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Immune optimization algorithm for constrained nonlinear multiobjective optimization problems

机译:约束非线性多目标优化问题的免疫优化算法

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摘要

A new dynamical immune optimization algorithm for constrained nonlinear multiobjective optimization problems over continuous domains is proposed based on both the concept of Pareto optimality and simple interactive metaphors between antibody population and multiple antigens as well as ideas of T cell regulation. The focus of design is concentrated on constructing one constraint-handling technique associated with uniform design reported and designing one antibody evolution mechanism through utilizing simplified metaphors of humoral immune response of the immune system. The former is to provide an alternative feasible solution set for dealing with constraints and infeasible solutions created during the execution of the algorithm, while helping for rapidly finding Pareto-optimal solutions; the latter generates multiple excellent feasible solutions so that the desired solutions will be gradually obtained. Theoretically, its weak convergence is proven by using Markov theory, while the experimental results demonstrate its strong convergence. Through application to difficult test problems, comparative results illustrate it is potential for the algorithm to cope with high dimensional complex optimization problems with multiple constraints.
机译:基于帕累托最优概念和抗体种群与多种抗原之间的简单相互作用隐喻以及T细胞调控的思想,提出了一种连续域约束非线性多目标优化问题的动态免疫优化算法。设计的重点集中在构建一种与报道的统一设计相关的约束处理技术,以及通过利用免疫系统的体液免疫反应的简化隐喻来设计一种抗体进化机制。前者是为解决在算法执行过程中产生的约束和不可行解决方案而提供的另一种可行解决方案集,同时有助于快速找到帕累托最优解。后者产生了多种出色的可行解决方案,因此将逐渐获得所需的解决方案。理论上,利用马尔可夫理论证明了其弱收敛性,而实验结果证明了其强收敛性。通过将其应用于困难的测试问题,比较结果表明该算法有可能解决具有多个约束的高维复杂优化问题。

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