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Multi-objective optimal power flow using quasi-oppositional teaching learning based optimization

机译:基于准相对论学习优化的多目标最优潮流

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摘要

This paper describes teaching learning based optimization (TLBO) algorithm to solve multi-objective optimal power flow (MOOPF) problems while satisfying various operational constraints. To improve the convergence speed and quality of solution, quasi-oppositional based learning (QOBL) is incorporated in original TLBO algorithm. The proposed quasi-oppositional teaching learning based optimization (QOTLBO) approach is implemented on IEEE 30-bus system, Indian utility 62-bus system and IEEE 118-bus system to solve four different single objectives, namely fuel cost minimization, system power loss minimization and voltage stability index minimization and emission minimization; three bi-objectives optimization namely minimization of fuel cost and transmission loss; minimization of fuel cost and L-index and minimization of fuel cost and emission and one tri-objective optimization namely fuel cost, minimization of transmission losses and improvement of voltage stability simultaneously. In this article, the results obtained using the QOTLBO algorithm, is comparable with those of TLBO and other algorithms reported in the literature. The numerical results demonstrate the capabilities of the proposed approach to generate true and well-distributed Pareto optimal non-dominated solutions of the multi-objective OPF problem. The simulation results also show that the proposed approach produces better quality of the individual as well as compromising solutions than other algorithms.
机译:本文介绍了基于教学的学习优化(TLBO)算法,以解决多目标最优潮流(MOOPF)问题,同时满足各种操作约束。为了提高收敛速度和解决方案的质量,在原始TLBO算法中引入了基于准相对论的学习(QOBL)。在IEEE 30总线系统,印度公用事业62总线系统和IEEE 118总线系统上实现了拟对立的基于教学学习的优化(QOTLBO)方法,以解决四个不同的单一目标,即最小化燃料成本,最小化系统功耗电压稳定指数最小化和发射最小化;三个双目标优化,即最小化燃料成本和传输损失;燃料成本和L指数的最小化,燃料成本和排放的最小化,以及燃料成本,传输损失的最小化和电压稳定性的同时提高的三目标优化。在本文中,使用QOTLBO算法获得的结果与TLBO和文献中报道的其他算法的结果可比。数值结果证明了该方法能够生成多目标OPF问题的真实且分布均匀的Pareto最优非支配解。仿真结果还表明,与其他算法相比,所提出的方法可产生更好的个体质量,并且折衷解决方案。

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