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Comparative study of Pareto optimal multi objective cuckoo search algorithm and multi objective particle swarm optimization for power loss minimization incorporating UPFC

机译:Pareto最优多目标杜鹃搜索算法的比较研究和多目标粒子群优化对UPFC的功率损耗最小化

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摘要

The Flexible AC Transmission System (FACTS) devices are being commissioned in electrical power systems across the globe owing to the vast array of benefits they offer. The optimal performance of the FACTS devices can be harnessed only if they are installed at a strategic location. In this paper, the authors suggest the merit of multiobjective cuckoo search (MOCS) algorithm in mitigation of transmission losses by strategically installing unified power flower controller (UPFC) at an optimal location. Active power loss and reactive power loss reduction is the multiobjective optimization considered for the study. The Pareto-optimal technique is employed to extract the Pareto-optimal solution for the multiobjective problem considered. The Fuzzy logic method is utilized to yield the best-compromise solution from the pool of Pareto-optimal solution. The proposed approach is tested on a standard IEEE 30 bus test system. Furthermore, the efficacy of the MOCS algorithm is demonstrated by comparing the results with that of multiobjective particle swarm optimization (MOPSO).
机译:由于它们提供的大量优势,灵活的AC传输系统(事实)设备正在全球的电力系统中进行委托。如果它们安装在战略位置,则可以利用事实设备的最佳性能。在本文中,作者提出了在最佳位置战略性地安装统一的电源花控制器(UPFC)减轻传输损耗时的多目标杜鹃搜索(MOC)算法的优点。有源功率损耗和无功功率损耗减少是研究的多目标优化。用于提取考虑的多目标问题的ParoTo-Optimal技术以提取帕累托最佳解决方案。模糊逻辑方法用于从帕累托 - 最佳解决方案池中产生最佳折衷的解决方案。在标准IEEE 30总线测试系统上测试了所提出的方法。此外,通过将结果与多目标粒子群优化(MOPSO)的结果进行比较来证明MOCS算法的功效。

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