4.7 Article

Variable functioning and its application to large scale steel frame design optimization

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SPRINGER
DOI: 10.1007/s00158-022-03435-2

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Engineering optimization; Problem structure; Gray-box optimization; Variable interaction analysis; Evolutionary computation

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To solve complex real-world problems, a concept-based approach called variable functioning (Fx) is introduced to reduce optimization variables and narrow down the search space. By using problem structure analysis and engineering expert knowledge, the Fx method enhances the steel frame design optimization process. Coupled with particle swarm optimization and differential evolution algorithms, the proposed approach improves the convergence rate and final design of frame structures.
To solve complex real-world problems, heuristics and concept-based approaches can be used to incorporate information into the problem. In this study, a concept-based approach called variable functioning (Fx) is introduced to reduce the optimization variables and narrow down the search space. In this method, the relationships among one or more subsets of variables are defined with functions using information prior to optimization; thus, the function variables are optimized instead of modifying the variables in the search process. By using the problem structure analysis technique and engineering expert knowledge, the Fx method is used to enhance the steel frame design optimization process as a complex real-world problem. Herein, the proposed approach was coupled with particle swarm optimization and differential evolution algorithms then applied for three case studies. The algorithms are applied to optimize the case studies by considering the relationships among column cross-section areas. The results show that Fx can significantly improve both the convergence rate and the final design of a frame structure, even if it is only used for seeding.

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