结合事实的最优潮流的准对立教-学优化

S. Dutta, P. Roy, Debashis Nandi
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引用次数: 4

摘要

本文介绍了基于准对抗教-学的优化QOTLBO算法,并成功地应用于求解包含柔性交流输电系统FACTS的电力系统中最优潮流OPF问题。原始的基于教-学的优化TLBO的主要缺点是在有限的迭代周期内给出局部最优解,而不是近全局最优解。为了提高TLBO的收敛速度和仿真效果,本文引入了基于对抗的学习OBL概念。利用MATLAB对该方法进行了仿真,并在改进的IEEE 30总线系统上进行了四种不同情况下的测试。仿真结果表明,本文提出的QOTLBO算法比传统BBO算法和基于生物地理学的混合优化HDE-BBO算法更有效、更准确。该方法在寻找FACTS器件解决OPF问题的最优参数设置方面具有较好的解质量。仿真研究还表明,使用FACTS器件可以提高供电质量,从而为电力系统问题提供了一种具有经济吸引力的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quasi Oppositional Teaching-Learning based Optimization for Optimal Power Flow Incorporating FACTS
In this paper, quasi-oppositional teaching-learning based optimization QOTLBO is introduced and successfully applied for solving an optimal power flow OPF problem in power system incorporating flexible AC transmission systems FACTS. The main drawback of the original teaching-learning based optimization TLBO is that it gives a local optimal solution rather than the near global optimal one in limited iteration cycles. In this paper, opposition based learning OBL concept is introduced to improve the convergence speed and simulation results of TLBO. The effectiveness of the proposed method implemented with MATLAB and tested on modified IEEE 30-bus system in four different cases. The simulation results show the effectiveness and accuracy of the proposed QOTLBO algorithm over other methods like conventional BBO and hybrid biogeography-based optimization HDE-BBO. This method gives better solution quality in finding the optimal parameter settings for FACTS devices to solve OPF problems. The simulation study also shows that using FACTS devices, it is possible to improve the quality of the electric power supply thereby providing an economically attractive solution to power system problems.
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