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A muitiscale approach for model reduction of random microstructures

机译:一种用于随机微观结构模型简化的多尺度方法

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The mechanical properties of a deformed workpiece are sensitive to the initial microstructure. Often, the initial microstructure is random in nature and location specific. To model the variability of properties of the workpiece induced by variability in the initial microstructure, one needs to develop a reduced order stochastic input model for the initial microstructure. The location-dependence of microstructures dramatically increases the dimensionality of the stochastic input and causes the "curse of dimensionality" in a stochastic deformation simulation. To quantify and capture the propagation of uncertainty in multi-scale deformation processes, a novel data-driven bi-orthogonal Karhunen-Loève Expansion (KLE) strategy is introduced. The muitiscale random field representing random microstructures over the workpiece is decomposed simultaneously into a few modes in the macroscale and mesoscale. The macro modes are further expanded through a second-level KLE to separate the random and spatial coordinates. The few resulting random variables are mapped to the uniform distribution via a polynomial chaos (PC) expansion. As a result, the stochastic input complexity is remarkably reduced. Sampling from the reduced random space, new microstructure realizations are reconstructed. By collecting the properties of work-pieces with randomly sampled microstructures, the property statistics are computed. A high-dimensional muitiscale disk forging example of FCC nickel is presented to show the merit of this methodology, and the effect of random initial crystallographic texture on the macroscopic properties.
机译:变形工件的机械性能对初始微观结构敏感。通常,初始的微观结构在性质和位置上都是随机的。为了对由初始微结构中的可变性引起的工件特性的可变性进行建模,需要为初始微结构开发降阶随机输入模型。微结构的位置依赖性极大地增加了随机输入的维数,并在随机变形模拟中引起了“维数的诅咒”。为了量化和捕获多尺度变形过程中不确定性的传播,引入了一种新颖的数据驱动的双向正交Karhunen-Loève扩展(KLE)策略。代表工件上随机微观结构的多尺度随机场同时被分解为宏观和中尺度的几种模式。宏模式通过第二级KLE进一步扩展,以分离随机坐标和空间坐标。少数生成的随机变量通过多项式混沌(PC)展开映射到均匀分布。结果,显着降低了随机输入的复杂度。从减少的随机空间中采样,重新构造了新的微观结构。通过收集具有随机采样的微观结构的工件的特性,可以计算特性统计信息。提出了FCC镍的高维多尺度圆盘锻造实例,以显示该方法的优点以及随机初始晶体织构对宏观性能的影响。

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