考虑产品性能和装配工艺复杂性的基于元模型的设计优化框架

Pavel Eremeev, A. D. Cock, Hendrik Devriendt, Frank Naets
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引用次数: 0

摘要

本文提出了一种同时评估装配工艺复杂性和未来产品性能的方法。它允许在开发流程的早期阶段考虑未来设计的不同方面,从而优化产品设计。所提出的方法体现在一个完全自动化的框架中,它以一种更高效、更快速的组合程序取代了传统的顺序开发过程,同时解决了多个设计方面的问题。装配设计(DFA)规则作为整个产品和单个装配操作易装配性的量化指标,与基于有限元(FE)模拟估算的性能指标一起自动进行评估。直接解决这一优化问题可能效率不高或不可能,因为这需要对代表优化目标和约束条件的未知行为的离散和连续函数进行重复评估,计算成本高昂。因此,所提出的框架采用了基于高斯过程和人工神经网络的回归模型,从而通过基于元模型的设计优化(MBDO)实现产品的最优设计。考虑到变速箱的机械性能和装配工艺,建议的方法在变速箱组件的优化中得到了验证。比较基于元模型的设计优化和直接设计优化的结果表明,MBDO 可以找到更好的解决方案,而计算预算却要少三倍。此外,对使用不同大小的静态采样数据集获得的结果进行分析,也凸显了所采用的采样程序的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Framework for metamodel-based design optimization considering product performance and assembly process complexity
This paper proposes a method for simultaneous evaluation of the assembly process complexity together with the performance of the future product. It allows for product design optimization, considering different aspects of the future design at the early stage of the development process. The proposed method, embodied in a fully automated framework, substitutes the traditional sequential development process with a more efficient and rapid combined procedure, which addresses multiple design aspects simultaneously. Design for assembly (DFA) rules, used as quantitative metrics of the ease-of-assembly of the whole product and individual assembly operations, are automatically evaluated together with performance metrics, estimated based on finite element (FE) simulations. The direct solution to this optimization problem might be inefficient or impossible since it requires the recurrent evaluation of computationally expensive discrete and continuous functions with unknown behavior that represent the optimization objectives and constraints. For that reason, the proposed framework employs regression models based on the Gaussian process and artificial neural networks, thus achieving the optimal design of a product as a result of metamodel-based design optimization (MBDO). The suggested approach is demonstrated in the optimization of a gearbox assembly, considering its mechanical performance and assembly process. Comparing the results of the metamodel-based and direct design optimization shows that MBDO allows finding a better solution using a three times smaller computational budget. In addition, analysis of the results obtained using stationary sampling data sets of different sizes highlighted the limitations of the employed sampling procedure.
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