Temperature Regimes and Chemistry for Stabilizing Precipitation Hardening Phases in Al–Sc Alloys: Combined CALPHAD–Deep Machine Learning

R. Jha, G. Dulikravich
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Abstract

In this work, CALPHAD-based calculations provided with data for various stable and metastable phases in 2XXX, 6XXX, and 7XXX classes of aluminum-based alloys. These data were scaled and then used to develop Deep Learning Artificial Neural Network (DLANN) models for all these phases as a function of composition and temperature. Code was written in the python programming language using TensorFlow/Keras libraries. DLANN models were used for determining the amount of various phases for new compositions and temperatures. The resulting data were further analyzed through the concept of Self-organizing Maps (SOM) and a few candidates were chosen for studying the precipitation kinetics of Al3Sc phase under the framework of CALPHAD approach. This work reports on heat-treatment simulation for one case of 6XXX alloy where the nucleation site was on dislocation, while a detailed study for other alloys is reported in a previously published work. Grain-growth simulations presented in this work are valid for single crystals only.
稳定Al-Sc合金析出硬化相的温度制度和化学:结合calphad和深度机器学习
在这项工作中,基于calphad的计算提供了2XXX, 6XXX和7XXX类铝基合金的各种稳定相和亚稳相的数据。这些数据被缩放,然后用于开发深度学习人工神经网络(plann)模型,将所有这些阶段作为成分和温度的函数。代码是用python编程语言使用TensorFlow/Keras库编写的。plann模型用于确定新组分和温度下不同相的数量。通过自组织图(Self-organizing Maps, SOM)的概念对所得数据进行了进一步分析,并选择了一些候选数据在CALPHAD方法的框架下研究Al3Sc相的析出动力学。本文报道了一种6XXX合金的热处理模拟,其中形核位置在位错上,而对其他合金的详细研究已在先前发表的作品中报道。本研究中提出的晶粒生长模拟只适用于单晶。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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