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A facile approach to spinning multifunctional conductive elastomer fibres with nanocarbon fillers

机译:一种用纳米碳填料纺制多功能导电弹性体纤维的简便方法

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Electrically conductive elastomeric fibres prepared using a. wet-spinning process are promising materials for intelligent textiles, in. particular. as a strain sensing component of the fabric. However, these fibres, when reinforced with conducting fillers, typically result in a compromise between mechanical and electrical properties. and, ultimately, in the strain sensing functionality. Here we investigate the wet-spinning of polyurethane (PU) fibres with a range of conducting fillers such as carbon black (CB), single-walled carbon nanotubes (SWCNTs), and chemically converted graphene. We show that the electrical and mechanical properties of the composite fibres were strongly dependent on the aspect ratio of the filler and the interaction between the filler and the elastomer. The high aspect ratio SWCNT filler resulted in fibres with the highest electrical properties and reinforcement, while the fibres produced from the low aspect ratio CB had the highest stretchability. Furthermore, PU/SWCNT fibres presented the largest sensing range (up to 60% applied strain) and the most consistent and stable cyclic sensing behaviour. This work provides an understanding of the important factors that influence the production of conductive elastomer fibres by wet-spinning, which can be woven or knitted into textiles for the development of wearable strain sensors.
机译:使用a制备的导电弹性纤维。湿纺工艺尤其是用于智能纺织品的有前途的材料。作为织物的应变感应组件。但是,这些纤维在用导电填料增强时,通常会导致机械性能和电气性能之间的折衷。最终是应变感应功能。在这里,我们研究了聚氨酯(PU)纤维与一系列导电填料(如炭黑(CB),单壁碳纳米管(SWCNT)和化学转化的石墨烯)的湿纺。我们表明,复合纤维的电气和机械性能强烈取决于填料的长径比以及填料与弹性体之间的相互作用。高长径比的SWCNT填料使纤维具有最高的电性能和增强性,而由低长径比的CB制成的纤维具有最高的拉伸性。此外,PU / SWCNT光纤具有最大的感测范围(高达60%的施加应变)和最一致且稳定的循环感测行为。这项工作提供了对通过湿纺影响导电弹性体纤维生产的重要因素的理解,湿纺可以将其编织或编织成纺织品以开发可穿戴应变传感器。

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