改进遗传算法在电力系统损耗最小化中的应用

M. M. Kamal, T. Rahman, I. Musirin
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引用次数: 5

摘要

本文提出了改进遗传算法(IGA)在损耗最小化方案中最优无功规划中的应用。在本研究中,开发IGA引擎来实现无功规划的优化。将选择和稳态精英结合传统的锚点自旋技术引入传统的遗传算法中,开发了遗传算法。在每次探测中,为遗传算法和传统遗传算法提供相同的初始种群,以保证初始种群的一致性。在IEEE可靠性测试系统(IEEE- rts)上对所提出的IGA技术进行了测试,结果表明总损耗显著降低。将IGA与传统遗传算法的结果进行对比研究,结果表明IGA在准确率和迭代次数上都优于传统遗传算法。可以继续努力,进一步探索开发的IGA在解决电力系统其他优化问题中的灵活性和能力。
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Application of improved genetic algorithms for loss minimisation in power system
This paper presents the application of improved genetic algorithms (IGA) for optimal reactive power planning in loss minimisation scheme. In this study, IGA engine was developed to implement the optimisation of reactive power planning. The selection and steady state elitism combined with the conventional anchor spin techniques are incorporated into the traditional genetic algorithms (GA) for the development of the IGA. In each probing, identical initial population is supplied to the mechanism of IGA and traditional GA in order to have consistency during the initial population. The proposed IGA technique was tested on the IEEE reliability test system (IEEE-RTS), and revealed that the total loss has been significantly reduced. Comparative studies on the results obtained from the IGA with respect to the traditional GA, indicating that IGA outperformed the traditional GA in terms of accuracy and number of iteration. Consecutive efforts can be made to further explore the flexibility and capability of the developed IGA to be implemented in solving other optimisation problems in power system.
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