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A bi-level methodology for solving large-scale mixed categorical structural optimization

机译:用于解决大规模混合分类结构优化的双级方法

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摘要

In this work, large-scale structural optimization problems involving non-ordinal categorical design variables and continuous variables are investigated. The aim is to minimize the weight of a structure with respect to cross-section areas, with materials and stiffening principles selection. First, the problem is formulated using a bi-level decomposition involving master and slave problems. The master problem is given by a first-order-like approximation that helps to drastically reduce the combinatorial explosion raised by the categorical variables. Continuous variables are handled in a slave problem solved using a gradient-based approach, where the categorical variables are driven by the master problem. The proposed algorithm is tested on three different structural optimization test cases. A comparison to state-of-the-art algorithms emphasize efficiency of the proposed algorithm in terms of the optimum quality, the computation cost, and the scaling with respect to the problem dimension.
机译:在这项工作中,研究了涉及非序列分类设计变量和连续变量的大规模结构优化问题。 目的是最小化关于横截面区域的结构的重量,具有材料和加强原理选择。 首先,使用涉及掌握和从属问题的双级分解来制定问题。 主问题是由一阶的近似给出的,有助于大大减少由分类变量提出的组合爆炸。 连续变量在使用基于梯度的方法解决的从属问题中处理,其中分类变量由主问题驱动。 在三种不同的结构优化测试用例上测试了所提出的算法。 与最佳质量,计算成本和缩放相对于问题尺寸的术语相比,与最先进的算法的比较强调了所提出的算法的效率。

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