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A genetic algorithm and cell mapping hybrid method for multi-objective optimization problems

机译:一种用于多目标优化问题的遗传算法和细胞映射混合方法

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In this paper, a hybrid multi-objective optimization (MOO) algorithm consisting of an integration of the genetic algorithm (GA) and the simple cell mapping (SCM) is proposed. The GA converges quickly toward a solution neighborhood, but it takes a considerable amount of time to converge to the Pareto set. The SCM can find the global solution because it sweeps the whole space of interest. However, the computational effort grows exponentially with the dimension of the design space. In the hybrid algorithm, the GA is used initially to find a rough solution for the multi-objective optimization problem (MOP). Then, the SCM method takes over to find the non-dominated solutions in each region returned by the GA. It should be pointed out that one point near or on the Pareto set is enough for the SCM to recover the rest of the solution in the region. For comparison purpose, the hybrid algorithm, the GA and SCM methods are applied to solve some of benchmark problems with the Hausdorff distance, number of function evaluations and CPU time as performance metrics. The results show that the hybrid algorithm outperforms other methods with a modest computational time increase. Although the hybrid algorithm does not guarantee finding the global solution, it has much improved chance as demonstrated by one of the benchmark problems.
机译:本文提出了一种由遗传算法(GA)和简单小区映射(SCM)组成的混合多目标优化(MOO)算法。 GA会迅速收敛于解决方案邻域,但它需要相当多的时间来收敛到帕累托集。 SCM可以找到全球解决方案,因为它扫描整个感兴趣的空间。然而,计算工作与设计空间的尺寸呈指数级增长。在混合算法中,GA最初用于找到用于多目标优化问题的粗略解决方案(MOP)。然后,SCM方法接管了在GA返回的每个区域中找到非主导解决方案。应该指出的是,帕累托集附近或上的一个点足以让SCM恢复该区域的其余解决方案。对于比较目的,应用混合算法,GA和SCM方法来解决Hausdorff距离的一些基准问题,功能评估数和CPU时间作为性能指标。结果表明,混合算法优于具有适度计算时间的其他方法。虽然混合算法不保证找到全局解决方案,但它具有大大提高的机会,如其中一个基准问题所示。

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