Automatic ply detection and finite element model generation for composite laminates

Pok Lam Marvin Lau, J. Belnoue, S. Hallett
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Abstract

This paper presents a novel methodology to detect and isolate individual ply information contained within a relatively low-resolution cross-section image of thick composite laminate specimens. The proposed method can process laminate sample images and construct detailed geometric models in a fast and automated manner with minimal user interaction. The finite element models can be used directly for structural and strength simulations to analyse the effect of waviness defects. The algorithm processes the greyscale sample image and splits it into multiple slices. The initial starting points for each ply were identified by analysing the pixel brightness of the image. The pixel brightness variation was used to identify the different plies in all image slices and a list of possible ply centreline coordinate is generated. The ply centreline points are grouped and connected by selecting the points with minimal distance to the previous one in the ply. A finite element mesh is created for each ply by creating a boundary at the midpoint between two adjacent plies. The geometric information of the isolated plies is then used to create structured finite element models using an in-house meshing algorithm.
复合材料层合板厚度自动检测及有限元模型生成
本文提出了一种新的方法来检测和隔离单个层压信息包含在一个相对低分辨率的厚复合材料层压试样的横截面图像。该方法能够以最小的用户交互以快速、自动化的方式处理层叠样本图像并构建详细的几何模型。有限元模型可以直接用于结构和强度模拟,以分析波纹缺陷的影响。该算法对灰度样本图像进行处理,并将其分割成多个切片。通过分析图像的像素亮度,确定每一层的初始起始点。利用像素亮度变化来识别所有图像切片中的不同层数,并生成可能层数中心线坐标列表。通过选择与层中前一个点距离最小的点来分组和连接层中心线点。通过在两个相邻层之间的中点处创建边界,为每个层创建一个有限元网格。然后使用内部网格划分算法将隔离层的几何信息用于创建结构化有限元模型。
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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