PermeabilityNets: Comparing Neural Network Architectures on a Sequence-to-Instance Task in CFRP Manufacturing

S. Stieber, N. Schröter, E. Fauster, Alexander Schiendorfer, W. Reif
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引用次数: 3

Abstract

Carbon fiber reinforced polymers (CFRP) offer highly desirable properties such as weight-specific strength and stiffness. Liquid composite moulding (LCM) processes are prominent, economically efficient, out-of-autoclave manufacturing techniques and, in particular, resin transfer moulding (RTM), allows for a high level of automation. There, fibrous preforms are impregnated by a viscous polymer matrix in a closed mould. Impregnation quality is of crucial importance for the final part quality and is dominated by preform permeability. We propose to learn a map of permeability deviations based on a sequence of camera images acquired in flow experiments. Several ML models are investigated for this task, among which ConvLSTM networks achieve an accuracy of up to 96.56%, showing better performance than the Transformer or pure CNNs. Finally, we demonstrate that models, trained purely on simulated data, achieve qualitatively good results on real data.
渗透性网络:比较CFRP制造中序列到实例任务的神经网络架构
碳纤维增强聚合物(CFRP)提供了非常理想的性能,如重量比强度和刚度。液体复合成型(LCM)工艺是突出的,经济高效的,非高压釜制造技术,特别是树脂转移成型(RTM),允许高水平的自动化。在那里,纤维预制体在封闭的模具中由粘性聚合物基质浸渍。浸渍质量对成品质量至关重要,浸渍质量主要由预制体渗透率决定。我们提出了一种基于在流动实验中获得的一系列相机图像的渗透率偏差图。针对该任务研究了几种机器学习模型,其中ConvLSTM网络的准确率高达96.56%,优于Transformer或纯cnn。最后,我们证明了纯粹在模拟数据上训练的模型在真实数据上获得了质量良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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