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An Online Dynamic Security Assessment in Power Systems Using RBF-R Neural Networks

机译:使用RBF-R神经网络的电力系统在线动态安全评估

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摘要

In this paper, the dynamic security of a large power system against any critical contingency is predicted by a new type of radial basis function neural network, RBF-R NN, as it classifies the system's transient stability status online. In order to keep the number of measurements limited, as well as to reduce the complexity of the NNs used, the minimum redundancy maximum relevance is adopted as a feature selection method. Moreover, the classification performance of the RBF-R NNs is improved by eliminating the training set instances that are close to the security boundary. The proposed method is applied on a 16-generator-68-bus test system and the performance of the adopted RBF-R NNs is compared with RBF NNs, as well as with multilayer perceptrons. The simulation results show that a significant improvement in prediction accuracy is obtained by the RBF-R NNs together with the feature selection and the elimination of boundary instances.
机译:在本文中,通过新型的径向基函数神经网络,RBF-R NN预测了对任何临界应急的大型电力系统的动态安全性,因为它在线对系统的瞬态稳定状态进行了分类。为了保持测量值限制的数量,以及降低所用NNS的复杂性,采用最小冗余最大相关性作为特征选择方法。此外,通过消除接近安全边界的训练集实例来改进RBF-R NNS的分类性能。所提出的方法应用于16发生器-68总线测试系统,并将采用的RBF-R NNS的性能与RBF NNS进行比较,以及多层感知者。仿真结果表明,RBF-R NN与特征选择和消除边界实例一起获得预测精度的显着改善。

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