部故障的能力是一种非常重要的功率系统稳定安全操作的任务。方法:本文提出了基于经常性神经网络(RNN)的故障检测和分类准确算法。使用SG MATLAB / SIMULINK模型可获得的不同数据培训RNN。讨论了基于实验室视图〜(?)程序的不同故障场景的仿真。学习的故障情景包括;故障类型,位置,电阻和故障成立角度。基于RNN基于实验测试的算法使用实际的SG进行实验测试。提出了建议的故障检测器和分类器的实用设计和实现。硬件系统设计并构建以获取SG终端两端的电流。结果:所呈现的结果证实了所提出的算法的有效性,以检测中性终端附近的较小接地故障(小于定子绕组的5%)。结论:实验分析表明,建议的RNN检测并正确地检测内部故障,在故障发生后正确地稳定地稳定地进行稳定。

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