Asif Ahmed, Md Nasir Uddin, Muhammad Akbar, Rania Salih, Mohammad Arsalan Khan, Hossein Bisheh, Timon Rabczuk
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引用次数: 0
摘要
本研究的重点是使用各种机器学习(ML)模型来评估用玻璃纤维增强聚合物(GFRP)条加固的超高性能混凝土(UHPC)梁的剪切行为。本研究的主要目的是使用 ML 模型预测使用玻璃纤维增强聚合物(GFRP)条加固的超高性能混凝土(UHPC)梁的剪切强度。我们使用了四种不同的 ML 模型:支持向量机 (SVM)、人工神经网络 (ANN)、随机森林 (R.F.) 和极梯度提升 (XGBoost)。研究中使用的实验数据库来自各种文献资料,包括 54 个测试观测点和 11 个输入特征。这些输入特征可能是与 UHPC 梁和 GFRP 杆件的成分、几何形状和属性相关的参数。为确保 ML 模型的通用性和可扩展性,采用了随机搜索方法来调整算法的超参数。这一调整过程有助于提高模型在预测剪切强度时的性能。该研究使用 ACI318M-14 和 Eurocode 2 标准建筑规范来预测 GFRP 杆件加固的 UHPC 工字形梁的抗剪承载力行为。ML 模型的预测结果与这些建筑规范标准得出的结果进行了比较。研究结果表明,在所研究的 ML 模型中,XGBoost 模型的预测测试性能最高。研究采用了 SHAP(SHapley Additive exPlanations)分析法来评估每个输入参数在 ML 模型预测能力中的重要性。泰勒图用于统计比较 ML 模型的准确性。本研究得出结论:ML 模型,尤其是 XGBoost,可以有效预测 GFRP 杆件加固 UHPC 工字梁的剪切承载力行为。
Prediction of shear behavior of glass FRP bars-reinforced ultra-highperformance concrete I-shaped beams using machine learning
This study focuses on using various machine learning (ML) models to evaluate the shear behaviors of ultra-high-performance concrete (UHPC) beams reinforced with glass fiber-reinforced polymer (GFRP) bars. The main objective of the study is to predict the shear strength of UHPC beams reinforced with GFRP bars using ML models. We use four different ML models: support vector machine (SVM), artificial neural network (ANN), random forest (R.F.), and extreme gradient boosting (XGBoost). The experimental database used in the study is acquired from various literature sources and comprises 54 test observations with 11 input features. These input features are likely parameters related to the composition, geometry, and properties of the UHPC beams and GFRP bars. To ensure the ML models' generalizability and scalability, random search methods are utilized to tune the hyperparameters of the algorithms. This tuning process helps improve the performance of the models when predicting the shear strength. The study uses the ACI318M-14 and Eurocode 2 standard building codes to predict the shear capacity behavior of GFRP bars-reinforced UHPC I-shaped beams. The ML models' predictions are compared to the results obtained from these building code standards. According to the findings, the XGBoost model demonstrates the highest predictive test performance among the investigated ML models. The study employs the SHAP (SHapley Additive exPlanations) analysis to assess the significance of each input parameter in the ML models' predictive capabilities. A Taylor diagram is used to statistically compare the accuracy of the ML models. This study concludes that ML models, particularly XGBoost, can effectively predict the shear capacity behavior of GFRP bars-reinforced UHPC I-shaped beams.
期刊介绍:
It is the objective of this journal to provide an effective medium for the dissemination of recent advances and original works in mechanics and materials'' engineering and their impact on the design process in an integrated, highly focused and coherent format. The goal is to enable mechanical, aeronautical, civil, automotive, biomedical, chemical and nuclear engineers, researchers and scientists to keep abreast of recent developments and exchange ideas on a number of topics relating to the use of mechanics and materials in design.
Analytical synopsis of contents:
The following non-exhaustive list is considered to be within the scope of the International Journal of Mechanics and Materials in Design:
Intelligent Design:
Nano-engineering and Nano-science in Design;
Smart Materials and Adaptive Structures in Design;
Mechanism(s) Design;
Design against Failure;
Design for Manufacturing;
Design of Ultralight Structures;
Design for a Clean Environment;
Impact and Crashworthiness;
Microelectronic Packaging Systems.
Advanced Materials in Design:
Newly Engineered Materials;
Smart Materials and Adaptive Structures;
Micromechanical Modelling of Composites;
Damage Characterisation of Advanced/Traditional Materials;
Alternative Use of Traditional Materials in Design;
Functionally Graded Materials;
Failure Analysis: Fatigue and Fracture;
Multiscale Modelling Concepts and Methodology;
Interfaces, interfacial properties and characterisation.
Design Analysis and Optimisation:
Shape and Topology Optimisation;
Structural Optimisation;
Optimisation Algorithms in Design;
Nonlinear Mechanics in Design;
Novel Numerical Tools in Design;
Geometric Modelling and CAD Tools in Design;
FEM, BEM and Hybrid Methods;
Integrated Computer Aided Design;
Computational Failure Analysis;
Coupled Thermo-Electro-Mechanical Designs.