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Experimental Analysis on FireFly and Grey Wolf Optimization for Phasor Estimation in PMU

机译:萤火虫和灰狼优化对PMU相平估计的实验分析

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Phasor Measurement Unit (PMU) determines the current/voltage signal in a power network. The PMU's functions are gathered by means of Phasor Estimation Method (PEM). Therefore, PEM has a lot of significance in modeling diverse security systems. This paper intends to develop a phasor estimation model in PMU exploiting two renowned meta-heuristic algorithms called FireFly (FF), and Grey Wolf Optimization (GWO). The optimization problem solving using these algorithms to estimate phasors of an Electric Power System (EPS) is depicted on concerning a sinusoidal model for the input voltage signal. The electrical signal can be investigated by considering a sliding window and objective is to lessen the error among the predicted and actual signal. Accordingly, the magnitude and phase of the signal are optimized by FF, and GWO algorithms in such a way that overall Total Vector Error (TVE) could be reduced. Here, the implemented model is carried out in IEEE 30 benchmark test bus systems, and the analysis is held by GWO and FF algorithms.
机译:相量测量单元(PMU)确定在电力网络的电流/电压信号。该PMU的功能是由相量估计方法(PEM)来收集。因此,PEM在造型多样的安全系统有很多的意义。本文拟开发PMU相量估计模型开拓两个方面著名的启发式算法称为萤火虫(FF),与灰太狼优化(GWO)。优化问题使用这些算法来估算电力系统(EPS)的相量求解描述关于对输入电压信号正弦模型。该电信号可以通过考虑一个滑动窗口进行调查和目标是减少预测的和实际信号之间的误差。因此,信号的幅值和相位是由FF优化,并且以这样的方式GWO算法整体总向量误差(TVE)可以减少。在此,实现模型在IEEE 30的基准测试的总线系统中进行,所述分析通过GWO和FF算法保持。

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