Multi-Objective Reactive Power Optimization Based on Improved Artificial Searching Swarm Algorithm

Chaohun Liu, Tanggong Chen
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引用次数: 1

Abstract

In order to solve the problem of multi-objective reactive power optimization, firstly the defects of current algorithms are analyzed, then an improved chaos artificial searching swarm algorithm based on artificial search is proposed. The optimization performance of the algorithm is improved by introducing chaos theory and the dynamic improvement of algorithm step. This algorithm was tested with classical test functions. The results show that the optimization ability of the artificial search swarm algorithm is significantly improved. In the MATLAB 2014b environment, ICASSA is used to optimize the simulation of the IEEE14 and IEEE30 buses of the standard power system. Comparing the performance of ICASSA, IPSO and IDE, the results show the ICASSA has better search ability. Finally, the reactive power optimization of a real power network is simulated, and the results show that the ICASSA algorithm has potential application value.
基于改进人工搜索群算法的多目标无功优化
为了解决多目标无功优化问题,首先分析了现有算法的缺陷,提出了一种基于人工搜索的改进混沌人工搜索群算法。通过引入混沌理论和算法步长的动态改进,提高了算法的优化性能。用经典测试函数对该算法进行了测试。结果表明,人工搜索群算法的优化能力得到了显著提高。在MATLAB 2014b环境下,利用ICASSA对标准电力系统的IEEE14和IEEE30总线进行了优化仿真。比较了ICASSA、IPSO和IDE的性能,结果表明ICASSA具有更好的搜索能力。最后,对一个实际电网的无功优化进行了仿真,结果表明ICASSA算法具有潜在的应用价值。
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