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Multiobjective Parallel Chaos Optimization Algorithm with Crossover and Merging Operation

机译:具有交叉合并操作的多目标并行混沌优化算法

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摘要

Chaos optimization algorithm (COA) usually utilizes chaotic maps to generate the pseudorandom numbers mapped as the decision variables for global optimization problems. Recently, COA has been applied to many single objective optimization problems and simulations results have demonstrated its effectiveness. In this paper, a novel parallel chaos optimization algorithm (PCOA) will be proposed for multiobjective optimization problems (MOOPs). As an improvement to COA, the PCOA is a kind of population-based optimization algorithm which not only detracts the sensitivity of initial values but also adjusts itself suitable for MOOPs. In the proposed PCOA, crossover and merging operation will be applied to exchange information between parallel solutions and produce new potential solutions, which can enhance the global and fast search ability of the proposed algorithm. To test the performance of the PCOA, it is simulated with several benchmark functions for MOOPs and mixed H-2/H-infinity controller design. The simulation results show that PCOA is an alternative approach for MOOPs.
机译:混沌优化算法(COA)通常利用混沌映射来生成伪随机数,映射为全局优化问题的决策变量。近年来,COA已应用于许多单目标优化问题,仿真结果证明了其有效性。该文针对多目标优化问题(MOOPs)提出了一种新的并行混沌优化算法(PCOA)。PCOA是一种基于群体的优化算法,作为COA的改进,不仅降低了初始值的灵敏度,而且可以自行调整以适应MOOPs。在所提出的PCOA中,将应用交叉和合并操作来交换并行解之间的信息并产生新的潜在解,从而增强所提算法的全局和快速搜索能力。为了测试PCOA的性能,它使用MOOP和混合H-2/H-infinity控制器设计的多个基准测试函数进行仿真。仿真结果表明,PCOA是MOOP的替代方法。

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