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Comparison of Prony and ARMA Methods for Oscillation Mode Identification in Distribution Systems Based on μPMU

机译:基于μPMU的配电系统振荡模式识别的Prony和ARMA方法的比较

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Prony method and auto regressive moving average (ARMA) method are two typical methods used in the low-frequency oscillation mode identification of large-scale power system. This paper applies the two methods to distribution systems with multiple DGs to identify oscillation modes. The applicability of the methods to different signals is accessed by employing them to ringdown and ambient signals simulated from a 4-DG islanded distribution system and comparing to the eigenvalues calculated by eigen-analysis of the system’s small-signal model. The results indicate that the ARMA method has better applicability in this situation while Prony method is simpler to implement in case of ringdown signals.
机译:Prony法和自回归移动平均法(ARMA)是用于大型电力系统低频振荡模式识别的两种典型方法。本文将这两种方法应用于具有多个DG的配电系统以识别振荡模式。通过将这些方法用于从4-DG孤岛配电系统模拟的振铃信号和环境信号,并与通过系统小信号模型的本征分析计算出的本征值进行比较,可以访问该方法对不同信号的适用性。结果表明,ARMA方法在这种情况下具有更好的适用性,而在振铃信号的情况下,Prony方法更易于实现。

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