论文标题
基于机器学习的虚拟实验取样
Machine learning-based sampling of virtual experiments within the full stress state
论文作者
论文摘要
本文提出了一种新的基于机器学习的方法,可以通过虚拟实验研究钣金的各向异性产量表面。新的采样方法基于称为Active学习的机器学习技术,该技术已适应了有关完整应力状态的有效采样虚拟实验,以识别各向异性产量函数的参数。该方法用于基于DX56D深色绘图钢的晶体可塑性有限元法(CPFEM)的虚拟实验,并与从文献中采集的两种最先进的采样方法进行了比较。所有三种采样方法的初始产量表面上的结果点均用于识别各向异性产量功能的参数Hill48,YLD91,YLD2004-18P和YLD2004-27P。结果表明,新的基于机器学习的采样方法的采样效率高于两种最先进的采样方法。因此,需要更少的计算晶体可塑性模拟。通过比较Hill48,YLD91,YLD2004-18P和YLD2004-27P屈服表面的不同变体,还发现,基于在全应激状态内采样的虚拟实验中识别各向异性屈服函数的参数可以导致脱落层面反应的代表。关于DX56D深绘图钢,观察到YLD2004-18p的产量函数的这种降解。结果,在考虑全部压力状态时,必须仔细审查面内各向异性的表示。在这种情况下,YLD2004-27P被确定为足够灵活,可以同时代表DX56D的塑性各向异性相对于平面内和平面外行为,其精度很高。
This paper presents a new machine learning-based approach to investigate anisotropic yield surfaces of sheet metals by means of virtual experiments. The new sampling approach is based on the machine learning technique known as active learning, which has been adapted to efficiently sample virtual experiments with respect to the full stress state in order to identify parameters of anisotropic yield functions. The approach was employed to sample virtual experiments based on the crystal plasticity finite element method (CPFEM) for a DX56D deep drawing steel and compared with two state-of-the-art sampling methods taken from the literature. The resulting points on the initial yield surface for all three sampling methods were used to identify parameters of the anisotropic yield functions Hill48, Yld91, Yld2004-18p and Yld2004-27p. The results show that the new machine learning-based sampling approach has a higher sampling efficiency than the two state-of-the-art sampling methods. Consequently, fewer computationally expensive crystal plasticity simulations are required. By comparing different variants of the Hill48, Yld91, Yld2004-18p and Yld2004-27p yield surfaces, it was also found that identifying parameters of anisotropic yield functions based on virtual experiments sampled within the full stress state can lead to a degraded representation of the in-plane anisotropy. With respect to DX56D deep drawing steel, this degradation was observed for the Yld2004-18p yield function. As a consequence, the representation of the in-plane anisotropy must be carefully reviewed when taking the full stress state into account. In this context, Yld2004-27p was identified as being sufficiently flexible to simultaneously represent the plastic anisotropy of DX56D with respect to the in-plane and out-of-plane behaviour with high accuracy.