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Solving Constrained Global Optimization Problems by Using Hybrid Evolutionary Computing and Artificial Life Approaches

机译:通过混合进化计算和人工生命方法解决约束全局优化问题

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摘要

This work presents a hybrid real-coded genetic algorithm with a particle swarm optimization (RGA-PSO) algorithm and a hybrid artificial immune algorithm with a PSO (AIA-PSO) algorithm for solving 13 constrained global optimization (CGO) problems, including six nonlinear programming and seven generalized polynomial programming optimization problems. External RGA and AIA approaches are used to optimize the constriction coefficient, cognitive parameter, social parameter, penalty parameter, and mutation probability of an internal PSO algorithm. CGO problems are then solved using the internal PSO algorithm. The performances of the proposed RGA-PSO and AIA-PSO algorithms are evaluated using 13 CGO problems. Moreover, numerical results obtained using the proposed RGA-PSO and AIA-PSO algorithms are compared with those obtained using published individual GA and AIA approaches. Experimental results indicate that the proposed RGA-PSO and AIA-PSO algorithms converge to a global optimum solution to a CGO problem. Furthermore, the optimum parameter settings of the internal PSO algorithm can be obtained using the external RGA and AIA approaches. Also, the proposed RGA-PSO and AIA-PSO algorithms outperform some published individual GA and AIA approaches. Therefore, the proposed RGA-PSO and AIA-PSO algorithms are highly promising stochastic global optimization methods for solving CGO problems.
机译:这项工作提出了一种具有粒子群优化(RGA-PSO)算法的混合实编码遗传算法和具有PSO(AIA-PSO)算法的混合人工免疫算法,用于解决13个约束全局优化(CGO)问题,包括六个非线性规划和七个广义多项式规划优化问题。外部RGA和AIA方法用于优化内部PSO算法的压缩系数,认知参数,社交参数,惩罚参数和突变概率。然后使用内部PSO算法解决CGO问题。使用13个CGO问题评估了所提出的RGA-PSO和AIA-PSO算法的性能。此外,将使用建议的RGA-PSO和AIA-PSO算法获得的数值结果与使用已发布的单独GA和AIA方法获得的数值结果进行比较。实验结果表明,所提出的RGA-PSO和AIA-PSO算法收敛于CGO问题的全局最优解。此外,可以使用外部RGA和AIA方法获得内部PSO算法的最佳参数设置。同样,提出的RGA-PSO和AIA-PSO算法优于某些已发布的单独GA和AIA方法。因此,提出的RGA-PSO和AIA-PSO算法是解决CGO问题的非常有前途的随机全局优化方法。

著录项

  • 来源
    《Mathematical Problems in Engineering 》 |2012年第8期| 841410.1-841410.36| 共36页
  • 作者

    Jui-Yu Wu;

  • 作者单位

    Department of Business Administration, Lunghwa University of Science and Technology, No. 300, Section 1, Wanshou Road, Guishan, Taoyuan County 333, Taiwan;

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  • 正文语种 eng
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