Qing Shuangquan, Li Chuanxi
Department of Civil Engineering, Changsha University of Science & Technology, Changsha, 410114, China.
State Key Laboratory of Featured Metal Materials and Life-Cycle Safety for Composite Structures, Nanning, 530004, China.
Sci Rep. 2024 Jul 3;14(1):15322. doi: 10.1038/s41598-024-66123-9.
The present study introduces a novel approach utilizing machine learning techniques to predict the crucial mechanical properties of engineered cementitious composites (ECCs), spanning from typical to exceptionally high strength levels. These properties, including compressive strength, flexural strength, tensile strength, and tensile strain capacity, can not only be predicted but also precisely estimated. The investigation encompassed a meticulous compilation and examination of 1532 datasets sourced from pertinent research. Four machine learning algorithms, linear regression (LR), K nearest neighbors (KNN), random forest (RF), and extreme gradient boosting (XGB), were used to establish the prediction model of ECC mechanical properties and determine the optimal model. The optimal model was utilized to employ SHapley Additive exPlanations (SHAP) for scrutinizing feature importance and conducting an in-depth parametric analysis. Subsequently, a comprehensive control strategy was devised for ECC mechanical properties. This strategy can provide actionable guidance for ECC design, equipping engineers and professionals in civil engineering and material science to make informed decisions throughout their design endeavors. The results show that the RF model demonstrated the highest prediction accuracy for compressive strength and flexural strength, with R values of 0.92 and 0.91 on the test set. The XGB model outperformed in predicting tensile strength and tensile strain capacity, with R values of 0.87 and 0.80 on the test set, respectively. The prediction of tensile strain capacity was the least accurate. Meanwhile, the MAE of the tensile strain capacity was a mere 0.84%, smaller than the variability (1.77%) of the test results in previous research. Compressive strength and tensile strength demonstrated high sensitivity to variations in both water-cement ratio (W) and water reducer (WR). In contrast, flexural strength exhibited high sensitivity solely to changes in W. Conversely, the sensitivity of tensile strain capacity to input features was moderate and consistent. The mechanical attributes of ECC emerged from the combined effects of multiple positive and negative features. Notably, WR exerted the most significant influence on compressive strength among all features, whereas polyethylene (PE) fiber emerged as the primary driver affecting flexural strength, tensile strength, and tensile strain capacity.
本研究引入了一种利用机器学习技术预测工程水泥基复合材料(ECC)关键力学性能的新方法,其强度范围涵盖典型强度到极高强度水平。这些性能,包括抗压强度、抗弯强度、抗拉强度和拉伸应变能力,不仅可以预测,还能得到精确估计。该调查精心收集并审查了来自相关研究的1532个数据集。使用四种机器学习算法,即线性回归(LR)、K近邻(KNN)、随机森林(RF)和极端梯度提升(XGB),建立ECC力学性能的预测模型并确定最优模型。利用最优模型采用SHapley加性解释(SHAP)来审查特征重要性并进行深入的参数分析。随后,为ECC力学性能设计了一种全面的控制策略。该策略可为ECC设计提供可操作的指导,使土木工程和材料科学领域的工程师及专业人员在整个设计过程中能够做出明智的决策。结果表明,RF模型在预测抗压强度和抗弯强度方面表现出最高的预测精度,测试集上的R值分别为0.92和0.91。XGB模型在预测抗拉强度和拉伸应变能力方面表现更优,测试集上的R值分别为0.87和0.80。拉伸应变能力的预测准确性最低。同时,拉伸应变能力的平均绝对误差仅为0.84%,小于先前研究中测试结果的变异性(1.77%)。抗压强度和抗拉强度对水灰比(W)和减水剂(WR)的变化均表现出高敏感性。相比之下,抗弯强度仅对W的变化表现出高敏感性。相反,拉伸应变能力对输入特征的敏感性适中且较为一致。ECC的力学属性源自多个正负特征的综合作用。值得注意的是,在所有特征中,WR对抗压强度的影响最为显著,而聚乙烯(PE)纤维是影响抗弯强度、抗拉强度和拉伸应变能力的主要因素。