Estimation of compressive strength of cement mortars using impulse excitation technique and a genetic algorithm

Author:

Baroud Muftah Mohamed1,Sari Arif2,Abdullaev Sherzod Shukhratovich3,Samavatian Majid4,Samavatian Vahid5

Affiliation:

1. Lecturer, Department of Computer Science, Faculty of Computing, Universiti Teknologi Malaysia, Skudai, Johor, Malaysia

2. Professor, Department of Management Information Systems, Girne American University, Kyrenia, North Cyprus, Turkey (co-corresponding author: )

3. Senior Researcher, Faculty of Chemical Engineering, New Uzbekistan University, Tashkent, Uzbekistan; Scientific and Innovation Department, Tashkent State Pedagogical University named after Nizami, Tashkent, Uzbekistan; Department of Organic Chemistry, Andijan Machine-Building Institute, Andijan, Uzbekistan

4. Researcher, Department of Advanced Materials and Renewable Energy, Iranian Research Organization for Science and Technology (IROST), Tehran, Iran; Research and Development Group, Surin Azma Energy Co. Ltd, Tehran, Iran (corresponding author: )

5. Researcher, Research and Development Group, Surin Azma Energy Co. Ltd, Tehran, Iran; Department of Engineering, Sharif University of Technology, Tehran, Iran

Abstract

Compressive strength, a crucial mechanical property of cement mortars, is typically measured destructively. However, there is a need to evaluate the strength of unique cement-based samples at various ages without causing damage. In this paper, a predictive framework using a genetic algorithm (GA) is proposed for estimating the compressive strength of ordinary cement-based mortars based on their dynamic elastic modulus, measured non-destructively using the impulse excitation technique. By combining the Popovics model (PM) and the Lydon–Balendran model (LBM), the static elastic modulus of samples was calculated using constant coefficients, representing an equivalent compressive strength. A GA was then employed to determine optimal values for these coefficients. The results showed that the LBM-based strength was dominant in the middle range of the dynamic Young's modulus while the PM-based strength was dominant for higher and lower values of the dynamic Young's modulus. The model was found to have a small root mean square error (3.1%). The findings suggest that this non-destructive model has potential for predicting the mechanical properties of cement mortars. It allows efficient evaluation of compressive strength without destructive testing, offering advantages for reliable assessments of cement-based materials.

Publisher

Thomas Telford Ltd.

Subject

General Materials Science,Building and Construction

Reference39 articles.

1. ACI (American Concrete Institute) (1992) ACI 363R-92: Report on high strength concrete. ACI, Farmington Hills, MI, USA.

2. ACI (2008a) ACI 318-08: Building code requirements for structural concrete and commentary. ACI, Farmington Hills, MI, USA.

3. ACI (2008b) ACI 209.2R-08: Guide for modeling and calculating shrinkage and creep in hardened concrete. ACI, Farmington Hills, MI, USA.

4. Surrogate models for the compressive strength mapping of cement mortar materials

5. Effect of Addition of Alccofine on the Compressive Strength of Cement Mortar Cubes

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