使用R编程从PMU生成的大数据中进行事件检测

Vishwajit Roy, Subrina Noureen, S. Bayne, A. Bilbao, M. Giesselmann
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引用次数: 6

摘要

电力系统分析的最新进展表明,在智能电网中实施相量测量单元(PMU)将比SCADA发挥更大的作用。其主要原因是比传统的SCADA系统有更多的采样数据。每个PMU数据,如电压,电流和相位角,每秒提供更多的样本,这有助于事件检测。每一个PMU每秒发送的海量数据使大数据问题更加突出。从大数据分析中发现和预测短时间内的瞬态情况,甚至是小的扰动或异常,是近期的挑战。因为新的智能电子设备的引入将加剧大数据问题。对大数据进行后扰动分析处理也是一项重要任务。本文给出了一个场景,从放置在不同位置的PMU接收到PDC(相量数据集中器)的测量数据,并检测瞬态事件以进行扰动后分析。在本分析中,用R编程分析评估了干扰,并比较了来自不同位置的时序数据的结果,还显示了网格中干扰之间的关系。在此分析中,还考虑了频率和电压数据的影响
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event Detection From PMU Generated Big Data using R Programming
Recent advancement in Power System Analysis shows that implementation of PMU (Phasor Measurement Unit) in Smart Grid playing a significant role over SCADA. The main reasoning for that is more sampling data than traditional SCADA system. Every PMU data like voltage, current and Phase angle gives more samples in every second which is helpful for event detection. The enormous data send by each PMU in every second energies the big data issue. To find out and predict the transient situation and even small disturbances or anomalies from big data analysis within the specified short period of time is a challenge for near future. Because introduction of new smart electrical devices will boost up the big data issue. Processing of big data for post disturbance analysis is also an important task. This paper gives a scenario of PMU measurements received to PDC (Phasor Data Concentrator) from PMUs placed in distinct locations and detection of transient events for post disturbance analysis. In this analysis, the disturbances are evaluated with the R programming analysis and compare findings of chronological data from separate locations and also shows the relation between disturbances in a grid. For this analysis, the impacts of frequency and voltage data are also considered
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