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Quasi-oppositional Biogeography-based Optimization for Multi-objective Optimal Power Flow

机译:基于拟对位生物地理学的多目标最优潮流优化

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摘要

This article develops an efficient and reliable evolutionary programming algorithm, namely quasi-oppositional biogeography-based optimization, for solving optimal power flow problems. To improve the simulation results as well as the speed of convergence, opposition-based learning is incorporated in the original biogeography-based optimization algorithm. In order to investigate the performance, the proposed scheme is applied on optimal power flow problems of standard 26-bus, IEEE 118-bus, and IEEE 300-bus systems; and comparisons among mixed-integer particle swarm optimization, evolutionary programming, the genetic algorithm, original biogeography-based optimization, and quasi-oppositional biogeography-based optimization are presented. The results show that the new quasi-oppositional biogeography-based optimization algorithm outperforms the other techniques in terms of convergence speed and global search ability.
机译:本文开发了一种有效且可靠的进化规划算法,即基于拟反对生物地理学的优化算法,用于解决最优潮流问题。为了提高仿真结果和收敛速度,在原始的基于生物地理的优化算法中结合了基于对立的学习。为了研究其性能,该方案被应用于标准26总线,IEEE 118总线和IEEE 300总线系统的最优潮流问题。并给出了混合整数粒子群优化,进化规划,遗传算法,基于原始生物地理学的优化和基于准对立生物地理学的优化之间的比较。结果表明,基于拟对位生物地理学的优化算法在收敛速度和全局搜索能力方面均优于其他技术。

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