Advanced microstructural path modeling of primary recrystallization in aluminum alloys AA5182 and AA5657

MetalMat Pub Date : 2024-03-12 DOI:10.1002/metm.15
R. A. Vandermeer, X. C. Lei, E. F. F. Knipschildt-Okkels, F. Lin, R. E. Sanders, D. Juul Jensen
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Abstract

When analyzing recrystallization kinetics data, it is extremely important to use a model, which has appropriate assumptions for nucleation and growth, including spatial distribution of nuclei, nucleation rate, growth rate, and directionality. In the present work, we reveal how advanced microstructural path modeling (MPM) can successfully fit kinetics data for the complex recrystallization of two different industrial aluminum alloys. Simpler models have failed to fit the data over the entire recrystallization period. The new model allows for spatially clustered nucleation and for different growth rates in different sample directions, whereby the grains evolve with an aspect ratio different from 1. Based on the MPM analysis, the specific nucleation and growth parameters as well as the recrystallized grain sizes are deduced, and the recrystallization characteristics of the two alloys are compared. The work demonstrates the power of quantitative metallography and the wealth of recrystallization information that may be obtained from MPM modeling of such stereological data.

Abstract Image

铝合金 AA5182 和 AA5657 中原生再结晶的高级微观结构路径建模
在分析再结晶动力学数据时,使用具有适当成核和生长假设(包括核的空间分布、成核率、生长率和方向性)的模型极为重要。在本研究中,我们揭示了先进的微结构路径建模(MPM)如何成功拟合两种不同工业铝合金复杂再结晶的动力学数据。较简单的模型无法拟合整个再结晶期的数据。基于 MPM 分析,推导出了特定的成核和生长参数以及再结晶晶粒尺寸,并对两种合金的再结晶特性进行了比较。这项工作展示了定量金相学的威力,以及通过对此类立体数据进行 MPM 建模可以获得的丰富的再结晶信息。
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