粘弹性
弹性体
填料(材料)
复合材料
材料科学
高分子科学
作者
Martin Müller,Andrej Lang,Manfred Klüppel,U. Giese,J. Voges,M. Niemeyer,Daniel Juhre
摘要
ABSTRACT Heterogeneity of microstructure is key factor for dynamic-mechanical behaviour of materials. For rubber mostly development of domains consisting of different polymer types allow to design high-tech materials. Such polymer blend systems can combine rubber specific benefits of decisive significance for application performance. Generally, fillers like carbon black or silica are used to enhance ultimate properties, like tensile strength or wear resistance. In polymer blends distribution of filler particles towards domains of various composition defines quality of material used. An already proven model for determining filler distribution based on experimental measurements was optimized and applied for blend system made of natural rubber and styrene butadiene rubber, whose blend ratio, filler content and type were varied systematically in fine steps. Model focusses on temperature function of loss modulus at glass transition, of which heterogeneous blend systems has two separated at different temperatures. The modulus contribution occurring in temperature range between these was previously interpreted as small layer between domains of different type called interphase, which is preferentially enriched with filler before other phases and therefore has very high filler loads. However, investigations using atomic force microscope show no concentration of filler particles at phase boundaries, but decreasing domain size in areas of high filler concentration. Fining of phase morphology due to filler particles indicates compatibility improvement of both polymers, so that filler acts as compatibilizer. Influence of filler on miscibility is tremendous. Especially in silica-filled blend systems, instead of two separate glass transitions with filler enhanced interphase contribution between a single very wide plateau-like glass transition occurs at high filler loads.
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