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Temporal and Spatial Detection of the Onset of Local Necking and Assessment of its Growth Behavior

机译:颈缩发作的时空检测及其生长行为评估

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摘要

This study proposes a method for the temporal and spatial determination of the onset of local necking determined by means of a Nakajima test set-up for a DC04 deep drawing and a DP800 dual-phase steel, as well as an AA6014 aluminum alloy. Furthermore, the focus lies on the observation of the progress of the necking area and its transformation throughout the remainder of the forming process. The strain behavior is learned by a machine learning approach on the basis of the images when the process is close to material failure. These learned failure characteristics are transferred to new forming sequences, so that critical areas indicating material failure can be identified at an early stage, and consequently enable the determination of the beginning of necking and the analysis of the necking area. This improves understanding of the necking behavior and facilitates the determination of the evaluation area for strain paths. The growth behavior and traceability of the necking area is objectified by the proposed weakly supervised machine learning approach, thereby rendering a heuristic-based determination unnecessary. Furthermore, a simultaneous evaluation on image and pixel scale is provided that enables a distinct selection of the failure quantile of the probabilistic forming limit curve.
机译:这项研究提出了一种通过Nakajima试验装置确定的局部颈缩开始时空的方法,该试验装置用于DC04深冲和DP800双相钢以及AA6014铝合金。此外,重点在于在整个成型过程的其余部分中观察颈缩区域的进展及其转变。当过程接近材料失效时,通过机器学习方法基于图像学习应变行为。这些学习到的破坏特征将转移到新的成型序列中,从而可以在早期识别出表明材料破坏的关键区域,从而可以确定缩颈的开始并进行缩颈区域的分析。这改善了对颈缩行为的理解,并有助于确定应变路径的评估区域。所提出的弱监督机器学习方法实现了缩颈区域的增长行为和可追溯性,从而无需进行基于启发式的确定。此外,提供了在图像和像素范围上的同时评估,该评估可以对概率形成极限曲线的失效分位数进行不同选择。

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