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Adaptive artificial neural network based control strategy for shunt active power filter

机译:基于自适应人工神经网络的并联型有源电力滤波器控制策略

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Shunt active power filter (SAPF) is used to mitigate the current harmonics and to improve the power factor. In this paper, Adaptive linear-neuron (ADALINE) based phase lock loop (PLL) controlling scheme is presented for SAPF. ADALINE networks estimate the fundamental supply frequency. This scheme detects the phase information of the supply voltage and also used for parallel computing as it provides faster convergence. This algorithm is trained by least-mean squares (LMS) rule which offers low computational burden on the system. In this work, ADALINE is tuned using particle swarm optimization (PSO) technique to improve the dynamic performance of the system. The results obtained are compared with conventional PLL control technique and are found to be significantly better. The performance of the proposed ADALINE based control algorithm is validated using MATLAB/Simulink.
机译:并联有源功率滤波器(SAPF)用于减轻电流谐波并提高功率因数。本文提出了一种基于自适应线性神经元(ADALINE)的SAPF锁相环控制方案。 ADALINE网络估算基本电源频率。该方案检测电源电压的相位信息,并且由于其提供更快的收敛性,还用于并行计算。该算法由最小均方(LMS)规则训练,该规则对系统的计算负担较小。在这项工作中,使用粒子群优化(PSO)技术对ADALINE进行了调整,以改善系统的动态性能。将获得的结果与常规PLL控制技术进行比较,发现结果明显更好。使用MATLAB / Simulink验证了基于ADALINE的控制算法的性能。

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