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Original Articles

Non―Gaussian-Type Tube-Based Entropy Model for Elastomeric Networks with Polymer Phase Influenced by Filler Loading: Data Analysis for Lightly to Highly Carbon-Black Filled Styrene-Butadiene Rubber Networks

Pages 873-893 | Received 27 Feb 2017, Accepted 11 Oct 2017, Published online: 28 Nov 2017
 

ABSTRACT

Recently the author proposed a new, non-Gaussian, tube-based entropy model for filled elastic networks, characterized by a filler-environmental parameter that was proposed to represent the extent of filler-agglomeration; it was specifically introduced for the polymer phase entropically affected by the presence of very irregularly structured fillers. In this report, the stress-strain relations derived from the above model were used together with the traditional and latest mechanisms of amplification of the strain due to the presence of a filler: namely, literature tensile data for styrene-butadiene rubber networks with a series of carbon-black loadings were systematically analyzed to understand the filler-loading dependence of the above parameter. As a consequence, it is proposed that this parameter is linked, from the static-mechanical standpoint, to a critical filler-loading coupled to the filler-networking. In addition, prior to commencing the examinations of the high-loading networks' tensile data, the data-fitting performance of the underlying elastic molecular model for non-filled networks was also examined using the unfilled and low-loading networks' tensile curves.

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