利用局部电压测量对配电系统事件进行检测和分类

D. Phillips, T. Overbye
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引用次数: 18

摘要

广域测量系统(WAMS)正在实施,以帮助提高电网内的态势感知能力。这些系统使用相量测量单元(pmu),可以测量电力系统内的电压和电流。一种PMU是频率干扰记录仪(FDR),它以每秒10个数据样本的速度测量电压幅度、频率和相位角。这些测量是在120V的水平上进行的,这是一种相对低成本、可快速部署的pmu替代方案。本文提出了一种利用安装在伊利诺伊大学厄巴纳-香槟分校(UIUC)周围的fdr获得的电压数据进行配电系统事件检测和分类的方法。这种无模型的事件分类将使用模式识别技术来帮助识别这些干扰可能特有的特征。分析将应用于电压数据的滑动窗口,并将每个窗口的结果相互比较,以帮助确定发生了哪种事件。
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Distribution system event detection and classification using local voltage measurements
Wide-Area Measurement Systems (WAMS) are being implemented in order to help increase situational awareness within the electric grid. These systems use Phasor Measurement Units (PMUs), devices which can measure the voltage and current within the power system. One kind of PMU is the Frequency Disturbance Recorder (FDR), which measures voltage magnitude, frequency, and phase angle at 10 data samples per second. These measurements are taken at the 120V level, resulting in a relatively low-cost, rapidly deployable alternative to other PMUs. This paper presents an approach to distribution system event detection and classification using voltage data obtained from FDRs installed around the University of Illinois at Urbana-Champaign (UIUC). This model-free classification of events will use pattern recognition techniques to help identify features that may be unique to these disturbances. Analysis will be applied to a sliding window of voltage data, and the results from each window are compared against one another in order to help determine what kind of event occurred.
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