Osama Adham, El-Hamalawy Abdallah F, Ammar Mohammed E, AbdelAty Amr M, Zeineldin Hatem H, El-Fouly Tarek H M, El-Saadany Ehab F
Advanced Power and Energy Center (APEC), Electrical Engineering Department, Khalifa University, Abu Dhabi, UAE.
Electrical Power Engineering Department, Faculty of Engineering, Cairo University, Cairo, Egypt.
Sci Rep. 2025 Jan 13;15(1):1876. doi: 10.1038/s41598-024-84675-8.
Although detailed analytical models for droop-controlled microgrids are available, they are computationally complex and do not consider real-time variations in microgrid parameters and operating conditions. This paper proposes Kurtosis-Estimation of Signal Parameters via Rotational Invariance Technique (ESPRIT) to identify the dominant modes in droop-controlled inverter-based microgrids (IBMGs) using local real-time measurements. In the proposed approach, a short-duration small disturbance is applied to the selected DG's active power droop gain, and then, the system's dominant modes are estimated from its local measurements. Additionally, a kurtosis measure is proposed as a quick measure to assess the estimation signal's characteristics and evaluate the presence and prominence of significant modes within the signal. The effectiveness of the developed approach is validated via MATLAB/SIMULINK simulations. Four case studies were conducted to verify the robustness of the proposed algorithm as follows: under different values of active power droop gains, several variations of lines' X/R ratios, various levels of noise, and under large load changes and topological disturbances. Besides, a controller-in-the-loop (CIL) experiment was conducted using OPAL-RT to provide a real-time validation of the results. The modes obtained from the proposed algorithm are validated against the analytically derived modes and the estimation accuracy is compared to the recent methods: Prony, Matrix Pencil, and Subspace Identification techniques. Results show higher estimation accuracy for the proposed approach with a robust performance in noisy environments, across varying load conditions, and under different network configurations.
虽然已有用于下垂控制微电网的详细分析模型,但这些模型计算复杂,且未考虑微电网参数和运行条件的实时变化。本文提出通过旋转不变技术估计信号参数的峰度(ESPRIT),利用本地实时测量来识别基于下垂控制的逆变器型微电网(IBMG)中的主导模式。在所提出的方法中,对选定分布式电源(DG)的有功功率下垂增益施加一个短持续时间的小扰动,然后根据其本地测量估计系统的主导模式。此外,还提出了一种峰度测量方法,作为评估估计信号特征以及评估信号中显著模式的存在和突出程度的快速手段。通过MATLAB/SIMULINK仿真验证了所开发方法的有效性。进行了四个案例研究以验证所提算法的鲁棒性,具体如下:在有功功率下垂增益的不同值、线路X/R比的几种变化、不同噪声水平以及大负载变化和拓扑扰动的情况下。此外,使用OPAL-RT进行了控制器在环(CIL)实验,以对结果进行实时验证。将所提算法得到的模式与解析推导的模式进行验证,并将估计精度与最近的方法(Prony方法、矩阵束方法和子空间辨识技术)进行比较。结果表明,所提方法具有更高的估计精度,在噪声环境、不同负载条件和不同网络配置下均具有鲁棒性能。