基于人工智能状态观测器的微电网智能被动孤岛检测方案

F. Mumtaz, Maqsood Ahmad Shah, H. H. Khan, H. A. Qureshi, Syed Junaid Iqbal, Asadullah
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引用次数: 0

摘要

微电网是一种现代电力系统,由于可再生能源在全球分布,接近最终用户而发展起来。然而,由于这些微电网的动态性,孤岛检测(ID)是一个主要问题。提出了一种新的微电网无源孤岛检测策略。最初,电压信号是在共耦合点(PCC)获得的。然后,将自适应卡尔曼滤波器(AKF)作为状态观测器应用于测量电压信号,对非基频谐波特征进行无噪声状态估计。此外,将递归神经网络(RNN)部署在提取的谐波特征上,用于计算基于状态观测器的智能谐波因子(SOBIHF)。最后,将SOBIHF与阈值水平进行比较,对孤岛状态和非孤岛状态进行分类。该方法已在MATLAB/Simulink®微电网系统中进行了测试。结果表明,该方案对孤岛事件的检测准确率达到99.8%,并减少了各种情况下的非检测区(NDZ)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Passive Islanding Detection Scheme For Microgrids Through a State Observer with Artificial Intelligence
Microgrids are modern power systems that have evolved because of the global distribution of renewable energy resources (RERs) close to ending users. However, due to the dynamic nature of these microgrids, islanding detection (ID) is a major concern. A novel passive islanding detection strategy for microgrids is introduced in this paper. Initially, the voltage signals are acquired at the point of common coupling (PCC). Then, an adaptive Kalman filter (AKF) is applied to the measured voltage signals as a state observer for noise-free state estimations of the non-fundamental harmonic features. In addition, the recurrent neural network (RNN) is deployed on the extracted harmonic features for the calculation of state observer-based intelligent harmonic factor (SOBIHF). Finally, the SOBIHF is compared with the threshold level to typify between islanding and non-islanding condition. The presented approach has been tested in MATLAB/Simulink® on the study microgrid system. The results depict that the presented scheme detects islanding events with 99.8% accuracy and reduces the non-detection zone (NDZ) in various cases.
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