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Clustering and Dimensionality-reduction Techniques Applied on Power Quality Measurement Data

机译:聚类和降维技术在电能质量测量数据中的应用

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The power system is changing rapidly, and new tools for predicting unwanted events are needed to keep a high level of security of supply. Large volumes of data from the Norwegian power grid have been collected over several years, and unwanted events as interruptions, earth faults, voltage dips and rapid voltage changes have been logged. This paper demonstrates the application of clustering and dimensionality-reduction techniques for the purpose of predicting unwanted events. Several techniques have been applied to reduce the dimensionality of the datasets and to cluster events based on analytical features, to separate events containing faults from a normal situation. The paper shows that the developed predictive model has some predictive capability when using balanced datasets containing similar muber of fault events and non-fault events. One of the main findings, however, is that this predictive capability is significantly reduced when using unbalanced datasets. Thus, the development of an accurate predictive model based on normal power system conditions, i.e. an unbalanced dataset of events and non-events, is a topic for further research.
机译:电力系统瞬息万变,因此需要用于预测不良事件的新工具来保持高水平的供电安全性。挪威电网已收集了数年的大量数据,并记录了诸如中断,接地故障,电压骤降和电压快速变化之类的不良事件。本文演示了聚类和降维技术在预测不必要事件中的应用。已经应用了多种技术来减少数据集的维数,并基于分析特征对事件进行聚类,以将包含故障的事件与正常情况分开。本文表明,当使用包含相似故障事件和非故障事件的平衡数据集时,开发的预测模型具有一定的预测能力。但是,主要发现之一是,使用不平衡数据集时,这种预测能力会大大降低。因此,基于正常电力系统条件即事件和非事件的不平衡数据集的准确预测模型的开发是进一步研究的主题。

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