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Ensemble approach for automated extraction of critical events from mixed historical PMU data sets

机译:从混合历史PMU数据集中自动提取关键事件的集成方法

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The scope of this survey is the automated extraction of critical events from mixed PMU data sets without prior knowledge about existing failure patterns. An unsupervised procedure is introduced that identifies arbitrary disturbance types (e.g. voltage sags, frequency drops, oscillations) using an ensemble outlier detection approach. For that, different techniques for signal analysis are used to generate features in time and frequency domain. That approach enables the exploration of critical grid dynamics in power systems. Furthermore new failure patterns can be extracted for the creation of training datasets used for online detection algorithms.
机译:本调查的范围是从混合PMU数据集中自动提取关键事件,而无需现有故障模式的先验知识。介绍了一种无监督的程序,其使用集合异常检测方法识别任意干扰类型(例如,电压凹陷,频率下降,振荡)。为此,用于信号分析的不同技术用于在时间和频域中生成特征。这种方法能够探索电力系统中的关键网格动态。此外,可以提取新的故障模式以创建用于在线检测算法的训练数据集。

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