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Related Concept Videos

Behavior of Concrete Under Compressive Load01:23

Behavior of Concrete Under Compressive Load

279
Concrete exhibits specific behaviors under different compressive loads. Understanding this is crucial for understanding its structural integrity. When concrete undergoes uniaxial compression, it tends to develop cracks that run parallel to the direction of the force. These parallel cracks stem from localized tensile stresses that occur perpendicular to the compression direction. Additionally, angled cracks may appear due to the formation of shear planes.
As the concrete specimen fractures under...
279
Dynamic Modulus of Elasticity of Concrete01:16

Dynamic Modulus of Elasticity of Concrete

549
The dynamic modulus of elasticity assesses how a concrete structure deforms under impact or dynamic loads. It is typically higher than the static modulus of elasticity, measured under slow, steady loading conditions.
The sonic test is a common method to determine the dynamic modulus. In this test, a concrete beam, sized either 6 x 6 x 30 inches or 4 x 4 x 20 inches, is clamped at its center. Vibrations are initiated at one end of the beam by an electromagnetic exciter unit powered by...
549
Relation Between Tensile Strength and Compressive Strength of Concrete01:30

Relation Between Tensile Strength and Compressive Strength of Concrete

356
Concrete is a fundamental building material, and understanding its strengths is crucial for construction projects. The relationship between its tensile and compressive strengths is intricate, showing that while these strengths are related, they do not increase at the same rate. Tensile strength's growth is slower and is affected by various factors such as the methods used for testing, the size and shape of the specimen, the texture of the aggregate used, and the moisture content of the...
356
Tensile Strength Considerations of Concrete01:16

Tensile Strength Considerations of Concrete

204
Considering the tensile strength of concrete involves recognizing that the theoretical strength of cement paste can be up to a thousand times higher than what is observed in practical applications. This significant discrepancy is largely attributed to the presence of microscopic cracks within the concrete. These cracks tend to amplify stress at their tips when a load is applied, a phenomenon explained by Griffith's theory of brittle fracture.
The dimensions and shape of a concrete specimen...
204
Moisture Content and Bulking of Aggregate01:10

Moisture Content and Bulking of Aggregate

211
The moisture content of aggregates is a crucial factor in construction, particularly in concrete mixing, as it influences the total water required in the mix. Moisture content represents the water coated on the exterior surface of the aggregate existing in a saturated and surface-dry condition. The total water content of a moist aggregate is the sum of its moisture content and water absorption.
When aggregates are exposed to rain or sit in stockpiles, they absorb moisture, which must be...
211
Abrasion Resistance of Concrete01:23

Abrasion Resistance of Concrete

209
Abrasion resistance is an essential characteristic of concrete that determines its durability and longevity under various wear conditions. Concrete surfaces are vulnerable to different types of abrasion. For instance, surfaces may wear down due to the constant movement of vehicles or be eroded by solids carried in water, as seen in concrete canal linings. Specific tests are conducted to measure the abrasion resistance of concrete.
One such test is the revolving disc test, where three plates...
209

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Related Experiment Video

Updated: Sep 16, 2025

Author Spotlight: Efficient Image Recognition Using Directional Gradient Histogram Technique and Support Vector Machines
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Use of BOIvy Optimization Algorithm-Based Machine Learning Models in Predicting the Compressive Strength of Bentonite

Shuai Huang1, Chuanqi Li1, Jian Zhou1

  • 1School of Resources and Safety Engineering, Central South University, Changsha 410083, China.

Materials (Basel, Switzerland)
|July 12, 2025
PubMed
Summary
This summary is machine-generated.

Machine learning models accurately predict bentonite plastic concrete (BPC) compressive strength (CS). The optimized Bayesian Ivy-Artificial Neural Network (ANN) model shows superior performance, identifying key factors like water and curing time.

Keywords:
Bayesian optimizationIvy algorithmbentonite plastic concretecompressive strengthmodel interpretability

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Area of Science:

  • Materials Science and Engineering
  • Civil Engineering
  • Artificial Intelligence in Materials

Background:

  • Bentonite plastic concrete (BPC) offers structural and heavy metal adsorption benefits.
  • Accurate compressive strength (CS) prediction is vital for BPC design.
  • Traditional CS testing methods are time-consuming, costly, and uncertain.

Purpose of the Study:

  • To develop and evaluate machine learning (ML) models for predicting BPC compressive strength (CS).
  • To enhance ML model prediction accuracy using meta-heuristic optimization.
  • To identify key factors influencing BPC CS.

Main Methods:

  • Machine learning models including Support Vector Regression (SVR), Artificial Neural Network (ANN), and Random Forest (RF) were employed.
  • The Ivy algorithm integrated with Bayesian optimization (BOIvy) was used to optimize ML models.
  • Performance was evaluated using statistical indices (R², RMSE, U₁, U₂, VAF) and interpretability methods (SHAP, sensitivity analysis).

Main Results:

  • The BOIvy-ANN model demonstrated superior predictive performance with optimal statistical indices.
  • Water content, curing time, and cement were identified as the most influential factors on CS prediction.
  • SHAP and sensitivity analyses provided insights into model interpretability.

Conclusions:

  • Optimized machine learning models, particularly BOIvy-ANN, offer a reliable alternative to traditional methods for BPC CS prediction.
  • The study highlights the potential of AI techniques in estimating the performance of advanced construction materials.
  • Understanding influential factors aids in the efficient design and application of BPC.