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An alternative voltage sag source identification method utilizing radial basis function network

机译:利用径向基函数网络的电压暂降源识别方法

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Power quality monitors (PQM) are required to be installed in a power supply network in order to assess power quality (PQ) disturbances such as voltage sags. However, with few PQMs installation, it is difficult to pinpoint the exact location of voltage sag. This paper proposes a new method for identifying the voltage sag source location by using the artificial neural network (ANN). Radial basis function networks are initially trained to estimate the unmonitored bus voltages during various sags caused by faults. Then voltage deviation of system buses is calculated to pinpoint voltage sag location. The validation of the proposed methodology is demonstrated by using an IEEE 30 Bus test system. The results shows that the proposed method can correctly locate the voltage sag source based on highest voltage deviation obtained through estimated unmonitored bus voltages.
机译:需要在电源网络中安装电能质量监控器(PQM),以便评估电能质量(PQ)干扰(例如电压骤降)。但是,由于安装的PQM很少,因此很难查明电压骤降的确切位置。本文提出了一种利用人工神经网络(ANN)识别电压暂降源位置的新方法。最初对径向基函数网络进行了训练,以估计由故障引起的各种跌落期间的不受监控的母线电压。然后,计算系统总线的电压偏差以查明电压骤降的位置。通过使用IEEE 30总线测试系统证明了所提出方法的有效性。结果表明,所提出的方法可以基于通过估计的不受监控的母线电压获得的最高电压偏差来正确地定位电压骤降源。

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