• Title of article

    Prediction of concrete compressive strength due to long term sulfate attack using neural network

  • Author/Authors

    Diab, Ahmed M. Alexandria University - Faculty of Engineering - Structural Engineering Department, Egypt , Elyamany, Hafez E. Alexandria University - Faculty of Engineering - Structural Engineering Department, Egypt , Abd Elmoaty, Abd Elmoaty M. Alexandria University - Faculty of Engineering - Structural Engineering Department, Egypt , Shalan, Ali H. Alexandria University - Faculty of Engineering - Structural Engineering Department, Egypt

  • From page
    627
  • To page
    642
  • Abstract
    This work was divided into two phases. Phase one included the validation of neural network to predict mortar and concrete properties due to sulfate attack. These properties were expansio n, weight loss, and compressive strength loss. Assessment of concrete compressive strength up to 200 years due to sulfate attack was considered in phase two. The neural network model showed high validity on predicting compressive strength, expansion and weight loss due to sulfate attack. Design charts were constructed to predict concrete compressive strength loss. The inputs of these charts were cement content, water cement ratio, C3A content, and sulfate concentration. These charts can be used easily to predict the compressive strength loss after any certain age and sulfate concentration for different concrete compositions.
  • Keywords
    Neural network , Sulfate attack , Compressive strength loss
  • Journal title
    Alexandria Engineering Journal
  • Journal title
    Alexandria Engineering Journal
  • Record number

    2540493