A comparative analysis of boosting and genetic programming techniques for predicting mechanical properties of soilcrete materials
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- @Article{Bin-Inqiad:2024:mtcomma,
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author = "Waleed {Bin Inqiad} and Muhammad Faisal Javed and
Muhammad Shahid Siddique and Saad S. Alarifi and
Hisham Alabduljabbar",
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title = "A comparative analysis of boosting and genetic
programming techniques for predicting mechanical
properties of soilcrete materials",
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journal = "Materials Today Communications",
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year = "2024",
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volume = "40",
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pages = "109920",
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keywords = "genetic algorithms, genetic programming, Machine
learning, Soilcrete materials, Metakaolin, Compressive
strength, Modulus of elasticity, Shapley analysis, gene
expression programming",
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ISSN = "2352-4928",
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URL = "
https://www.sciencedirect.com/science/article/pii/S2352492824019019",
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DOI = "
doi:10.1016/j.mtcomm.2024.109920",
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abstract = "This study aims to predict compressive strength (CS)
and modulus of elasticity (E) of soilcrete mixes to
foster their widespread use in the industry.
Soilcfigrete has the potential to promote sustainable
construction practices by making use of locally
available raw materials. However, the accurate
determination of mechanical properties of soilcrete
mixes is inevitable to foster their widespread use.
Thus, this study employs different machine learning
algorithms including Extreme Gradient Boosting (XGB),
Gene Expression Programming (GEP), AdaBoost, and Multi
Expression Programming (MEP) for this purpose. The XGB
and AdaBoost algorithms were implemented using python
programming language while MEP and GEP were implemented
using specialized softwares. The data used for model
development was obtained from previously published
literature containing five input parameters and two
output parameters. This data was split into two sets
named training and testing sets for training and
testing of the algorithms respectively. The developed
models for CS and E prediction were validated using
several error metrices and residual comparison. The
objective function value which should be closer to zero
for an accurate model is the least for XGB model for
prediction of both variables (0.0036 for CS and 0.00315
for E). Moreover, shapley analysis was carried out
using XGB model to get insights into the underlying
model framework. The results highlighted that
water-to-binder ratio (W/B), metakaolin (MK), and
ultrasonic pulse velocity (UV) are the most significant
variables for predicting E and CS of soilcrete
materials. These insights can be used practically to
optimise the mixture composition of soilcrete mixes
according to different site requirements",
- }
Genetic Programming entries for
Waleed Bin Inqiad
Muhammad Faisal Javed
Muhammad Shahid Siddique
Saad S Alarifi
Hisham Alabduljabbar
Citations