A Fast Predictive Reference Current Generation Algorithm for Shunt APF in DER Integrated Network

S. Patra, S. Khadem, M. Basu, H. Komurcugil, S. Bayhan
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Abstract

In order to improve the compensating capabilities of shunt active power filters (APF) coupled with renewable energy integrated microgrid network, this research offers a Recursive Least Square Bacterial Foraging optimization (RLSBFO) based estimation approach for the reference current generation. The suggested approach can improve the compensation of current harmonics in a selective/collective (global) manner. Furthermore, the RLS-BFO-based reference generation approach eliminates the necessity for a PLL based synchronization circuit, which helps to reduce computation latency. The instantaneous active and reactive power theory (PQ theory) and the Kalman filter-based estimation approach are also implemented and compared to assess the suggested controller’s effectiveness. The MATLAB based simulation results, followed by the quantitative analysis demonstrate the efficacy of the estimation algorithm.
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DER集成网络中并联APF的快速预测参考电流生成算法
为了提高并联有源电力滤波器(APF)与可再生能源集成微电网的补偿能力,提出了一种基于递推最小二乘细菌觅食优化(RLSBFO)的参考电流估计方法。所提出的方法可以以选择性/集体(全局)的方式改善电流谐波的补偿。此外,基于rls - bfo的参考生成方法消除了基于锁相环的同步电路的必要性,这有助于减少计算延迟。采用瞬时有功无功理论(PQ理论)和基于卡尔曼滤波的估计方法,对所提控制器的有效性进行了比较。基于MATLAB的仿真结果,随后进行了定量分析,验证了该估计算法的有效性。
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