Accurate parameter identification method for coupled sub/super-synchronous oscillations for high penetration wind power systems.

ISA transactions Pub Date : 2024-07-01 Epub Date: 2024-05-13 DOI:10.1016/j.isatra.2024.05.001
Dongsheng Cai, Feiyu Sun, Linlin Li, Weihao Hu, Qi Huang
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Abstract

As the penetration of renewable energy increases to a large scale and power electronic devices become widespread, power systems are becoming prone to synchronous oscillations (SO). This event has a major impact on the stability of the power grid. The recent research has been mainly concentrated on identifying the parameters of sub-synchronous oscillation. Sub/Super synchronous oscillations (Sub/Sup-SO) simultaneously occur, increasing the difficulty in accurately identify the parameters of SO. This work presents a novel method for parameter identification that effectively handles the Sub/Sup-SO components by utilizing the Rife-Vincent window and discrete Fourier transform (DFT) simultaneously. To mitigate the impact of spectral leakage and the fence effect of DFT, we integrate the tri-spectral interpolation algorithm with the Rife-Vincent window. We use the instantaneous data of the phasor measurement unit (PMU) to identify Sub/Sup-SO-related parameters (Sub/Sup-SO damping ratio, frequency, amplitude and phase). First, the spectrum of the Sub/Sup-SO signals is analyzed after incorporating the Rife-Vincent window, and the characteristics of the Sub/Sup-SO signal are determined. Then, the signal spectrum is identified using a three-point interpolation algorithm, and the damping ratio, amplitude, frequency, and phase of the Sub/Sup-SO signals are obtained. In addition, we consider the identification accuracy of the algorithm under various complex conditions, such as the effect of Sub/Sup-SO parameter variations on parameter identification in the presence of a non-nominal frequency and noise. The proposed algorithm accurately identifies the parameters of multiple Sub/Sup-SO components and two Sub-SO components that are in close proximity. Testing with synthetic and real data demonstrates that the proposed algorithm outperforms existing methods in terms of identification accuracy, identification bandwidth, and adaptability.

高渗透率风力发电系统亚/超同步耦合振荡的精确参数识别方法。
随着可再生能源的大规模普及和电力电子设备的广泛应用,电力系统越来越容易发生同步振荡(SO)。这一事件对电网的稳定性有重大影响。近期的研究主要集中在确定亚同步振荡的参数上。亚/超同步振荡(Sub/Super-SO)同时发生,增加了准确识别亚同步振荡参数的难度。本研究提出了一种新的参数识别方法,通过同时利用 Rife-Vincent 窗口和离散傅立叶变换(DFT),有效处理亚/超同步振荡成分。为了减轻频谱泄漏的影响和 DFT 的栅栏效应,我们将三谱插值算法与 Rife-Vincent 窗整合在一起。我们利用相位测量单元(PMU)的瞬时数据来识别 Sub/Sup-SO 相关参数(Sub/Sup-SO 阻尼比、频率、振幅和相位)。首先,结合 Rife-Vincent 窗口分析 Sub/Sup-SO 信号的频谱,确定 Sub/Sup-SO 信号的特征。然后,使用三点插值算法识别信号频谱,并获得 Sub/Sup-SO 信号的阻尼比、振幅、频率和相位。此外,我们还考虑了算法在各种复杂条件下的识别精度,如在非标称频率和噪声存在的情况下,Sub/Sup-SO 参数变化对参数识别的影响。所提出的算法能准确识别多个 Sub/Sup-SO 元件和两个相邻 Sub-SO 元件的参数。利用合成数据和真实数据进行的测试表明,所提出的算法在识别精度、识别带宽和适应性方面都优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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