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首页> 外文期刊>Journal of Reinforced Plastics and Composites >Buckling surrogate-based optimization framework for hierarchical stiffened composite shells by enhanced variance reduction method
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Buckling surrogate-based optimization framework for hierarchical stiffened composite shells by enhanced variance reduction method

机译:基于屈曲的代理的优化框架通过增强差异减少方法进行分级加强复合壳

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摘要

The surrogate-based optimization of hierarchical stiffened composite shells against buckling is a typical multimodal and multivariables optimization problem. To improve the computational efficiency and global optimizing ability of the surrogate-based optimization of hierarchical stiffened composite shells, an enhanced variance reduction method based on Latinized partially stratified sampling and multifidelity analysis methods is proposed in this paper and then integrated into the surrogate-based optimization framework. In the offline step of the optimization framework, candidate pairing strategies of design variables are generated by Latinized partially stratified sampling and compared by performing priori optimizations based on the low-fidelity analysis method, and the optimal pairing strategy is therefore determined. On the basis of the optimal pairing strategy, the surrogate-based optimization is carried out using the high-fidelity analysis method in the online step. With less computational cost in the offline step, the proposed enhanced variance reduction method overcomes the limitation of Latinized partially stratified sampling that the optimal pairing strategy is not obvious in complex problems. Then, extensive optimization examples are carried out to verify the efficiency and effectiveness of the proposed optimization framework. Given an approximate computational cost, the optimal buckling result of the proposed framework using enhanced variance reduction method increases by 18.2% than that of the traditional framework based on Latin hypercube sampling. In particular, the advantage of enhanced variance reduction method in the space-filling ability is highlighted in comparison to Latin hypercube sampling. When achieving an approximate global optimal solution, the proposed framework reduces the total computational cost by 76.3% than the traditional framework. Finally, the numerical implementation of asymptotic homogenization method is used herein for the accurate prediction of effective stiffness coefficients of the initial design and optimal results. Through comparison, it is concluded that the high axial stiffness and bending stiffness are the main mechanism for the high load-carrying capacity of optimal results.
机译:抗屈曲的代理基层优化是典型的多模式和多功能性优化问题。为了提高基于代理的基于分层加强复合壳的计算效率和全局优化能力,提出了基于Latinalized部分分层采样和多尺寸分析方法的增强差异减少方法,然后纳入了基于代理的优化框架。在优化框架的离线步骤中,通过基于低保真分析方法执行先验的部分分层采样来生成设计变量的候选配对策略,并且因此确定了最佳配对策略。在最佳配对策略的基础上,使用在线步骤中的高保真分析方法进行基于代理的优化。在离线步骤中具有较少的计算成本,所提升的增强差异减少方法克服了延期化部分分层的抽样的限制,即最佳配对策略在复杂问题中不明显。然后,进行广泛的优化示例以验证所提出的优化框架的效率和有效性。鉴于近似的计算成本,使用增强差异减少方法的提出框架的最佳屈曲结果增加了18.2%,而不是基于拉丁超超立体采样的传统框架。特别地,与拉丁超立体采样相比,突出了增强型方差减少方法的优点。在实现近似全局最优解决方案时,所提出的框架将总计算成本降低76.3%而不是传统框架。最后,本文使用了渐近均质化方法的数值实现,用于精确预测初始设计的有效刚度系数和最佳结果。通过比较,得出结论,高轴向刚度和弯曲刚度是最佳效果高承载能力的主要机制。

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