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  • Turkish Journal of Electrical Engineering and Computer Science
  • Volume:26 Issue:5
  • Multilabel learning for the online transient stability assessment of electric power systems

Multilabel learning for the online transient stability assessment of electric power systems

Authors : Peyman BEYRANVAND, Veysel Murat İstemihan GENÇ, Zehra ÇATALTEPE
Pages : 2661-2675
View : 12 | Download : 13
Publication Date : 0000-00-00
Article Type : Research Paper
Abstract :Dynamic security assessment of a large power system operating over a wide range of conditions requires an intensive computation for evaluating the system`s transient stability against a large number of contingencies. In this study, we investigate the application of multilabel learning for improving training and prediction time, along with the prediction accuracy, of neural networks for online transient stability assessment of power systems. We introduce a new multilabel learning method, which uses a contingency clustering step to learn similar contingencies together in the same multilabel multilayer perceptron. Experimental results on two different power systems demonstrate improved accuracy, as well as significant reduction in both training and testing time.
Keywords : Dynamic security assessment, transient stability assessment, multilabel learning, neural networks

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