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首页> 外文期刊>IEEE Transactions on Power Systems >Application of a novel fuzzy neural network to real-time transient stability swings prediction based on synchronized phasor measurements
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Application of a novel fuzzy neural network to real-time transient stability swings prediction based on synchronized phasor measurements

机译:基于同步相量测量的新型模糊神经网络在瞬时暂态稳定波动预测中的应用

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摘要

The ability to rapidly acquire synchronized phasor measurements from around a power system opens up new possibilities for power system protection and control. In this paper, the authors develop a novel class of fuzzy hyperrectangular composite neural networks which utilize synchronized phasor measurements to provide fast transient stability swings prediction for use with high-speed control. Primary features of the method include constructing a fuzzy neural network for all fault locations, using a short window of realistic-precision post-fault phasor measurements for the prediction, and testing robustness to variations in the operating point. From simulation tests on a sample power system, it reveals that the proposed tool can yield a highly successful prediction rate in real-time.
机译:从电力系统周围快速获取同步相量测量值的能力为电力系统的保护和控制开辟了新的可能性。在本文中,作者开发了一类新型的模糊超矩形复合神经网络,该网络利用同步相量测量来提供用于高速控制的快速瞬态稳定性波动预测。该方法的主要特征包括为所有故障位置构建模糊神经网络,使用逼真的精确的故障后相量测量的短窗口进行预测以及测试对工作点变化的鲁棒性。通过对样本电力系统的仿真测试,它表明所提出的工具可以实时产生非常成功的预测率。

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