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Stochastic 3D modeling of Ostwald ripening at ultra-high volume fractions of the coarsening phase

机译:粗化阶段超高体积分数下Ostwald熟化的随机3D模型

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We present a (dynamic) stochastic simulation model for 3D grain morphologies undergoing a grain coarsening phenomenon known as Ostwald ripening. For low volume fractions of the coarsening phase, the classical LSW theory predicts a power-law evolution of the mean particle size and convergence toward self-similarity of the particle size distribution; experiments suggest that this behavior holds also for high volume fractions. In the present work, we have analyzed 3D images that were recorded in situ over time in semisolid Al-Cu alloys manifesting ultra-high volume fractions of the coarsening (solid) phase. Using this information we developed a stochastic simulation model for the 3D morphology of the coarsening grains at arbitrary time steps. Our stochastic model is based on random Laguerre tessellations and is by definition self-similar-i.e. it depends only on the mean particle diameter, which in turn can be estimated at each point in time. For a given mean diameter, the stochastic model requires only three additional scalar parameters, which influence the distribution of particle sizes and their shapes. An evaluation shows that even with this minimal information the stochastic model yields an excellent representation of the statistical properties of the experimental data.
机译:我们提出了一种3D晶粒形态的(动态)随机模拟模型,该模型正在经历称为Ostwald熟化的晶粒粗化现象。对于粗化阶段的低体积分数,经典的LSW理论预测平均粒径的幂律演变,并趋向于粒径分布的自相似性。实验表明,这种行为也适用于高体积分数。在目前的工作中,我们分析了随时间推移在半固态Al-Cu合金中原位记录的3D图像,这些图像显示出超高体积分数的粗化(固态)相。利用这些信息,我们为任意时间步长的粗化晶粒的3D形态开发了一个随机模拟模型。我们的随机模型基于随机Laguerre镶嵌,并且根据定义是自相似的。它仅取决于平均粒径,而平均粒径又可以在每个时间点进行估算。对于给定的平均直径,随机模型仅需要三个附加的标量参数,这些参数会影响粒径及其形状的分布。评估表明,即使只有很少的信息,随机模型也可以很好地表示实验数据的统计特性。

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