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Fast Prediction of Loadability Margins by Constructing a Small-Signal Stability Boundary Based on Neural Networks

机译:基于神经网络构建小信号稳定性边界,快速预测负载性边界

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Determining loadability margins to various security limits is of great importance for the secure operation of a power system. A novel approach is proposed in this paper for fast prediction of loadability margins with respect to small-signal stability based on neural networks. Small-signal stability boundaries are constructed by means of loading the power system until the stability limits are reached from a base operating point along various loading directions. Back-propagation neural networks (BPNN) for different contingencies are trained to approximate these stability boundaries. A search algorithm is then proposed to predict the loadability margins from any stable operating point along arbitrary loading directions through an iterative technique based on the trained BPNNs. The simulation results for the IEEE two-area benchmark system demonstrate the effectiveness of the proposed method for on-line prediction of loadability margins.
机译:为各种安全限制确定可加载性余量对于电力系统的安全操作非常重要。本文提出了一种新方法,用于基于神经网络的小信号稳定性快速预测可负载性边距。小信号稳定边界通过加载电力系统来构造,直到沿着各种装载方向从基部操作点到达稳定限制。培训不同紫外线的后传播神经网络(BPNN)以近似这些稳定边界。然后提出了一种搜索算法以通过基于训练的BPNNS的迭代技术来预测沿任意加载方向的任何稳定工作点的可加载性边缘。 IEEE两区域基准系统的仿真结果证明了所提出的可负载性边缘预测方法的有效性。

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