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Large-scale structural optimization using a fuzzy reinforced swarm intelligence algorithm

机译:使用模糊增强群智能算法的大规模结构优化

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摘要

In contrast with conventional structural optimization benchmark problems real size structures mostly contain a large number of members and their optimal design provide a serious challenging area for optimization methods. In this regard, current study deals with assessing the search performance of the recently developed fuzzy reinforced metaheuristic technique so called Interactive Fuzzy Search Algorithm on the optimization of large-scale structures. This method is a self-adaptive and parameter-free algorithm which applies a dual-module fuzzy decision mechanism to adjust its search behavior during the optimization process. This mechanism employs two nine rule fuzzy modules which permanently monitor the agents updating process and based on the governing conditions of the problem emphasize their exploration or exploitation search behavior. Attained results show that proposed method can adopt itself with the extensive search space of the studied problems. Form both accuracy and stability aspects Interactive Fuzzy Search Algorithm provides promising results on solving large-scale structural optimization problems.
机译:与常规的结构优化基准问题相反,实际尺寸的结构主要包含大量构件,其优化设计为优化方法提供了严峻的挑战。在这方面,当前的研究涉及评估最近开发的模糊增强元启发式技术(称为交互式模糊搜索算法)在大规模结构优化上的搜索性能。该方法是一种自适应且无参数的算法,该算法应用双模块模糊决策机制在优化过程中调整其搜索行为。该机制使用两个九个规则模糊模块,它们永久监视代理更新过程,并根据问题的管理条件强调其探索或开发搜索行为。所得结果表明,该方法可广泛应用于所研究问题的搜索空间。从准确性和稳定性两方面来看,交互式模糊搜索算法在解决大规模结构优化问题上均提供了有希望的结果。

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