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Islanding Detection in Microgrids including VSC-based Renewable/Distributed Energy Resources: An AI-based Technique

机译:微电网中的孤岛检测,包括基于VSC的可再生/分布式能源:一种基于AI的技术

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In this paper, a new islanding detection strategy is presented for low-voltage (LV) microgrid consisting of voltage-sourced converter (VSC)-based including renewable/distributed energy resources (RERs/DERs). The nonlinear mapping of relation between inputs and pattern recognition capability of adaptive neuro-fuzzy inference system (ANFIS) is the key concept of this strategy. By measuring point of common coupling (PCC), seven signals including, root-mean square (RMS) of voltage (RMS(V)), current (RMS(I)), and total harmonic distortion (THD) of voltage (THD(V) and current (THD(I)), frequency (f), and also active and reactive powers (P, Q) are passively monitored thus, while this method reduces non detection zones (NDZs), it does not a power quality. Simulations performed in MATLAB/SIMULINK environment proves the effectiveness, authenticity, selectivity, accuracy and precision of the proposed method with allowable impact on PQ according to UL1741 standard.
机译:在本文中,提出了一种新的孤岛检测策略,该策略适用于低压(LV)微电网,包括基于电压源转换器(VSC)的可再生/分布式能源(RERs / DERs)。自适应神经模糊推理系统(ANFIS)的输入与模式识别能力之间关系的非线性映射是该策略的关键概念。通过测量公共耦合点(PCC),可以得到七个信号,包括电压(RMS(V))的均方根(RMS),电流(RMS(I))和电压(THD( V)和电流(THD(I)),频率(f)以及有功功率和无功功率(P,Q)被被动监控,因此,尽管这种方法减少了非检测区域(NDZ),但它并不具有电能质量。在MATLAB / SIMULINK环境中进行的仿真证明了该方法的有效性,真实性,选择性,准确性和精确度,并且对UL1741标准的PQ产生了可允许的影响。

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