Wang Hongwei, Ding Yuanbo, Kong Yu, Sun Daoyuan, Shi Ying, Cai Xin
School of Resources and Safety Engineering, Central South University, Changsha 410083, China.
China Construction Fifth Engineering Division Corp., Ltd., Changsha 410004, China.
Materials (Basel). 2024 Sep 27;17(19):4744. doi: 10.3390/ma17194744.
Unconfined compressive strength (UCS) is a critical property for assessing the engineering performances of sustainable materials, such as cement-fly ash mortar (CFAM), in the design of construction engineering projects. The experimental determination of UCS is time-consuming and expensive. Therefore, the present study aims to model the UCS of CFAM with boosting machine learning methods. First, an extensive database consisting of 395 experimental data points derived from the literature was developed. Then, three typical boosting machine learning models were employed to model the UCS based on the database, including gradient boosting regressor (GBR), light gradient boosting machine (LGBM), and Ada-Boost regressor (ABR). Additionally, the importance of different input parameters was quantitatively analyzed using the SHapley Additive exPlanations (SHAP) approach. Finally, the best boosting machine learning model's prediction accuracy was compared to ten other commonly used machine learning models. The results indicate that the GBR model outperformed the LGBM and ABR models in predicting the UCS of the CFAM. The GBR model demonstrated significant accuracy, with no significant difference between the measured and predicted UCS values. The SHAP interpretations revealed that the curing time (T) was the most critical feature influencing the UCS values. At the same time, the chemical composition of the fly ash, particularly AlO, was more influential than the fly-ash dosage (FAD) or water-to-binder ratio (W/B) in determining the UCS values. Overall, this study demonstrates that SHAP boosting machine learning technology can be a useful tool for modeling and predicting UCS values of CFAM with good accuracy. It could also be helpful for CFAM design by saving time and costs on experimental tests.
无侧限抗压强度(UCS)是评估可持续材料(如水泥粉煤灰砂浆(CFAM))在建筑工程项目设计中的工程性能的关键特性。UCS的实验测定既耗时又昂贵。因此,本研究旨在使用增强机器学习方法对CFAM的UCS进行建模。首先,建立了一个由395个来自文献的实验数据点组成的广泛数据库。然后,基于该数据库,采用三种典型的增强机器学习模型对UCS进行建模,包括梯度提升回归器(GBR)、轻量级梯度提升机(LGBM)和Ada-Boost回归器(ABR)。此外,使用SHapley加法解释(SHAP)方法对不同输入参数的重要性进行了定量分析。最后,将最佳增强机器学习模型的预测准确性与其他十种常用机器学习模型进行了比较。结果表明,在预测CFAM的UCS方面,GBR模型优于LGBM和ABR模型。GBR模型显示出显著的准确性,实测和预测的UCS值之间没有显著差异。SHAP解释表明,养护时间(T)是影响UCS值的最关键特征。同时,在确定UCS值时,粉煤灰的化学成分,特别是AlO,比粉煤灰用量(FAD)或水胶比(W/B)更具影响力。总体而言,本研究表明,SHAP增强机器学习技术可以成为一种有用的工具,以良好的准确性对CFAM的UCS值进行建模和预测。它还可以通过节省实验测试的时间和成本,对CFAM设计有所帮助。