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Particle Swarm Optimization and Bacterial Foraging Optimization Techniques for Optimal Current Harmonic Mitigation by Employing Active Power Filter

机译:粒子群优化和细菌觅食优化技术通过采用有源电力滤波器优化电流谐波抑制

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Conventional mathematical modeling-based approaches are incompetent to solve the electrical power quality problems, as the power system network represents highly nonlinear, nonstationary, complex system that involves large number of inequality constraints. In order to overcome the various difficulties encountered in power system such as harmonic current, unbalanced source current, reactive power burden, active power filter (APF) emerged as a potential solution. This paper proposes the implementation of particle swarm optimization (PSO) and bacterial foraging optimization (BFO) algorithms which are intended for optimal harmonic compensation by minimizing the undesirable losses occurring inside the APF itself. The efficiency and effectiveness of the implementation of two approaches are compared for two different conditions of supply. The total harmonic distortion (THD) in the source current which is a measure of APF performance is reduced drastically to nearly 1% by employing BFO. The results demonstrate that BFO outperforms the conventional and PSO-based approaches by ensuring excellent functionality of APF and quick prevail over harmonics in the source current even under unbalanced supply.
机译:传统的基于数学建模的方法无法解决电力质量问题,因为电力系统网络表示高度非线性,不稳定的复杂系统,其中涉及大量不平等约束。为了克服电力系统中遇到的各种困难,例如谐波电流,不平衡的电源电流,无功功率负担,有功功率滤波器(APF)成为了潜在的解决方案。本文提出了粒子群优化(PSO)和细菌觅食优化(BFO)算法的实现,这些算法旨在通过最小化APF本身内部发生的不良损耗来实现最佳谐波补偿。针对两种不同的供应条件,比较了两种方法的实施效率和有效性。通过使用BFO,可以将源电流中的总谐波失真(THD)(可测量APF性能的指标)大幅降低至近1%。结果表明,即使在电源不平衡的情况下,BFO仍可确保APF的出色功能,并迅速克服电源电流中的谐波,从而优于传统方法和基于PSO的方法。

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