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Mechanical Identification of Materials and Structures with Optical Methods and Metaheuristic Optimization

机译:用光学方法和亚启发式优化对材料和结构进行机械识别

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摘要

This study presents a hybrid framework for mechanical identification of materials and structures. The inverse problem is solved by combining experimental measurements performed by optical methods and non-linear optimization using metaheuristic algorithms. In particular, we develop three advanced formulations of Simulated Annealing (SA), Harmony Search (HS) and Big Bang-Big Crunch (BBBC) including enhanced approximate line search and computationally cheap gradient evaluation strategies. The rationale behind the new algorithms—denoted as Hybrid Fast Simulated Annealing (HFSA), Hybrid Fast Harmony Search (HFHS) and Hybrid Fast Big Bang-Big Crunch (HFBBBC)—is to generate high quality trial designs lying on a properly selected set of descent directions. Besides hybridizing SA/HS/BBBC metaheuristic search engines with gradient information and approximate line search, HS and BBBC are also hybridized with an enhanced 1-D probabilistic search derived from SA. The results obtained in three inverse problems regarding composite and transversely isotropic hyperelastic materials/structures with up to 17 unknown properties clearly demonstrate the validity of the proposed approach, which allows to significantly reduce the number of structural analyses with respect to previous SA/HS/BBBC formulations and improves robustness of metaheuristic search engines.
机译:这项研究提出了一种用于机械识别材料和结构的混合框架。通过将光学方法进行的实验测量与使用元启发式算法的非线性优化相结合,可以解决反问题。特别是,我们开发了三种先进的模拟退火(SA),和声搜索(HS)和大爆炸-大紧缩(BBBC)公式,包括增强的近似线搜索和计算上便宜的梯度评估策略。称为混合快速模拟退火(HFSA),混合快速和谐搜索(HFHS)和混合快速大爆炸-大咬嚼(HFBBBC)的新算法背后的原理是,根据适当选择的一组算法生成高质量的试验设计。下降方向。除了将SA / HS / BBBC元启发式搜索引擎与梯度信息和近似线搜索进行混合之外,HS和BBBC还与SA衍生的增强的一维概率搜索进行了混合。在关于具有多达17个未知特性的复合材料和横向各向同性超弹性材料/结构的三个反问题中获得的结果清楚地证明了所提出方法的有效性,相对于以前的SA / HS / BBBC,它可以显着减少结构分析的次数制定并提高元启发式搜索引擎的鲁棒性。

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