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Combined use of supervised and unsupervised learning for power system dynamic security mapping

机译:结合使用有监督和无监督学习进行电力系统动态安全映射

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摘要

This paper proposes a new methodology which combines supervised and unsupervised learning for evaluating power system dynamic security. Based on the concept of stability margin, pre-fault power system conditions are assigned to the output neurons on the two-dimensional grid with the growing hierarchical self-organizing map technique (GHSOM) via supervised artificial neural networks (ANNs) which perform an estimation of post-fault power system state. The technique estimates the dynamic stability index that corresponds to the most critical value of synchronizing and damping torques of multimachine power systems. ANN-based pattern recognition is carried out with the growing hierarchical self-organizing feature mapping in order to provide adaptive neural network architecture during its unsupervised training process. Numerical tests, carried out on a IEEE 9 bus power system are presented and discussed. The analysis using such method provides accurate results and improves the effectiveness of system security evaluation.
机译:本文提出了一种结合有监督学习和无监督学习的新方法来评估电力系统的动态安全性。基于稳定裕度的概念,通过有监督的人工神经网络(ANN)使用增长的层次自组织映射技术(GHSOM)将故障前电力系统条件分配给二维网格上的输出神经元故障后电源系统状态。该技术估计动态稳定性指数,该指数对应于多机动力系统的同步转矩和阻尼转矩的最关键值。基于神经网络的模式识别是通过不断增长的分层自组织特征映射来进行的,以便在其无监督训练过程中提供自适应神经网络体系结构。介绍并讨论了在IEEE 9总线电源系统上进行的数值测试。使用这种方法的分析提供了准确的结果,并提高了系统安全性评估的有效性。

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