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A two-scale stochastic framework for predicting failure strength probability of heterogeneous materials

机译:预测异质材料破坏强度概率的两尺度随机框架

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In the present study, a two-scale stochastic framework has been proposed for predicting the failure strength probability of heterogeneous materials. The analysis at both scales (meso and macro) is performed under plane stress condition. The meso-scale analysis is performed by XFEM whereas the macro-scale analysis is performed by FEM. The heterogeneities (pores and reinforced particles) are considered at meso-scale. The effect of shape, size, clustering and volume fraction of heterogeneities is analyzed at meso-scale. A new scheme is developed for modeling the arbitrary shape heterogeneities using periodic B-splines. An adaptive hanging node mesh refinement technique is employed to reduce the computational cost. Maximum principal stress failure criterion has been implemented for modeling both tensile and compressive behaviors at meso-scale. The volume fraction of pores and reinforcement particles is distributed stochastically to the elements at macro-scale. The average volume fraction of the pores is taken as 8%, 10%, 12% and 14% whereas the average volume fraction of the reinforced particles is kept constant at 20%. The statistical analysis of numerical data is performed through normal and Weibull distribution fits. K-S goodness of fit predicts that the numerical data is better fitted by the normal distribution. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在本研究中,提出了一种用于预测异质材料破坏强度概率的两尺度随机框架。在平面应力条件下进行两个尺度(中观和宏观)的分析。中尺度分析由XFEM执行,而宏观分析由FEM执行。非均质性(孔和增强颗粒)被认为是介观尺度的。在细观尺度上分析了异质性的形状,大小,聚类和体积分数的影响。开发了一种新的方案,用于使用周期性B样条对任意形状的异质性进行建模。采用自适应悬挂节点网格细化技术来降低计算成本。已实现最大主应力破坏准则,以便在中尺度上模拟拉伸和压缩行为。孔和增强颗粒的体积分数在宏观上随机分布到元素上。孔的平均体积分数取为8%,10%,12%和14%,而增强颗粒的平均体积分数保持恒定为20%。数值数据的统计分析是通过正态分布和威布尔分布拟合进行的。 K-S拟合优度表明,通过正态分布可以更好地拟合数值数据。 (C)2017 Elsevier Ltd.保留所有权利。

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