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Microencapsulated Diepoxy-Functionalized Ionic Liquids to the Design of Self-Healable Epoxy Networks

ACS applied polymer materials(2023)SCI 3区SCI 4区

Univ Lyon

Cited 8|Views26
Abstract
An extrinsic self-healing mechanism based on microencapsulatedhealing agents represents an original way to produce self-healablethermosetting materials without modifying the structural architectureof the co-monomers. In this work, self-healing was achieved throughpoly(melamine-formaldehyde) (PMF) microcapsules containinga polymerizable diepoxidized ionic liquid monomer denoted as ILEM.First, a synthetic route to design ILEM@PMF microcapsules via in situpolymerization was developed and optimized through the choice of surfactants,core/shell ratios, and stirring speeds. Then, the obtained microcapsules(10 wt %) were incorporated into three different epoxy-aminenetworks and their effects on the morphology, thermal behavior, i.e.,glass transition temperature (T (g)) anddegradation temperature (T (d)), as wellas on the mechanical properties were investigated. In addition, apre-crack was generated with a fresh razor blade into the center grooveof the epoxy networks and their self-healing performances were observedby scanning electron microscopy before and after the curing process.
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Key words
microcapsules,poly(melamine-formaldehyde),diepoxidized ionic liquids,self-healing ability,epoxy networks
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要点】:本研究提出了一种基于微胶囊化环氧官能化离子液体(ILEM@PMF)的外部自愈合机制,用于制备无需改变共单体结构架构的自愈合热固性材料,实现了自愈合环氧网络的创新设计。

方法】:通过在位聚合的方法,设计并优化了合成PMF微胶囊包裹ILEM的合成路线,包括选择表面活性剂、核心/壳比例及搅拌速度。

实验】:将合成的微胶囊(10 wt%)加入三种不同的环氧-胺网络中,研究了它们对材料形态、热行为(玻璃化转变温度Tg和降解温度Td)以及力学性能的影响;并通过在环氧网络中心槽中用新刮刀制造预裂纹,使用扫描电子显微镜观察了材料在固化前后的自愈合性能,实验使用的数据集为合成的三种不同环氧-胺网络的自愈合性能数据。