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Comparative study of bat flower pollination optimization algorithms in highly stressed large power system

机译:高负荷大型电力系统蝙蝠花授粉优化算法的比较研究。

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Optimal power flow is an important non-linear optimization task in power systems. In this process, the total power demand is distributed amongst the generating units such that each unit satisfies its generation limit constraints and the cost of power production is minimized. This paper presents a comparative study of new meta-heuristic optimization techniques namely bat and flower pollination algorithm for the optimal solution of optimal power flow problem such as minimizing the fuel cost of a thermal power plant. In this paper PSO is also taken just as a reference for measure the performance of the above two techniques. The numerical results clearly show that the bat algorithm gives better results than flower pollination algorithm in terms of fuel cost value and time required to reach global best solution. In order to illustrate the effectiveness of the proposed algorithm, it has been tested on highly stressed modified IEEE 300-bus test system.
机译:最优潮流是电力系统中重要的非线性优化任务。在该过程中,总功率需求被分配在发电单元之间,从而每个单元满足其发电极限约束并且发电成本最小化。本文提出了一种新的元启发式优化技术的比较研究,即蝙蝠和花朵授粉算法,用于最优潮流问题的最优解决方案,例如使火力发电厂的燃料成本最小化。本文还以PSO作为衡量上述两种技术性能的参考。数值结果清楚地表明,蝙蝠算法在实现全局最佳解所需的燃料成本值和时间方面比花授粉算法提供更好的结果。为了说明所提算法的有效性,已在压力很大的改进型IEEE 300总线测试系统上对其进行了测试。

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