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Computational modeling of electrically conductive networks formed by graphene nanoplatelet-carbon nanotube hybrid particles

机译:石墨烯纳米型碳纳米管杂交颗粒形成的导电网络的计算模拟

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One strategy to ensure that nanofiller networks in a polymer composite percolate at low volume fractions is to promote segregation. In a segregated structure, the concentration of nanofillers is kept low in some regions of the sample. In turn, the concentration in the remaining regions is much higher than the average concentration of the sample. This selective placement of the nanofillers ensures percolation at low average concentration. One original strategy to promote segregation is by tuning the shape of the nanofillers. We use a computational approach to study the conductive networks formed by hybrid particles obtained by growing carbon nanotubes (CNTs) on graphene nanoplatelets (GNPs). The objective of this study is (1) to show that the higher electrical conductivity of these composites is due to the hybrid particles forming a segregated structure and (2) to understand which parameters defining the hybrid particles determine the efficiency of the segregation. We construct a microstructure to observe the conducting paths and determine whether a segregated structure has indeed been formed inside the composite. A measure of efficiency is presented based on the fraction of nanofillers that contribute to the conductive network. Then, the efficiency of the hybrid-particle networks is compared to those of three other networks of carbon-based nanofillers in which no hybrid particles are used: only CNTs, only GNPs, and a mix of CNTs and GNPs. Finally, some parameters of the hybrid particle are studied: the CNT density on the GNPs, and the CNT and GNP geometries. We also present recommendations for the further improvement of a composite's conductivity based on these parameters.
机译:一种策略,以确保在低体积分数下在聚合物复合材料渗透渗透物中的纳米填充网络是促进偏析。在偏析结构中,在样品的一些区域中纳米填料的浓度保持低。反过来,剩余区域中的浓度远高于样品的平均浓度。纳米填充物的这种选择性放置确保在低平均浓度下渗透。促进隔离的一个原始策略是通过调整纳米填充物的形状。我们使用计算方法来研究通过在石墨烯纳米孔(GNPS)上生长碳纳米管(CNT)而获得的混合颗粒形成的导电网络。本研究的目的是(1)以表明这些复合材料的较高导电性是由于形成隔离结构的混合颗粒和(2)以了解定义混合颗粒的哪个参数决定了偏析的效率。我们构造一种微观结构以观察导电路径并确定在复合材料内是否确实形成了隔离结构。基于贡献导电网络的纳米填充物的级分来提出效率的衡量标准。然后,将杂交粒子网络的效率与三个碳基纳米填料网络的效率进行比较,其中没有使用杂种颗粒:仅CNT,仅用于GNP,以及CNT和GNP的混合。最后,研究了混合颗粒的一些参数:GNP上的CNT密度,以及CNT和GNP几何形状。我们还提出了根据这些参数进一步提高复合的电导率的建议。

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