Machine learning for predicting mechanical behavior of concrete beams with 3D printed TPMS

Kim Tran-Quoc, Lieu B. Nguyen, V. Luong, H. Nguyen-Xuan
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引用次数: 1

Abstract

Bioinspired structures are remarkable porous structures with great strength-to-weight ratios. Hence, they have been applied in various fields including biomedical, transportation, and aerospace materials, etc. Recent studies have shown the significant impact of the plastic 3D printed triply periodic minimal surfaces (TPMS) structure on the cement beam including increasing the peak load, reducing the deflection, and improving the ductility. In this study, a machine learning (ML) surrogate model has been conducted to predict the beam behavior under static bending load. At first, various combinations of plastic volume fractions and numbers of core layers have been adopted to reinforce the constituent beam. The finite element method (FEM) was implemented to investigate the influences of these reinforcement strategies. Next, the above data were employed to create the ML model. A three-process assessment was proposed to achieve the most suitable model for the present problem, these processes were the model hyperparameter tuning, the performance assessment, and the handling overfitting with deep learning (DL) techniques. Consequently, both beam peak loads and maximum deflections were proportional to the volume fraction. The increment in TPMS layers could lead to the enhancement in both traits but with a nonlinear relationship. Furthermore, each trait may be a ceiling value that could not be exceeded with a specific volume fraction despite any number of layers. This conclusion was indicated by the surrogate model predictions. The final model in this study could deal with noisy data from FEM and with the support of a new early stopping condition, excellent performance could be found on both train and test data. The maximum deviations of 2.5% and 3.5% for peak loads and maximum midpoint displacements, respectively, have verified the robustness of the present surrogate model.    
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用3D打印TPMS预测混凝土梁力学行为的机器学习
仿生结构是一种显著的多孔结构,具有很高的强度与重量比。因此,它们已被应用于生物医学、交通运输和航空航天材料等各个领域。最近的研究表明,塑料3D打印三周期最小表面(TPMS)结构对水泥梁有显著的影响,包括增加峰值载荷,减少挠度,提高延性。在这项研究中,机器学习(ML)代理模型已被用于预测静态弯曲荷载下的梁的行为。首先,采用塑性体积分数和核心层数的不同组合对构件梁进行加固。采用有限元方法分析了不同加固策略对结构的影响。接下来,利用上述数据创建ML模型。为了获得最适合当前问题的模型,提出了三个过程的评估,即模型超参数调整、性能评估和使用深度学习技术处理过拟合。因此,梁的峰值载荷和最大挠度都与体积分数成正比。TPMS层数的增加会导致两种性状的增强,但呈非线性关系。此外,无论层数多少,每个性状都可能是一个特定体积分数不能超过的上限值。这一结论得到了代理模型预测的证实。本研究最终建立的模型能够处理有限元数据中的噪声,并且在新的早停条件的支持下,对列车和试验数据都具有良好的性能。峰值荷载和最大中点位移的最大偏差分别为2.5%和3.5%,验证了该替代模型的鲁棒性。
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