4.7 Article

Applying a meta-heuristic algorithm to predict and optimize compressive strength of concrete samples

Journal

ENGINEERING WITH COMPUTERS
Volume 37, Issue 2, Pages 1133-1145

Publisher

SPRINGER
DOI: 10.1007/s00366-019-00875-1

Keywords

Compressive strength of concrete; Meta-heuristic algorithms; Artificial bee colony; Optimization technique

Funding

  1. University of Tabriz [2718]
  2. University of Tabriz

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This study used MH algorithms to evaluate the compressive strength of concrete specimens and establish relationships between various parameters. It identified important factors influencing concrete strength and presented optimal conditions for compressive strength of concrete samples using the developed model. The MH algorithms were shown to be effective substitutes for empirical models in this research.
The successful use of fly ash (FA) and silica fume (SF) materials has been reported in the design of concrete samples in the literature. Due to the benefits of using these materials, they can be utilized in many industrial applications. However, the proper use of them in the right mixes is one of the important factors with respect to the strength and weight of concrete. Therefore, this paper develops relationships based on meta-heuristic (MH) algorithms (artificial bee colony technique) to evaluate the compressive strength of concrete specimens using laboratory experiments. A database comprising silica fume replacement ratio, fly ash replacement ratio, total cementitious material, water content coarse aggregate, high-rate water-reducing agent, fine aggregate, and age of samples, as model inputs, was used to evaluate and predict the compressive strength of concrete samples. Developed models of the MH technique created relationships between the mentioned parameters. In the new models, the influence of each parameter on the compressive strength was determined. Finally, using the developed model, optimum conditions for compressive strength of concrete samples were presented. This paper demonstrated that the MH algorithms are able to develop relationships that can serve as good substitutes for empirical models.

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