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Robust design optimization of imperfect stiffened shells using an active learning method and a hybrid surrogate model

机译:使用主动学习方法和混合替代模型的鲁棒设计优化不完美僵硬的壳牌

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摘要

There are many uncertain factors in aerospace structures, such as variations in manufacturing tolerance, material properties and environmental aspects. Although conventional robust design optimization (RDO) can effectively take into account these uncertainties under the specified robust requirement, it is less satisfactory in addressing these difficulties owing to the prohibitive numerical cost of finite element analysis of stiffened shells. To improve the efficiency of RDO of imperfect stiffened shells, a new hybrid surrogate model (HSM), taking full advantage of the efficiency of the smeared stiffener method and the accuracy of the finite element method, is developed in this article. Then, a new active learning method is constructed based on the HSM. Furthermore, a hybrid bi-stage RDO framework is proposed to alleviate the computational burden incurred by repeated structural analysis. An example of a typical 3 m diameter stiffened shell demonstrates the high efficiency and accuracy of the proposed method.
机译:航空航天结构中存在许多不确定因素,例如制造公差,材料性质和环境方面的变化。虽然传统的鲁棒设计优化(RDO)可以有效地考虑到规定的强大要求下的这些不确定性,但由于加强壳的有限元分析的欠富有数值成本,在解决这些困难方面取得了令人满意的。为了提高不完美硬化壳的RDO效率,在本文中开发了一种新的混合替代模型(HSM),充分利用涂抹加强法的效率和有限元方法的准确性。然后,基于HSM构建新的主动学习方法。此外,提出了一种混合的双阶段RDO框架,以减轻反复结构分析所产生的计算负担。典型的3M直径加强壳的示例演示了所提出的方法的高效率和准确性。

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