用基于替代品的全局敏感性分析补充深冲部件的可拉伸性评估

Tobias Lehrer, A. Kaps, I. Lepenies, Elena Raponi, Marcus Wagner, Fabian Duddeck
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引用次数: 0

摘要

在钣金件开发的早期阶段,必须指定新结构的关键设计属性。由于这些决定是在图纸配置变化存在重大不确定性的情况下做出的,因此有时会导致开发的新零件在后期设计阶段无法绘制。因此,有必要提高经验驱动的图纸配置决策的确定性。通过全局敏感性分析对这一过程进行补充,可以深入了解图纸配置的各种变化对可绘制性的影响,从而揭示出确保新零件可绘制性的经济有效策略。然而,当使用定量全局敏感性方法(如索博尔方法)时,即使对于小型应用问题,获取索博尔指数的计算要求也会变得过高。为了规避计算上的限制,我们评估了不同代用模型在计算深冲部件可拉拔性评估的全局设计变量敏感性时的适用性。在这里,我们通过一个示例应用问题表明,标准克里金模型和集合模型都能以极低的计算成本提供值得称道的结果。此外,我们还将我们的代用模型与该领域的现有方法进行了比较。此外,我们还表明,代用模型所带来的误差与可绘制性测量方法所带来的误差在数量级上是相同的。因此,我们的代用模型可以在早期设计阶段提高部件开发的成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complementing Drawability Assessment of Deep-Drawn Components with Surrogate-Based Global Sensitivity Analysis
In the early-stage development of sheet metal parts, key design properties of new structures must be specified. As these decisions are made under significant uncertainty regarding drawing configuration changes, they sometimes result in the development of new parts that, at a later design stage, will not be drawable. As a result, there is a need to increase the certainty of experience-driven drawing configuration decisions. Complementing this process with a global sensitivity analysis can provide insight into the impact of various changes in drawing configurations on drawability, unveiling cost-effective strategies to ensure the drawability of new parts. However, when quantitative global sensitivity approaches, such as Sobol's method, are utilized, the computational requirements for obtaining Sobol indices can become prohibitive even for small application problems. To circumvent computational limitations, we evaluate the applicability of different surrogate models engaged in computing global design variable sensitivities for the drawability assessment of a deep-drawn component. Here, we show in an exemplary application problem, that both a standard kriging model and an ensemble model can provide commendable results at a fraction of the computational cost. Moreover, we compare our surrogate models to existing approaches in the field. Furthermore, we show that the error introduced by the surrogate models is of the same order of magnitude as that from the choice of drawability measure. In consequence, our surrogate models can improve the cost-effective development of a component in the early design phase.
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