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Feature selection by separability assessment of input spaces for transient stability classification based on neural networks

机译:基于神经网络的暂态稳定性分类的输入空间可分性特征选择

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摘要

Power system transient-stability assessment based on neural networks can usually be treated as a two-pattern classification problem separating the stable class from the unstable class. In such a classification problem, the feature extraction and selection is the first important task to be carried out. A new approach of feature selection is presented using a new separability measure in this paper. Through finding the 'inconsistent cases' in a sample set, a separability index of input spaces is defined. Using the defined separability index as criterion, the breadth-first searching technique is employed to find the minimal or optimal subsets of the initial feature set. The numerical results based on extensive data obtained for the 10-unit 39-bus New England power system demonstrate the effectiveness of the proposed approach in extracting the 'best combination' of features for improving the quality of transient-stability classification.
机译:基于神经网络的电力系统暂态稳定评估通常可以视为将稳定类与不稳定类分开的两模式分类问题。在这种分类问题中,特征提取和选择是要执行的第一个重要任务。本文提出了一种使用新的可分离性度量的特征选择新方法。通过查找样本集中的“不一致案例”,可以定义输入空间的可分离性指标。使用定义的可分离性指标作为标准,采用广度优先搜索技术来查找初始特征集的最小或最佳子集。基于从10单元39辆新英格兰电力系统获得的大量数据得出的数值结果表明,该方法在提取特征的“最佳组合”以提高暂态稳定性分类质量方面是有效的。

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