Application of query-based learning to power system static security assessment

M. El-Sharkawi, Shiyu Huang
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引用次数: 9

Abstract

A query-based learning and inverted neural network methods are developed for static security assessment of power system. By the proposed method, the demand for huge amounts of data to evaluate the security of the power system can be considerably reduced. The inversion algorithm to generate input patterns at the boundaries of the security region is introduced. The query algorithm is used to enhance the accuracy of the boundaries in the areas where more training data are needed. The IEEE-30 bus system is used to test the proposed method.<>
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基于查询的学习在电力系统静态安全评估中的应用
提出了一种基于查询学习和反向神经网络的电力系统静态安全评估方法。通过提出的方法,可以大大减少对大量数据的需求,以评估电力系统的安全性。介绍了在安全区域边界处生成输入模式的反演算法。在需要更多训练数据的区域,使用查询算法来提高边界的准确性。用IEEE-30总线系统对所提出的方法进行了测试
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