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COMBINED USE OF UNSUPERVISED AND SUPERVISED LEARNING FOR LARGE SCALE POWER SYSTEM STATIC SECURITY MAPPING

机译:综合使用无监督和监督学习大型电力系统静态安全映射

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摘要

This paper presents an artificial neural-net based technique which combines supervised and unsupervised learning for evaluating on-line power system static security. It automatically scans contingencies of a power system. The proposed approach allows the on-line security evaluation of (N-1) contingencies by considering the pre-fault state vector. ANN-based pattern recognition is carried out with the growing hierarchical self-organizing feature mapping (GHSOM) in order to provide an adaptive neural net architecture during its unsupervised training process. Numerical tests, carried out on a IEEE 14 buses power system are presented and discussed. The analysis using such method provides accurate results with a great saving in computation time.
机译:本文介绍了一种基于人工神经网络的技术,该技术将监督和无监督的学习与评估在线电力系统静态安全性相结合。它自动扫描电力系统的突发事件。所提出的方法通过考虑预故障状态向量来允许对(n-1)突发事件的在线安全评估。基于ANN的模式识别与不断增长的分层自组织特征映射(GHSOM)进行,以便在其无监督的训练过程中提供自适应神经网络架构。呈现和讨论在IEEE 14总线电力系统上执行的数值测试。使用此类方法的分析提供了精确的结果,在计算时节省了很大节省。

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