极限抗拉强度
材料科学
复合材料
聚丙烯
滑石
复合数
碳纳米管
响应面法
填料(材料)
热稳定性
化学工程
数学
统计
工程类
作者
Konstantinos Leontiadis,Costas Tsioptsias,Stavros Messaritakis,Aikaterini Terzaki,Panagiotis Xidas,Kyriakos Mystikos,Evangelos Tzimpilis,Ioannis Tsivintzelis
出处
期刊:Polymers
[Multidisciplinary Digital Publishing Institute]
日期:2022-03-25
卷期号:14 (7): 1329-1329
被引量:4
标识
DOI:10.3390/polym14071329
摘要
A large portion of the produced Polypropylene (PP) is used in the form of fibers. In this industrially oriented study, the development of composite PP drawn fibers was investigated. Two types of fillers were used (ultra-fine talc and single-wall carbon nanotubes). Optimization of the thermal and mechanical properties of the produced composite drawn fibers was performed, based on the Box-Behnken design of experiments method (surface response analysis). The effect of additives, other than the filler, but typical in industrial applications, such as an antioxidant and a common compatibilizer, was investigated. The drawing ratio, the filler, and the compatibilizer or the antioxidant content were selected as design variables, whereas the tensile strength and the onset decomposition temperature were set as response variables. Fibers with very high tensile strength (up to 806 MPa) were obtained. The results revealed that the maximization of both the tensile strength and the thermal stability was not feasible for composites with talc due to multiple interactions among the used additives (antioxidant, compatibilizer, and filler). Additionally, it was found that the addition of talc in the studied particle size improved the mechanical strength of fibers only if low drawing ratios were used. On the other hand, the optimization targeting maximization of both tensile strength and thermal stability was feasible in the case of SWCNT composite fibers. It was found that the addition of carbon nanotubes improved the tensile strength; however, such improvement was rather small compared with the tremendous increase of tensile strength due to drawing.
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