Prediction of Compressive Strength of Concrete Specimens Based on Interpretable Machine Learning

Materials Pub Date : 2024-07-24 DOI:10.3390/ma17153661
Wenhu Wang, Yihui Zhong, Gang Liao, Qing Ding, Tuan Zhang, Xiangyang Li
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Abstract

The aim of this paper is to explore an effective model for predicting the compressive strength of concrete using machine learning technology, as well as to interpret the model using an interpretable method, which overcomes the limitation of the unknowable prediction processes of previous machine learning models. An experimental database containing 228 samples of the compressive strength of standard cubic specimens was built in this study, and six algorithms were applied to build the predictive model. The results show that the XGBoost model has the highest prediction accuracy among all models, as the R2 of the training set and testing set are 0.982 and 0.966, respectively. Further analysis was conducted on the XGBoost model to discuss its applicability. The main steps include the following: (i) obtaining key features, (ii) obtaining trends in the evolution of features, (iii) single-sample analysis, and (iv) conducting a correlation analysis to explore methods of visualizing the variations in the factors that exert influence. The interpretability analyses on the XGBoost model show that the contribution to the compressive strength by each factor is highly in line with the conventional theory. In summary, the XGBoost model proved to be effective in predicting concrete’s compressive strength.
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基于可解释机器学习的混凝土试件抗压强度预测
本文旨在探索一种利用机器学习技术预测混凝土抗压强度的有效模型,并利用一种可解释的方法对模型进行解释,这种方法克服了以往机器学习模型预测过程不可知的局限性。本研究建立了一个包含 228 个标准立方体试件抗压强度样本的实验数据库,并应用六种算法建立了预测模型。结果表明,在所有模型中,XGBoost 模型的预测精度最高,训练集和测试集的 R2 分别为 0.982 和 0.966。我们对 XGBoost 模型进行了进一步分析,以讨论其适用性。主要步骤包括以下几个方面:(i) 获取关键特征;(ii) 获取特征演变趋势;(iii) 单样本分析;(iv) 进行相关性分析,探索影响因素变化的可视化方法。对 XGBoost 模型的可解释性分析表明,各因素对抗压强度的贡献与传统理论高度一致。总之,XGBoost 模型在预测混凝土抗压强度方面被证明是有效的。
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