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Correlation data analysis for low-frequency oscillation source identification

机译:低频振荡源识别的相关数据分析

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The wide area measurement system (WAMS) is widely used in power system and it generates large volume of data. How to use WAMS data to identify the low-frequency oscillation (mode) source in power system remains a great challenge. This paper proposes the correlation data analysis including Pearson correlation coefficient (PCC) and classification decision tree methods, to use the correlation between WAMS and energy management system (EMS) data for low-frequency oscillation (mode) source identification. The case study shows these methods are very efficient and provides a new perspective for processing large volume of WAMS data with EMS data, for low-frequency oscillation (mode) source identification in power system.
机译:广域测量系统(WAMS)在电力系统中得到广泛使用,它会生成大量数据。如何使用WAMS数据识别电力系统中的低频振荡(模式)源仍然是一个巨大的挑战。本文提出了包括Pearson相关系数(PCC)和分类决策树方法在内的相关数据分析,以利用WAMS与能源管理系统(EMS)数据之间的相关性来进行低频振荡(模式)源识别。案例研究表明,这些方法非常有效,并为使用EMS数据处理大量WAMS数据,为电力系统中的低频振荡(模式)源识别提供了新的视角。

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