Discovery of Magnesium-Aluminum Alloys by Generative Model and Automatic Differentiation Approach

Shuwei Cheng, Zhelin Li, Hongfei Zhang, Xiaohong Yan, Shibing Chu
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Abstract

Magnesium-aluminum alloy is one of the most common alloy materials in the industry, widely utilized due to its low density and excellent mechanical properties. Investigating the properties or predicting new structures through experimentation inevitably involves complex processes, which consume significant time and resources. To facilitate the discovery, simulations such as Density Functional Theory (DFT) and machine learning (ML) methods are primarily employed. However, DFT incurs significant computational costs. While ML methods are versatile and efficient, they demand high-quality datasets and may exhibit some degree of inaccuracy. To address these challenges, we employ a combination of generative model and automatic differentiation (AD), reducing the search space and accelerating the discovery of target materials. We have predicted a variety of magnesium-aluminum alloys. We conducted structure optimization and property evaluation for ten potentially valuable intermetallic compounds. Ultimately, we identified five stable structures: Mg3Al3, Mg2Al6, Mg4Al12, Mg15Al and Mg14Al2. Among these, Mg4Al12, Mg15Al and Mg14Al2 may hold higher potential for practical applications.
通过生成模型和自动区分方法发现镁铝合金
镁铝合金是工业中最常见的合金材料之一,因其密度低、机械性能优异而被广泛使用。通过实验研究其特性或预测新结构必然涉及复杂的过程,耗费大量时间和资源。为了便于发现,人们主要采用密度泛函理论(DFT)和机器学习(ML)等模拟方法。然而,密度泛函理论需要大量的计算成本。虽然 ML 方法具有通用性和高效性,但它们需要高质量的数据集,而且可能会表现出一定程度的不准确性。为了应对这些挑战,我们采用了生成模型和自动分化(AD)相结合的方法,从而缩小了搜索空间,加快了目标材料的发现。我们已经预测了多种镁铝合金。我们对十种有潜在价值的金属间化合物进行了结构优化和性能评估。最终,我们确定了五种稳定的结构:Mg3Al3、Mg2Al6、Mg4Al12、Mg15Al 和 Mg14Al2。其中,Mg4Al12、Mg15Al 和 Mg14Al2 具有更高的实际应用潜力。
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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