Controlling the concrete manufacturing process increases the strength by 30%

Controlling the concrete manufacturing process increases the strength by 30%
Different geometries of aggregates: (a) general classification [Simms et al, 2019]; (b) rounded aggregates used in the present research; (c) angular aggregates used in the present research. Credit: Kazem Reza Kashyzadeh et al, Buildings (2022). DOI: 10.3390/buildings12040438

To increase the strength of concrete, researchers come up with new methods of reinforcement—usually with metal structures or nanofibers. A RUDN University professor with colleagues from Iran has discovered an easier way. Even from a conventional concrete mix, one can get a more durable material. The main point is to choose the right proportions and hardening conditions. The results are published in Buildings.

To make concrete more resistant to static and cyclic loads, it is supplemented with a "framework"—reinforcement or nanofibers. At the same time, it is still necessary to look for ways to strengthen concrete even without reinforcement. For example, it is necessary to repair old structures built of ordinary concrete. A RUDN professor, together with colleagues from Iran, conducted a series of experiments and created an artificial neural network to calculate how to make concrete stronger without new "ingredients."

"Concrete is a composite material of small and large aggregates, which are bonded to each other with a cementing mortar, and harden. To increase the static and cyclic strength of buildings, civil engineers use reinforced concrete. Large structures such as dams and multi-story car parks are made of reinforced concrete. However, there are still old conventional concrete structures around the world that need to be refurbished. Therefore, finding practical and inexpensive ways to increase the strength of conventional concrete is still an important task. Most of the research is outdated. Only a few researchers use new methods, such as data mining, neural network algorithms, hybrid optimization methods, and machine learning to assess the strength of ordinary concrete," said Kazem Reza Kashyzadeh, Professor in the Department of Transport at RUDN University.

Engineers have calculated the optimal mixture parameters that make concrete as strong as possible without the use of additional elements. The strength is affected by the shape and size of the particles of the filler—crushed stone, gravel or sand—and the solidification of the solution. The best of filler particles is rounded. Angular fractions, on the contrary, reduce strength. As the increases, the strength increases. And the temperature at which the solution hardens is best kept at 10 degrees C. In this way, it is possible to achieve an increase of 30% in the strength of concrete.

For simulation, RUDN engineers created an artificial neural network using the so-called backpropagation method. To train the neural network, the researchers conducted a series of experiments with different concrete samples. Part of the experimental data was left to test the resulting model.

"We have found that in conventional concrete, the appearance of the , their size and geometry, as well as the curing conditions, have a significant impact on strength. We investigated the relationship between these parameters experimentally and obtained the best conditions for obtaining durable ," said Professor Kashyzadeh.


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More information: Kazem Reza Kashyzadeh et al, Prediction of Concrete Compressive Strength Using a Back-Propagation Neural Network Optimized by a Genetic Algorithm and Response Surface Analysis Considering the Appearance of Aggregates and Curing Conditions, Buildings (2022). DOI: 10.3390/buildings12040438
Provided by Russian Foundation for Basic Research
Citation: Controlling the concrete manufacturing process increases the strength by 30% (2022, August 16) retrieved 30 September 2022 from https://techxplore.com/news/2022-08-concrete-strength.html
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