Modeling of Stiffening and Strengthening in Nano-Layered Silicate/Epoxy (RESEARCH NOTE)

B. T. Marouf, R. Pearson, R. Bagheri
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引用次数: 4

Abstract

The aim of this paper is to investigate adhesion property between nano-layered filler and the polymer matrix using a combination of experimental and micromechanical models as well as the changes in yield strength and stiffness of a layered silicate-filled epoxy nanocomposite. The results indicate that addition of intercalated layered silicate particles increased Young’s modulus and yield strength of the epoxy resin, although the increases in stiffness and yield strength are modest, 30% and 4%, respectively. In addition, experimental results were compared with predictive stiffening and strengthening models. The rule of mixtures provides an upper bound for the modulus in these materials, while the Halpin-Tsai model provides a lower bound at low filler contents. The strengthening model used suggests the possibility of presence of a relatively modest adhesion between the intercalated layered silicate and epoxy resin rather than weak adhesion in the intercalated systems.
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纳米层状硅酸盐/环氧树脂的强化和强化建模(研究笔记)
本文的目的是利用实验和微观力学模型相结合的方法研究纳米层状填料与聚合物基体的粘附性能,以及层状硅酸盐填充环氧纳米复合材料的屈服强度和刚度的变化。结果表明:层状硅酸盐颗粒的加入提高了环氧树脂的杨氏模量和屈服强度,但刚度和屈服强度的增加幅度不大,分别为30%和4%。此外,还将实验结果与预测加筋和强化模型进行了比较。混合规则提供了这些材料中模量的上界,而Halpin-Tsai模型提供了低填料含量时的下界。所使用的强化模型表明,在插层硅酸盐和环氧树脂之间可能存在相对适度的附着力,而不是插层体系中的弱附着力。
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