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Article
Neural Network Modeling for the Rotational Viscosity of Reacted and Activated Rubber Modified Binders
Advances in Civil Engineering Materials ASTM Journal (2021)
  • Mena I Souliman, University of Texas at Tyler
Abstract
Crumb rubber surface activation and pretreatment are considered one of the promising newly introduced methods for asphalt rubber production. Reacted and activated rubber (RAR) is an elastomeric asphalt extender produced by the hot blending and activation of crumb rubber with asphalt and activated mineral binder stabilizer. Besides RAR’s ability to enhance the performance of asphaltic mixtures, its dry granulate industrial form enables its addition directly into the mixture utilizing the pugmill or dryer drum with very minimal to no modification required on the plant level. This study aims to develop an artificial neural network (ANN) viscosity prediction model for extracting a standalone viscosity prediction equation. Three different performance graded (PG) asphalt binders modified by 10 dosages of RAR were tested and evaluated under this study. Sixty-six samples that generated more than 3,000 viscosity data points were utilized in ANN modeling. The developed ANN model as well as the extracted standalone viscosity prediction equation had a high value of the coefficient of determination and were statistically valid. Both have the ability to predict the RAR-modified binder viscosity as a function of binder grade, temperature, testing shearing rates, and RAR content.
Keywords
  • Neural Network Modeling,
  • Rotational Viscosity,
  • Reacted and Activated Rubber Modified Binders
Disciplines
Publication Date
March 12, 2021
DOI
https://doi.org/10.1520/ACEM20200114
Citation Information
Mena I Souliman. "Neural Network Modeling for the Rotational Viscosity of Reacted and Activated Rubber Modified Binders" Advances in Civil Engineering Materials ASTM Journal Vol. 10 Iss. 1 (2021) p. 140 - 153 ISSN: 2379-1357
Available at: http://works.bepress.com/mena-souliman/144/