Fawad Muhammad, Alabduljabbar Hisham, Farooq Furqan, Najeh Taoufik, Gamil Yaser, Ahmed Bilal
Department of Structural Engineering, Faculty of Civil Engineering, Silesian University of Technology, Akademicka 2, 44-100, Gliwice, Poland.
Budapest University of Technology and Economics Hungary, Budapest, Hungary.
Sci Rep. 2024 Jun 20;14(1):14252. doi: 10.1038/s41598-024-64204-3.
Graphene nanoplatelets (GrNs) emerge as promising conductive fillers to significantly enhance the electrical conductivity and strength of cementitious composites, contributing to the development of highly efficient composites and the advancement of non-destructive structural health monitoring techniques. However, the complexities involved in these nanoscale cementitious composites are markedly intricate. Conventional regression models encounter limitations in fully understanding these intricate compositions. Thus, the current study employed four machine learning (ML) methods such as decision tree (DT), categorical boosting machine (CatBoost), adaptive neuro-fuzzy inference system (ANFIS), and light gradient boosting machine (LightGBM) to establish strong prediction models for compressive strength (CS) of graphene nanoplatelets-based materials. An extensive dataset containing 172 data points was gathered from published literature for model development. The majority portion (70%) of the database was utilized for training the model while 30% was used for validating the model efficacy on unseen data. Different metrics were employed to assess the performance of the established ML models. In addition, SHapley Additve explanation (SHAP) for model interpretability. The DT, CatBoost, LightGBM, and ANFIS models exhibited excellent prediction efficacy with R-values of 0.8708, 0.9999, 0.9043, and 0.8662, respectively. While all the suggested models demonstrated acceptable accuracy in predicting compressive strength, the CatBoost model exhibited exceptional prediction efficiency. Furthermore, the SHAP analysis provided that the thickness of GrN plays a pivotal role in GrNCC, significantly influencing CS and consequently exhibiting the highest SHAP value of + 9.39. The diameter of GrN, curing age, and w/c ratio are also prominent features in estimating the strength of graphene nanoplatelets-based cementitious materials. This research underscores the efficacy of ML methods in accurately forecasting the characteristics of concrete reinforced with graphene nanoplatelets, providing a swift and economical substitute for laborious experimental procedures. It is suggested that to improve the generalization of the study, more inputs with increased datasets should be considered in future studies.
石墨烯纳米片(GrNs)作为一种很有前景的导电填料出现,可显著提高水泥基复合材料的导电性和强度,有助于高效复合材料的开发以及无损结构健康监测技术的进步。然而,这些纳米级水泥基复合材料所涉及的复杂性明显错综复杂。传统回归模型在充分理解这些复杂成分方面存在局限性。因此,当前研究采用了四种机器学习(ML)方法,如决策树(DT)、分类提升机(CatBoost)、自适应神经模糊推理系统(ANFIS)和轻梯度提升机(LightGBM),来建立基于石墨烯纳米片材料抗压强度(CS)的强大预测模型。从已发表的文献中收集了一个包含172个数据点的广泛数据集用于模型开发。数据库的大部分(70%)用于训练模型,而30%用于验证模型对未见数据的有效性。采用了不同的指标来评估所建立的ML模型的性能。此外,还进行了用于模型可解释性的SHapley加性解释(SHAP)。DT、CatBoost、LightGBM和ANFIS模型分别表现出优异的预测效果,R值分别为0.8708、0.9999、0.9043和0.8662。虽然所有建议的模型在预测抗压强度方面都表现出可接受的准确性,但CatBoost模型表现出卓越的预测效率。此外,SHAP分析表明,GrN的厚度在GrNCC中起着关键作用,对CS有显著影响,因此表现出最高的SHAP值+9.39。GrN的直径、养护龄期和水灰比也是估算基于石墨烯纳米片的水泥基材料强度的突出特征。本研究强调了ML方法在准确预测石墨烯纳米片增强混凝土特性方面的有效性,为繁琐的实验程序提供了一种快速且经济的替代方法。建议为了提高研究的泛化性,未来研究应考虑更多增加数据集的输入。