基于神经网络确定混合纱线和复合材料中的纤维混合度

Matthias Overberg, Alexander Dams, A. Abdkader, Chokri Cherif
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引用次数: 0

摘要

深入了解混合纱线或复合材料结构中各组分的混合情况,对于开发具有所需性能的混合结构至关重要。本文介绍了一种多功能程序的开发,该程序基于神经网络自动分割的显微镜图像,用于确定纱线和复合材料中的纤维混合程度。该程序基于混纺不规则值和混纺均匀性的量化。为此,使用了空间点模式分析函数来研究纱线和复合材料横截面积的混纺均匀性。结果显示,训练有素的神经网络图像分割模型的准确率达到 92%,表明该方法能够准确评估混合结构中纤维的位置。空间点模式分析结果表明,混纺值与纱线和复合材料的特性之间存在相关性。所提出的方法为评估混合结构提供了一种快速可靠的方法,可用作质量控制和工艺优化的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Based Determination of the Degree of Fiber Mixing in Hybrid Yarns and Composites
A deep understanding on the intermixing of components in hybrid yarn or composite structures is decisive in order to develop hybrid structures with desired properties. This paper presents the development of a versatile procedure for the determination of the degree of fiber mixing in yarns and composites based on microscopy images auto-segmented by a neural network. The procedure is based on the quantification of blend irregularity values and blend homogeneity. For this purpose, functions of spatial point patterns analysis have been used to investigate the blend uniformity of yarn and composite cross sectional areas. The results show that the trained neural network model for segmentation of images has an accuracy of 92 %, indicating that the method is capable of accurately assessing the location of fibers in hybrid struc-tures. The results of the spatial point patterns analysis reveals a correlation between the blend value and the properties of yarns and composites. The proposed method provides a fast and reliable way to evaluate the hybrid structures, which could be used as a tool for quality control and process optimization.
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