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Application of artificial neural network (ANN) to enhance power systems protection: a case of the Nigerian 330 kV transmission line

机译:人工神经网络(ANN)在增强电力系统保护中的应用:尼日利亚330 kV输电线的情况

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This work investigates an improved protection solution based on the use of artificial neural network on the 330 kV Nigerian network modeled using MATLAB R2014a. Measured fault voltages and currents signals decomposed using the discrete Fourier transform implemented via fast Fourier transform are fed as inputs to the neural network. The output plots of the neural network shows its successful application to fault diagnosis (fault detection, fault classification and fault location). Unlike conventional protection schemes, the neural network can be adapted to distances which can cover the entire length of the protected line. Numerical assessment carried out on the neural network fault locator shows a reduced time of operation of 5.15 ms as compared to the 0.350 s with the use of ordinary numerical relays. This work also investigates the adaptive auto-reclosure scheme implemented using artificial neural network. The adaptive reclosure scheme has been adapted for use in the Nigerian network successfully to distinguish transient and permanent faults. Simulation results prove that the adaptive reclosure scheme was able to detect a line-to-ground transient fault and clear this fault in 0.1 s while the line-to-ground permanent fault is cleared after 0.14s. The fault diagnostic algorithm designed using artificial neural network (ANN) for the 330 kV network was tested on a 132 kV network. Results show and prove that the algorithm is flexible and can be adopted to other networks.
机译:这项工作根据使用Matlab R2014A建模的330 kV尼日利亚网络在330 kV尼日利亚网络上使用的改进保护解决方案。使用快速傅里叶变换实现的离散傅里叶变换分解的测量故障电压和电流信号被馈送为神经网络的输入。神经网络的输出图显示其成功应用于故障诊断(故障检测,故障分类和故障位置)。与传统的保护方案不同,神经网络可以适应可以覆盖受保护线的整个长度的距离。与使用普通数值继电器相比,在神经网络故障定位器上执行的数值评估显示了0.350秒的减少的5.15ms。这项工作还研究了使用人工神经网络实施的自适应自动闭合方案。自适应闭合方案已成功地用于尼日利亚网络以区分瞬态和永久性故障。仿真结果证明,自适应闭合方案能够检测到地面瞬态故障,并在0.1秒内清除此故障,而在0.14S之后清除了线到地的永久性故障。使用用于330 kV网络的人工神经网络(ANN)设计的故障诊断算法在132 kV网络上进行了测试。结果显示并证明算法灵活,可以采用其他网络。

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