Rule of Mixtures Model to Determine Elastic Modulus and Tensile Strength of 3D Printed Carbon Fiber Reinforced Nylon

K. Deng, H. K. Nejadkhaki, F. M. Pasquali, A. Amaria, J. Armstrong, John F. Hall
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引用次数: 5

Abstract

A model to compute the elastic modulus and tensile properties of 3D printed Carbon Fiber Reinforced Polymers (CFRP) is presented. The material under consideration is Carbon Fiber Reinforced Nylon (CFRN) produced in a Fused Deposition Modeling (FDM) process. A relationship between the nylon raster in each layer and the carbon fiber volume fraction was devised with the help of a scanning electron microscope (SEM). Thirteen groups with different layer configurations and carbon-fiber percentages were formulated and tested to obtain the elastic modulus and tensile strength. This study focused only on the properties along the printed fiber direction. The results from these tests were analyzed within the rule of mixtures framework. The results suggest that the rule of mixtures can be successfully applied to unidirectional CFRP fabricated using additive manufacturing.
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确定3D打印碳纤维增强尼龙弹性模量和拉伸强度的混合规则模型
提出了一种计算3D打印碳纤维增强聚合物(CFRP)弹性模量和拉伸性能的模型。考虑的材料是碳纤维增强尼龙(CFRN)在熔融沉积建模(FDM)工艺生产。利用扫描电镜(SEM)分析了各层尼龙栅格与碳纤维体积分数的关系。配制了13组不同层构型和碳纤维含量的复合材料,并对其进行了弹性模量和抗拉强度测试。本研究仅关注沿印刷纤维方向的性能。这些试验的结果在混合规则框架内进行了分析。结果表明,混合规律可以成功地应用于增材制造的单向CFRP。
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