Predicting the compressive strength of rubberized concrete containing silica fume using stacking ensemble learning model

IF 7.4 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Construction and Building Materials Pub Date : 2024-09-14 DOI:10.1016/j.conbuildmat.2024.138254
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Abstract

As the construction industry advances toward sustainability, rubberized concrete emerges as a promising material due to its potential for recycling waste rubber. While silica fume (SF) is often used to address the reduced compressive strength resulting from rubber integration, the complex interactions between these materials present significant modeling challenges. This study employs a novel machine learning approach to effectively capture these interactions and accurately predict the compressive strength of SF-enhanced rubberized concrete. Utilizing a dataset comprising 237 experimental data points curated from 25 research studies, an advanced stacking ensemble model was developed. This model features a trainable meta-structure that integrates diverse, hyper-tuned base learners, including Decision Trees (DT), Artificial Neural Networks (ANN), eXtreme Gradient Boosting (XGBoost), Support Vector Machines (SVM), and K-Nearest Neighbors (KNN) regressors. Hyperparameter tuning, performed using 10-fold cross-validation, was applied to enhance overall model performance. The findings show that XGBoost outperformed other base models, achieving an overall Coefficient of Determination (R²) of 0.9194 and a Mean Squared Error (MSE) of 10.5625. The stacking approach, with KNN as the meta-learner, further refined individual model performances, resulting in an improved R² of 0.9397 and an MSE of 7.1671 on the testing data. Compared to traditional voting ensemble techniques, the stacking models offered a more nuanced enhancement of predictive outcomes, while the averaging ensembles were noted for their simplicity and competitive accuracy. Additionally, feature importance analysis using SHapley Additive exPlanations (SHAP) revealed that superplasticizer, rubber content, and SF were the most influential inputs in the developed model.

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利用堆叠集合学习模型预测含硅灰的橡胶混凝土抗压强度
随着建筑行业向可持续发展方向迈进,橡胶混凝土因其回收废橡胶的潜力而成为一种前景广阔的材料。虽然硅灰(SF)经常被用于解决橡胶一体化导致的抗压强度降低问题,但这些材料之间复杂的相互作用给建模带来了巨大挑战。本研究采用了一种新颖的机器学习方法来有效捕捉这些相互作用,并准确预测 SF 增强橡胶混凝土的抗压强度。利用从 25 项研究中收集的 237 个实验数据点组成的数据集,开发了一个先进的堆叠集合模型。该模型以可训练的元结构为特色,整合了多种超调基础学习器,包括决策树(DT)、人工神经网络(ANN)、极梯度提升(XGBoost)、支持向量机(SVM)和K-近邻(KNN)回归器。为提高模型的整体性能,使用 10 倍交叉验证对超参数进行了调整。研究结果表明,XGBoost 的性能优于其他基本模型,总体决定系数 (R²) 为 0.9194,平均平方误差 (MSE) 为 10.5625。以 KNN 作为元学习器的堆叠方法进一步完善了单个模型的性能,使测试数据的 R² 达到 0.9397,MSE 为 7.1671。与传统的投票合集技术相比,堆叠模型能更细致地提高预测结果,而平均合集则以其简单性和具有竞争力的准确性而著称。此外,使用 SHapley Additive exPlanations(SHAP)进行的特征重要性分析表明,在所开发的模型中,超塑化剂、橡胶含量和 SF 是最有影响力的输入。
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来源期刊
Construction and Building Materials
Construction and Building Materials 工程技术-材料科学:综合
CiteScore
13.80
自引率
21.60%
发文量
3632
审稿时长
82 days
期刊介绍: Construction and Building Materials offers an international platform for sharing innovative and original research and development in the realm of construction and building materials, along with their practical applications in new projects and repair practices. The journal publishes a diverse array of pioneering research and application papers, detailing laboratory investigations and, to a limited extent, numerical analyses or reports on full-scale projects. Multi-part papers are discouraged. Additionally, Construction and Building Materials features comprehensive case studies and insightful review articles that contribute to new insights in the field. Our focus is on papers related to construction materials, excluding those on structural engineering, geotechnics, and unbound highway layers. Covered materials and technologies encompass cement, concrete reinforcement, bricks and mortars, additives, corrosion technology, ceramics, timber, steel, polymers, glass fibers, recycled materials, bamboo, rammed earth, non-conventional building materials, bituminous materials, and applications in railway materials.
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Preparation and properties of alkali-activated red mud-based artificial lightweight aggregates Editorial Board Mechanical properties and microscopic mechanisms of deposited nanocarbon reinforced cement mortar Studies on particleboard production using Expanded Polystyrene (EPS) waste as a binder for construction applications Predicting the compressive strength of rubberized concrete containing silica fume using stacking ensemble learning model
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