The dynamics of a power system with large penetration of renewable energy resources are becoming more nonlinear due to the intermittence of these resources and the switching of their power electronic devices. Therefore, it is crucial to accurately identify the dynamical modes of oscillation of such a power system when it is subject to disturbances to initiate appropriate preventive or corrective control actions. In this paper, we propose a high-order blind source identification (HOBI) algorithm based on the copula statistic to address these non-linear dynamics in modal analysis. The method combined with Hilbert transform (HOBI-HT) and iteration procedure (HOBMI) can identify all the modes as well as the model order from the observation signals obtained from the number of channels as low as one. We access the performance of the proposed method on numerical simulation signals and recorded data from a simulation of time domain analysis on the classical 11-Bus 4-Machine test system. Our simulation results outperform the state-of-the-art method in accuracy and effectiveness.
翻译:可再生能源大量渗透的电力系统的动态正在变得更加非线性,因为这些资源的间歇性以及电动电子装置的转换。因此,在这种电力系统受到干扰以启动适当的预防或纠正控制行动时,必须准确确定这种电源系统的动态振荡模式。在本文件中,我们建议根据对合比统计,采用高阶盲源识别算法,在模型分析中处理这些非线性动态。与HoBI-HT和循环程序相结合的方法可以确定所有模式以及从低频道获得的观测信号的模型顺序。我们利用了数字模拟信号的拟议方法的性能,并记录了经典11-Bus 4-Machine测试系统的时间域分析模拟数据。我们的模拟结果在准确性和有效性方面超越了最先进的方法。