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An artificial neural network approach to multiphase continua constitutive modeling

机译:人工神经网络方法进行多相连续本构建模

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Constitutive equations describe intrinsic relationships among sets of material system parameters. This study utilizes artificial neural networks in place of a traditional micromechanical approach to calculate the global (macroscopic) elastic properties of composite materials given the local (microscopic) properties and local geometry. This approach is shown to be more computationally efficient than conventional numerical micromechanical approaches. An eight sub-celled representative volume element is used for the local geometry. Multi target artificial neural networks (MTANNs) and single target artificial neural networks are studied for applicability in predicting the global properties. The best performing MTANN achieves a precision of 9%. The single target artificial neural networks (STANNs) perform best and predicts the global properties within a target error of 5.3%. The computation time is 1.8 s for all six STANNs to predict six global properties for 19,683 different microstructures.
机译:本构方程描述了材料系统参数集之间的本征关系。这项研究利用人工神经网络代替了传统的微机械方法,以给定局部(微观)特性和局部几何形状来计算复合材料的整体(宏观)弹性特性。与常规的数值微机械方法相比,该方法显示出更高的计算效率。八个子单元的代表性体积元素用于局部几何。研究了多目标人工神经网络(MTANN)和单目标人工神经网络在预测全局属性方面的适用性。性能最好的MTANN达到9%的精度。单一目标人工神经网络(STANN)表现最佳,并在5.3%的目标误差内预测了全局属性。所有六个STANN的计算时间为1.8 s,以预测19,683个不同微结构的六个全局属性。

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