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Multidisciplinary Optimization of Auto-Body Lightweight Design Using Hybrid Metamodeling Technique and Particle Swarm Optimizer

机译:混合元模型技术和粒子群优化器自动体轻型设计的多学科优化

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Because of rising complexity during the automotive product development process, the number of disciplines to be concerned has been significantly increased. Multidisciplinary design optimization (MDO) methodology, which provides an opportunity to integrate each discipline and conduct compromise searching process, is investigated and introduced to achieve the best compromise solution for the automotive industry. To make a better application of MDO, the suitable coupling strategy of different disciplines and efficient optimization techniques for automotive design are studied in this article. Firstly, considering the characteristics of automotive load cases which include many shared variables but rare coupling variables, a multilevel MDO coupling strategy based on enhanced collaborative optimization (ECO) is studied to improve the computational efficiency of MDO problems. Then, a hybrid metamodeling technique is developed to surrogate the time-consuming simulation analysis with local and global metamodels, aiming at balancing accuracy and efficiency of metamodel construction process. At last, the particle swarm optimizer is employed and adjusted to combine with the constructed hybrid metamodels for conducting the optimization program of the MDO problems. In order to improve the global optimizing capability of particle swarm optimization (PSO) algorithm, the diversity-enhanced mechanism and local search method are used to modify the searching process. The established MDO architecture is applied to a lightweight design application of an auto-body, and the results verify its effectiveness and validity.
机译:由于在汽车产品开发过程中复杂性上升,所关注的学科数量显着增加。多学科设计优化(MDO)方法,为整合每个学科和行为妥协搜索过程提供了机会,并介绍了实现汽车行业的最佳折衷解决方案。为了更好地应用MDO,在本文中研究了用于汽车设计的不同学科和有效优化技术的合适耦合策略。首先,考虑到包括许多共享变量但罕见耦合变量的汽车负载情况的特征,研究了一种基于增强的协作优化(ECO)的多级MDO耦合策略,以提高MDO问题的计算效率。然后,开发了一种混合元模型技术以代理局部和全球元模型的耗时仿真分析,旨在平衡元模型施工过程的准确性和效率。最后,采用粒子群优化器并调整以与构造的混合元模型组合,用于进行MDO问题的优化程序。为了改善粒子群优化(PSO)算法的全局优化能力,使用分集增强机制和本地搜索方法来修改搜索过程。已建立的MDO架构应用于自动主体的轻量级设计应用,结果验证其有效性和有效性。

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