2023
DOI: 10.3390/su15129170
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Improvement of Computational Efficiency and Accuracy by Firefly Algorithm and Random Forest for Compressive Strength Modeling of Recycled Concrete

Abstract: It is an important direction for the sustainable development of pavement to mix the discarded concrete blocks with gradation according to a certain proportion after crushing, cleaning and other technological processes, partially or completely replace aggregate, and then add cement, water, and so on to make recycled concrete for pavement paving, but the traditional evaluation model for the compressive strength (CS) of recycled concrete cannot meet the requirements of efficient calculation. To address such issue… Show more

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“…To these aims, the use of progressive methods is needed to establish evaluation relationships. Recently, researchers used machine learning methods to investigate the compressive strength of concrete, e.g., artificial neural networks (ANNs) [28], ensemble learning [29], adaptive neuro-fuzzy inference systems and gene expression programming [30], and gray correlation analysis [31]. There is a common feature in these studies, which is the use of multiple machine learning models integrated together so as to prevent the limitations of evaluation results, such as low accuracy and generalization.…”
Section: Introductionmentioning
confidence: 99%
“…To these aims, the use of progressive methods is needed to establish evaluation relationships. Recently, researchers used machine learning methods to investigate the compressive strength of concrete, e.g., artificial neural networks (ANNs) [28], ensemble learning [29], adaptive neuro-fuzzy inference systems and gene expression programming [30], and gray correlation analysis [31]. There is a common feature in these studies, which is the use of multiple machine learning models integrated together so as to prevent the limitations of evaluation results, such as low accuracy and generalization.…”
Section: Introductionmentioning
confidence: 99%