超细纤维
材料科学
复合材料
静电纺丝
膜
差示扫描量热法
己内酯
环氧树脂
扫描电子显微镜
动态力学分析
蒙脱石
纤维
复合数
聚合物
共聚物
生物
热力学
物理
遗传学
作者
Yubing Dong,Qian Chen,Jian Lü,Yaqin Fu
出处
期刊:Pigment & Resin Technology
[Emerald Publishing Limited]
日期:2018-01-02
卷期号:47 (1): 29-37
被引量:4
标识
DOI:10.1108/prt-01-2017-0005
摘要
Purpose Epoxy (EP) and polye-caprolactone (PCL) are typical dual-shape memory polymer (DSMP). To get excellent triple-shape memory effect (TSME) polymer composites which are made from EP and PCL. Miscible PCL/EP blend composites have been investigated and compared to the TSMEs with electrospun PCL microfiber membranes/EP composites. Clay montmorillonite (MMT)-modified electrospun PCL microfiber membranes were prepared to improve the shape memory fixities of electrospun PCL microfiber membranes/EP composites. Design/methodology/approach The morphologies of electrospun PCL microfiber membranes and the cross section of PCL/EP composites were studied using a field emission scanning electron microscope (FE-SEM), and the existence of MMT was confirmed by a transmission electron microscope. Thermal mechanical properties were observed by a differential scanning calorimeter (DSC) and a dynamic thermomechanical analysis machine, and the TSMEs were also determined through dynamic mechanical analysis. Findings Results indicate that the TSMEs of electrospun PCL microfiber membranes/EP composites were excellent, whereas the TSMEs of PCL/EP blend composites were poor. The TSMEs of PCL electrospun microfiber membranes/EP composites significantly improved with the addition of the PCL electrospun microfiber modified with moderate MMT. Research limitations/implications Adding a moderate content of MMT into the electrospun PCL fibers, could improve the TSME of the PCL fiber membranes/EP composites. This study was to create a simple and effective method that can be applied to improve the performance of other SMP. Originality/value A novel triple-shape memory composite were made from dual-shape memory EP and electrospun PCL fiber membranes.
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