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Optimal reactive power dispatch using quasi-oppositional teaching learning based optimization

机译:基于准反对派学习优化的最优无功分配

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摘要

This paper presents a newly developed teaching learning based optimization (HBO) algorithm to solve multi-objective optimal reactive power dispatch (ORPD) problem by minimizing real power loss, voltage deviation and voltage stability index. To accelerate the convergence speed and to improve solution quality quasi-opposition based learning (QOBL) concept is incorporated in original TLBO algorithm. The proposed TLBO and quasi-oppositional TLBO (QOTLBO) approaches are implemented on standard IEEE 30-bus and IEEE 118-bus test systems. Results demonstrate superiority in terms of solution quality of the proposed QOTLBO approach over original TLBO and other optimization techniques and confirm its potential to solve the ORPD problem.
机译:本文提出了一种新开发的基于教学学习的优化(HBO)算法,该算法可通过最大程度地减少实际功率损耗,电压偏差和电压稳定性指数来解决多目标最优无功功率分配(ORPD)问题。为了加快收敛速度​​并提高解决方案质量,在原始TLBO算法中引入了基于准对位的学习(QOBL)概念。提议的TLBO和准反对的TLBO(QOTLBO)方法是在标准IEEE 30总线和IEEE 118总线测试系统上实现的。结果证明了所提出的QOTLBO方法在解决方案质量方面优于原始TLBO和其他优化技术,并证实了其解决ORPD问题的潜力。

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