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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Cooperative co-evolution with sensitivity analysis-based budget assignment strategy for large-scale global optimization
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Cooperative co-evolution with sensitivity analysis-based budget assignment strategy for large-scale global optimization

机译:基于敏感性分析的预算分配策略的合作共同演变,用于大规模全球优化

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Cooperative co-evolution has proven to be a successful approach for solving large-scale global optimization (LSGO) problems. These algorithms decompose the LSGO problems into several smaller subcomponents using a decomposition method, and each subcomponent of the variables is optimized by a certain optimizer. They use a simple technique, the round-robin method, to equally assign the computational time. Since the standard cooperative co-evolution algorithms allocate the computational budget equally, the performance of these algorithms deteriorates for solving LSGO problems with subcomponents by various effects on the objective function. For this reason, it could be very useful to detect the subcomponents' effects on the objective function in LSGO problems. Sensitivity analysis methods can be employed to identify the most significant variables of a model. In this paper, we propose a cooperative co-evolution algorithm with a sensitivity analysis-based budget assignment method (SACC), which can allocate the computational time among all subcomponents based on their different effects on the objective function, accordingly. SACC is benchmarked on imbalanced LSGO problems. Simulation results confirm that SACC obtains a promising performance on the majority of the imbalanced LSGO benchmark functions.
机译:已证明合作共同发展是解决大规模全球优化(LSGO)问题的成功方法。这些算法使用分解方法将LSGO问题分解为几个较小的子组件,并且通过特定的优化器优化了变量的每个子组件。他们使用简单的技术,循环方法,同样分配计算时间。由于标准协同协作算法同样地分配计算预算,因此这些算法的性能恶化了通过各种影响对象函数的各种效果来解决与子组件的LSGO问题。因此,检测LSGO问题中的子组件对客观函数的影响非常有用。可以采用灵敏度分析方法来识别模型最重要的变量。在本文中,我们提出了一种具有基于灵敏度分析的预算分配方法(SACC)的合作共同演进算法,其可以基于它们对目标函数的不同影响来分配所有子组件之间的计算时间。 SACC是基于Imbalanced LSGO问题的基准测试。仿真结果证实,SACC对大多数不平衡的LSGO基准功能获得了有希望的性能。

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