Prediction of Mechanical Behavior of Epoxy Polymer Using Artificial Neural Networks (ANN) And response Surface Methodology (RSM)

Khalissa Saada, Salah Amroune, Moussa Zaoui
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Abstract

The aim of this study is to analyze the effect of different geometries and sections on the mechanical properties of epoxy specimens. Five tensile tests were carried out on three types of series. The experimental results obtained were 1812.21 MPa, 3.90% and 41.91 MPa for intact specimens, 1450.41 MPa, 2.16% and 21.28 MPa for specimens with hole and 750.77 MPa, 2.77% and 11.89 MPa for specimens with elliptical -notched for Young's modulus, strain and stress respectively. In addition, the experimental results indicated that the mechanical properties of both (Young's modulus value and stress value) were higher in an intact specimen. Afterwards, the nonlinear functional relationship of input parameters between epoxy sample geometries and sections was established using the response surface model (RSM) and the artificial neural network (ANN) to predict the output parameters of mechanical properties (Young's modulus and stress). In addition, the design of experiment was developed by the Analysis of the Application of Variance (ANOVA). The results showed the superiority of the ANN model over the RSM model, where the correlation coefficient values for the model datasets exceed ANN (R2 = 0.984 for Young's modulus and R2 = 0.981 for the constraint).
基于人工神经网络和响应面法的环氧聚合物力学行为预测
本研究的目的是分析不同几何形状和截面对环氧树脂试件力学性能的影响。对三种系列进行了五次拉伸试验。实验结果表明,完整试件的杨氏模量、应变和应力分别为1812.21 MPa、3.90%和41.91 MPa,带孔试件为1450.41 MPa、2.16%和21.28 MPa,椭圆缺口试件为750.77 MPa、2.77%和11.89 MPa。此外,实验结果表明,完整试样的力学性能(杨氏模量值和应力值)都更高。然后,利用响应面模型(RSM)和人工神经网络(ANN)建立环氧树脂试样几何形状与截面之间的非线性函数关系,预测其力学性能输出参数(杨氏模量和应力)。此外,实验设计采用方差分析(ANOVA)进行。结果表明,人工神经网络模型优于RSM模型,模型数据集的相关系数值超过人工神经网络(杨氏模量R2 = 0.984,约束R2 = 0.981)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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