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Fast prediction of power transfer stability index based on radial basis function neural network

机译:基于径向基函数神经网络的输电稳定指数快速预测

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摘要

The increase in power demand and limited power sources has caused the system to operate at its maximum capacity. Therefore, the ability to determine voltage stability before voltage collapse has received a great attention due to the complexity of power system. In this paper there is a prediction of Power Transfer Stability Index (PTSI) based on Radial Basis Function Neural Network (RBFNN) for the Iraqi Super Grid network, 400 kV. Learning data has been obtained for various settings of load variables using load flow and conventional PTSI method. The input data was performed by using a 400 samples test with different bus voltage (Vb), Bus active and reactive power (Pb, Qb), bus load angle (δb) and PTSIb. The three RBFNN models have 2, 3 and 4 inputs representing the (Vb, Pb, Qband δb) respectively, the best hidden layer have thirty six nodes and the output layer has node representing PTSIbhave been used to assess bus security. The proposed method has been tested on a practical system and compared with Back-propagation neural network. In Simulation results show that the proposed method is more suitable for on-line bus voltage stability assessment in term of automatically detection of critical bus when additional real or reactive loads are added or loss of transmission line.
机译:电力需求的增加和有限的电源已导致系统以其最大容量运行。因此,由于电力系统的复杂性,在电压崩溃之前确定电压稳定性的能力受到了极大的关注。本文针对400 kV伊拉克超级电网,基于径向基函数神经网络(RBFNN)对功率传递稳定性指数(PTSI)进行了预测。使用潮流和常规PTSI方法获得了各种负载变量设置的学习数据。通过使用具有不同的总线电压(Vb),总线有功功率和无功功率(Pb,Qb),总线负载角(δb)和PTSIb的400个样本测试来执行输入数据。这三个RBFNN模型具有分别代表(Vb,Pb,Qbandδb)的2、3和4个输入,最佳隐藏层具有36个节点,并且输出层具有代表PTSIb的节点已被用于评估总线安全性。该方法已在实际系统上进行了测试,并与反向传播神经网络进行了比较。仿真结果表明,该方法在增加有功或无功负荷或输电线路损耗时自动检测临界母线,更适合在线母线电压稳定性评估。

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