Carbonation depth prediction and parameter influential analysis of recycled concrete buildings

IF 7.2 2区 工程技术 Q1 CHEMISTRY, MULTIDISCIPLINARY
Dianchao Wang , Qihang Tan , Yiren Wang , Gaoyang Liu , Zheng Lu , Chongqiang Zhu , Bochao Sun
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Abstract

With the development of the circular economy and low-carbon society, the large-scale application of construction solid waste in buildings, such as recycled concrete, is becoming imperative. Accurately predicting the carbonation depth of recycled concrete is of great significance. Quantitatively analyzing the impact of each parameter on carbonation and elucidating the relationships between these parameters present challenges in predicting the carbonation of recycled concrete. In this study, different machine learning models and prediction equation models were applied and compared to predict the carbonation depth of 576 datasets associated with recycled concrete. The machine learning models used include Automation Machine Learning (AutoML), LightGBM, CatBoost, Neural Networks, Extra Trees, Random Forest, XGBoost, KNN (K-Nearest Neighbor). The results indicate that the machine learning method shows higher accuracy than the traditional equation, the AutoML model exhibits the best prediction accuracy among the investigated machine learning models, and carbonation test results further verified the favorable carbonation depth prediction effects of AutoML model. Furthermore, SHAP (Shapley Additive Explanations) was utilized to quantitatively analyze and explain the prediction results. The results demonstrate that carbonation time and the water to cement (W/C) ratio of recycled concrete have the most significant impact on the carbonation depth of recycled concrete buildings.

再生混凝土建筑的碳化深度预测和参数影响分析
随着循环经济和低碳社会的发展,再生混凝土等建筑固体废弃物在建筑中的大规模应用势在必行。准确预测再生混凝土的碳化深度意义重大。定量分析各参数对碳化的影响以及阐明这些参数之间的关系是预测再生混凝土碳化的难题。在本研究中,应用了不同的机器学习模型和预测方程模型,并对其进行了比较,以预测 576 个与再生混凝土相关的数据集的碳化深度。使用的机器学习模型包括自动化机器学习(AutoML)、LightGBM、CatBoost、神经网络、额外树、随机森林、XGBoost、KNN(K-近邻)。结果表明,机器学习方法比传统方程显示出更高的准确性,在所研究的机器学习模型中,AutoML 模型显示出最好的预测准确性,碳化测试结果进一步验证了 AutoML 模型良好的碳化深度预测效果。此外,还利用 Shapley Additive Explanations(夏普利加法解释)对预测结果进行了定量分析和解释。结果表明,碳化时间和再生混凝土的水灰比(W/C)对再生混凝土建筑的碳化深度影响最大。
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来源期刊
Journal of CO2 Utilization
Journal of CO2 Utilization CHEMISTRY, MULTIDISCIPLINARY-ENGINEERING, CHEMICAL
CiteScore
13.90
自引率
10.40%
发文量
406
审稿时长
2.8 months
期刊介绍: The Journal of CO2 Utilization offers a single, multi-disciplinary, scholarly platform for the exchange of novel research in the field of CO2 re-use for scientists and engineers in chemicals, fuels and materials. The emphasis is on the dissemination of leading-edge research from basic science to the development of new processes, technologies and applications. The Journal of CO2 Utilization publishes original peer-reviewed research papers, reviews, and short communications, including experimental and theoretical work, and analytical models and simulations.
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