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  5. AI-based prediction for the strength, cost, and sustainability of eggshell and date palm ash-blended concrete

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Article
en
2025

AI-based prediction for the strength, cost, and sustainability of eggshell and date palm ash-blended concrete

0 Datasets

0 Files

en
2025
Vol 64 (1)
Vol. 64
DOI: 10.1515/rams-2025-0113

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Ali Alateah
Ali Alateah

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Quanwei Zhao
Qi Chen
Ali Alateah
+3 more

Abstract

Abstract Eggshell powder (ESP) and date palm ash (DPA) are increasingly used as sustainable cement substitutes in cementitious composites. This study used multi-expression programming (MEP) to develop prediction models due to its advantage of yielding model equations. The attributes of ESP and DPA-modified concrete chosen for modeling include compressive strength (C-S), eco-strength (E-C-S), and cost-strength ratio (C-S-R). Hyperparameters in MEP were fine-tuned to get the maximum accuracy for predictions. The models were validated using R 2 and statistical checks and analyzing the variance among predictions and real values. The MEP models were noted to be exact in estimating C-S, C-S-R, and E-C-S with an R 2 of 95, 93, and 92%, respectively, indicating good agreement with actual data. Additionally, the ±20% index analysis indicated that all values fall within the acceptable range, validating the model’s reliability. The mathematical expression-based MEP prediction models developed in this study can be applied to future C-S, C-S-R, and E-C-S predictions in ESP–DPA-modified concrete. These models are designed to operate with a predetermined set of input parameters and are incompatible with a variable set of inputs. Additionally, it is imperative to maintain consistency in the units of inputs to obtain precise predictions from the constructed models.

How to cite this publication

Quanwei Zhao, Qi Chen, Ali Alateah, Abdulgafor Alfares, Sadiq Alinsaif, Sahar A. Mostafa (2025). AI-based prediction for the strength, cost, and sustainability of eggshell and date palm ash-blended concrete. , 64(1), DOI: https://doi.org/10.1515/rams-2025-0113.

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Publication Details

Type

Article

Year

2025

Authors

6

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1515/rams-2025-0113

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