Advances in Civil Engineering (Jan 2017)

Prediction of Skid Resistance Value of Glass Fiber-Reinforced Tiling Materials

  • Sadik Alper Yildizel,
  • Yesim Tuskan,
  • Gökhan Kaplan

DOI
https://doi.org/10.1155/2017/7620187
Journal volume & issue
Vol. 2017

Abstract

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This research focuses on the use of adaptive artificial neural network system for evaluating the skid resistance value (British Pendulum Number; BPN) of the glass fiber-reinforced tiling materials. During the creation of the neural model, four main factors were considered: fiber, calcium carbonate content, sand blasting, and polishing properties of the specimens. The model was trained, tested, and compared with the on-site test results. As per the comparison of the outcomes of the study, the analysis and on-site test results showed that there is a great potential for the prediction of BPN of glass fiber-reinforced tiling materials by using developed neural system.