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Ambient-based Oscillation Mode Analysis via Dynamic Ensemble ITD and ARMA Model for Converter-based FFR Application

机译:基于环境的基于环境的振荡模式分析和基于转换器的FFR应用程序的动态集合ITD和ARMA模型

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The accuracy of oscillation mode information become an essential reference to large-scale dynamics power system with a high proportion integration of converters. However, the difference in the data trend of the measurement unit will affect the recognition accuracy of the oscillation. To address this problem, this paper first proposes a Dynamic Ensemble Intrinsic Time-Scale Decomposition (DEITD) to remove the data trend. It improves the fitting effect of trends by optimizing the modal aliasing and number of decomposition. Next, the Yule-Walker based Auto Regressive Moving Average (ARMA) technique is utilized to estimate the low frequency oscillation modes. Multiple experiments on simulation and actual signals manifest that the proposed framework has better performance and is more real-time than some conventional methods, which can be used as the control signal of the converter-based fast frequency reserve to enhance the system stability.
机译:振荡模式信息的准确性成为大规模动力系统具有高比例转换器的大规模动力系统的基本参考。但是,测量单元的数据趋势的差异将影响振荡的识别准确性。为了解决这个问题,本文首先提出了一种动态的集合内在时间尺度分解(DEITD)来消除数据趋势。它通过优化模态混叠和分解次数来提高趋势的拟合效应。接下来,利用基于Yule-Walker的自动回归移动平均(ARMA)技术来估计低频振荡模式。多个关于模拟和实际信号的实验表明,所提出的框架具有更好的性能,并且比某种传统方法更实时,可以用作基于转换器的快速频率储备的控制信号,以提高系统稳定性。

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