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3D Representative Volume Element Reconstruction of Fiber Composites via Orientation Tensor and Substructure Features

机译:通过方向张量和子结构特征的3D代表纤维复合材料的重构重构

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To provide a seamless integration of manufacturing processing simulation and fiber microstructure modeling, two new stochastic 3D microstructure reconstruction methods are proposed for two types of random fiber composites: random short fiber composites, and Sheet Molding Compounds (SMC) chopped fiber composites. A Random Sequential Adsorption (RSA) algorithm is first developed to embed statistical orientation information into 3D RVE reconstruction of random short fiber composites. For the SMC composites, an optimized Voronoi diagram based approach is developed for capturing the substructure features of SMC chopped fiber composites. The proposed methods are distinguished from other reconstruction works by providing a way of integrating statistical information (fiber orientation tensor) obtained from material processing simulation, as well as capturing the multiscale substructures of the SMC composites.
机译:为了提供制造处理仿真和光纤微观结构建模的无缝集成,提出了两种类型的随机纤维复合材料:随机短纤维复合材料和片状纤维复合材料(SMC)切碎的纤维复合材料的两种新的随机3D微结构重建方法。首先开发出随机顺序吸附(RSA)算法以将统计取向信息嵌入到随机短纤维复合材料的3D RVE重建中。对于SMC复合材料,开发了一种基于VORONOI图的方法,用于捕获SMC切碎的光纤复合材料的子结构特征。通过提供从材料处理模拟中获得的统计信息(纤维取向张量)的方式来区分所提出的方法,以及捕获SMC复合材料的多尺度子结构。

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