首页> 外文会议>ASME international mechanical engineering congress and exposition >A Verified Non-Linear Regression Model For Elastic Stiffness Estimates OF Finite Composite Domains Considering Combined Effects of Volume Fractions, Shapes, Orientations, Locations, And Number Of Multiple Inclusions
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A Verified Non-Linear Regression Model For Elastic Stiffness Estimates OF Finite Composite Domains Considering Combined Effects of Volume Fractions, Shapes, Orientations, Locations, And Number Of Multiple Inclusions

机译:考虑体积分数,形状,方向,位置和多个夹杂物数量的综合影响的有限复合域弹性刚度估计的验证非线性回归模型

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A non-linear regression model using SAS/STAT (JMP® software; Proc regression module) is developed for estimating the elastic stiffness of finite composite domains considering the combined effects of volume fractions, shapes, orientations, inclusion locations, and number of multiple inclusions. These estimates are compared to numerical solutions that utilized another developed homogenization methodology by the authors (dubbed the generalized stiffness formulation, GSF) to numerically determine the elastic stiffness tensor of a composite domain having multiple inclusions with various combinations of geometric attributes. For each inclusion, these considered variables represent the inclusions' combined attributes of volume fraction, aspect ratio, orientation, number of inclusions, and their locations. The GSF methodology's solutions were compared against literature-reported solutions of simple cases according to such well-known techniques as Mori-Tanaka and generalized self-consistent type methods. In these test cases, the effect of only one variable was considered at a time: volume fraction, aspect ratio, or orientation (omitting the number and locations of inclusions). For experimental corroboration of the numerical solutions, testing (uniaxial compression) was performed on test cases of 3D printed test cubes. The regression equation returns estimates of the composite's ratio of normalized longitudinal modulus (E11) to that of the matrix modulus (Em) or E11/Em when considering any combination of all of the aforementioned inclusions' variables. All parameters were statistically analyzed with the parameters retained are only those deemed statistically significant (p-values less than 0.05). Values returned by the regression stiffness formulation solutions were compared against values returned by the GSF formulation numerical and against the experimentally found stiffness values. Results show good agreement between the regression model estimates as compared with both numerical and experimental results.
机译:考虑到体积分数,形状,方向,夹杂物位置和多个夹杂物的数量的综合影响,开发了使用SAS / STAT的非线性回归模型(JMP®软件; Proc回归模块)来估计有限复合域的弹性刚度。 。将这些估计值与使用由作者开发的另一种均质化方法(称为广义刚度公式,GSF)的数值解进行比较,以数值确定具有多个包含不同几何属性组合的夹杂物的复合材料区域的弹性刚度张量。对于每个夹杂物,这些考虑的变量表示夹杂物的体积分数,长宽比,方向,夹杂物数量及其位置的组合属性。根据著名的技术,如森田中和广义自洽类型方法,将GSF方法论的解决方案与文献报道的简单案例的解决方案进行了比较。在这些测试案例中,一次仅考虑一个变量的影响:体积分数,纵横比或方向(忽略夹杂物的数量和位置)。为了对数值解进行实验验证,对3D打印测试立方体的测试用例进行了测试(单轴压缩)。当考虑所有上述内含物变量的任意组合时,回归方程返回归一化纵向模量(E11)与基质模量(Em)或E11 / Em的复合材料比率的估计值。对所有参数进行统计分析,保留的参数仅是那些被认为具有统计学意义的参数(p值小于0.05)。将回归刚度公式解决方案返回的值与GSF公式数值返回的值以及实验找到的刚度值进行比较。结果表明,与数值和实验结果相比,回归模型估计值之间具有良好的一致性。

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