Power flow classification for static security assessment

D. Niebur, A. Germond
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引用次数: 20

Abstract

The authors investigate the classification of power system states using an artificial neural network model, Kohonen's self-organizing feature map. The ultimate goal of this classification is to assess power system static security in real-time. Kohonen's self-organizing feature map is an unsupervised neural network which maps N-dimensional input vectors to an array of M neurons. After learning, the synaptic weight vectors exhibit a topological organization which represents the relationship between the vectors of the training set. This learning is unsupervised, which means that the number and size of the classes are not specified beforehand. In the application developed, the input vectors used as the training set are generated by off-line load-flow simulations. The learning algorithm and the results of the organization are discussed.<>
静态安全评估的潮流分类
作者利用人工神经网络模型Kohonen自组织特征映射研究了电力系统状态的分类。该分类的最终目的是实时评估电力系统的静态安全性。Kohonen的自组织特征映射是一种无监督神经网络,它将n维输入向量映射到M个神经元数组。学习后,突触权向量呈现拓扑组织,表示训练集向量之间的关系。这种学习是无监督的,这意味着班级的数量和规模事先没有规定。在开发的应用程序中,作为训练集的输入向量是通过离线负载流模拟生成的。讨论了组织的学习算法和结果
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