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Digital Differentiator-Based Passivity Enhancement Scheme for High-Frequency Resonance Suppression in MMC-HVDC System

Yiqi Liu, Jiayi Liu, Yucheng Wu, Zheng Zhao,Shangfu Teng,Zhenjie Li,Mingfei Ban,Feng Zhou

Applied Energy(2024)

Northeast Forestry Univ | State Grid Econ & Technol Res Inst | Changsha Univ

Cited 0|Views11
Abstract
Inherent control delays and changeable grid operational conditions pose significant challenges to the stability of the Modular multilevel converter-based high voltage direct current (MMC-HVDC) system, inducing the risk of high-frequency resonances (HFR). This paper proposes a passivity enhancement based on the second-order digital differentiator (DD) and lead-lag compensator, ensuring reliable and robust HFR suppression performance even under the resonance frequency drift and fault earthing scenes. First, the passivity-based stability analysis is provided based on the system output impedance model, elucidating the HFR mechanisms and frequency drift problems. Second, the proposed passivity enhancement scheme's control structure and impedance reshaping principle are analyzed to verify resonance suppression ability. Third, the control parameters tuning process and direct realization of differentiator are detailed, reinforcing the stable margin and harmonic rejection ability. Finally, several case studies and simulation results are provided to validate the effectiveness of the proposed passivity-based HFR suppression scheme.
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Key words
Modular multilevel converter (MMC),Digital differentiator,Passivity,High-frequency resonances (HFR)
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要点】:本文提出了一种基于二阶数字微分器(DD)和领先-滞后补偿器的无源性增强方案,以抑制模块化多电平转换器高压直流(MMC-HVDC)系统中的高频谐振,确保在谐振频率漂移和故障接地情况下系统的稳定性和鲁棒性。

方法】:研究首先基于系统输出阻抗模型进行无源性稳定性分析,揭示了高频谐振的机制和频率漂移问题;接着分析了所提无源性增强方案的控制结构及其阻抗重塑原理,以验证谐振抑制能力;最后详细讨论了控制参数的调整过程和微分器的直接实现,增强了系统的稳定裕度和谐波抑制能力。

实验】:通过多个案例研究和仿真结果验证了所提无源性增强的高频谐振抑制方案的有效性,但具体数据集名称未在文中提及。