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首页> 外文期刊>IEEE Transactions on Power Systems >Support vector machines for transient stability analysis of large-scale power systems
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Support vector machines for transient stability analysis of large-scale power systems

机译:支持向量机,用于大规模电力系统的暂态稳定性分析

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摘要

The pattern recognition approach to transient stability analysis (TSA) has been presented as a promising tool for online application. This paper applies a recently introduced learning-based nonlinear classifier, the support vector machine (SVM), showing its suitability for TSA. It can be seen as a different approach to cope with the problem of high dimensionality. The high dimensionality of power systems has led to the development and implementation of feature selection techniques to make the application feasible in practice. SVMs' theoretical motivation is conceptually explained and they are tested with a 2684-bus Brazilian system. Aspects of model adequacy, training time, classification accuracy, and dimensionality reduction are discussed and compared to stability classifications provided by multilayer perceptrons.
机译:模式识别方法用于瞬态稳定性分析(TSA)已被提出作为在线应用的有前途的工具。本文应用了最近引入的基于学习的非线性分类器,即支持向量机(SVM),显示了其对TSA的适用性。可以将其视为解决高维问题的另一种方法。电力系统的高维度导致了特征选择技术的发展和实施,以使其在实践中可行。从概念上解释了SVM的理论动机,并使用2684总线的巴西系统对其进行了测试。讨论了模型适当性,训练时间,分类准确性和降维方面,并将其与多层感知器提供的稳定性分类进行了比较。

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