Hooshmand Mohammad Javad, Sakib-Uz-Zaman Chowdhury, Khondoker Mohammad Abu Hasan
Industrial Systems Engineering, Faculty of Engineering and Applied Science, University of Regina, Regina, SK S4S 0A2, Canada.
Materials (Basel). 2023 Nov 15;16(22):7173. doi: 10.3390/ma16227173.
Polymer foams are extensively utilized because of their superior mechanical and energy-absorbing capabilities; however, foam materials of consistent geometry are difficult to produce because of their random microstructure and stochastic nature. Alternatively, lattice structures provide greater design freedom to achieve desired material properties by replicating mesoscale unit cells. Such complex lattice structures can only be manufactured effectively by additive manufacturing or 3D printing. The mechanical properties of lattice parts are greatly influenced by the lattice parameters that define the lattice geometries. To study the effect of lattice parameters on the mechanical stiffness of lattice parts, 360 lattice parts were designed by varying five lattice parameters, namely, lattice type, cell length along the X, Y, and Z axes, and cell wall thickness. Computational analyses were performed by applying the same loading condition on these lattice parts and recording corresponding strain deformations. To effectively capture the correlation between these lattice parameters and parts' stiffness, five machine learning (ML) algorithms were compared. These are Linear Regression (LR), Polynomial Regression (PR), Decision Tree (DT), Random Forest (RF), and Artificial Neural Network (ANN). Using evaluation metrics such as mean squared error (MSE), root mean squared error (RMSE), and mean absolute error (MAE), all ML algorithms exhibited significantly low prediction errors during the training and testing phases; however, the Taylor diagram demonstrated that ANN surpassed other algorithms, with a correlation coefficient of 0.93. That finding was further supported by the relative error box plot and by comparing actual vs. predicted values plots. This study revealed the accurate prediction of the mechanical stiffness of lattice parts for the desired set of lattice parameters.
聚合物泡沫因其卓越的机械性能和能量吸收能力而被广泛应用;然而,由于其随机的微观结构和随机性质,难以生产出几何形状一致的泡沫材料。相比之下,晶格结构通过复制中尺度单元胞,为实现所需材料性能提供了更大的设计自由度。这种复杂的晶格结构只能通过增材制造或3D打印有效地制造出来。晶格部件的机械性能受定义晶格几何形状的晶格参数的极大影响。为了研究晶格参数对晶格部件机械刚度的影响,通过改变五个晶格参数,即晶格类型、沿X、Y和Z轴的单元长度以及单元壁厚,设计了360个晶格部件。对这些晶格部件施加相同的加载条件并记录相应的应变变形,进行了计算分析。为了有效捕捉这些晶格参数与部件刚度之间的相关性,比较了五种机器学习(ML)算法。它们是线性回归(LR)、多项式回归(PR)、决策树(DT)、随机森林(RF)和人工神经网络(ANN)。使用均方误差(MSE)、均方根误差(RMSE)和平均绝对误差(MAE)等评估指标,所有ML算法在训练和测试阶段均表现出极低的预测误差;然而,泰勒图表明ANN超过了其他算法,相关系数为0.93。相对误差箱线图以及实际值与预测值的比较图进一步支持了这一发现。这项研究揭示了对于所需的晶格参数集,能够准确预测晶格部件的机械刚度。