论文标题

开衫:用于设计和发现多主元素合金设计和发现的生成对抗网络模型

cardiGAN: A Generative Adversarial Network Model for Design and Discovery of Multi Principal Element Alloys

论文作者

Li, Z., Nash, W. T., Brien, S. P. O, Qiu, Y., Gupta, R. K., Birbilis, N.

论文摘要

包括高熵合金(HEAS)的多元素元素合金(MPEA),由于其潜在的理想特性,继续引起了重大的研究注意力。尽管MPEA仍在广泛的研究中,但传统(即经验)合金生产和测试既昂贵又耗时,部分原因是早期发现过程的效率低下,该过程涉及大量合金组成的实验。直观地将机器学习应用于这种新型材料类别,迄今为止,仅探测了少数潜在合金。在这项工作中,提出了概念验证,将生成性对抗网络(GAN)与歧视性神经网络(NNS)相结合,以加速对新型MPEA的探索。通过在此应用GAN模型,可以直接生成用于MPEA的新颖组成,并预测其相。为了验证模型的可预测性,呈现模型设计的合金并产生候选者。作为验证。这表明此处的模型提供了一种可以显着提高新型MPEA开发能力和效率的方法。

Multi-principal element alloys (MPEAs), inclusive of high entropy alloys (HEAs), continue to attract significant research attention owing to their potentially desirable properties. Although MPEAs remain under extensive research, traditional (i.e. empirical) alloy production and testing is both costly and time-consuming, partly due to the inefficiency of the early discovery process which involves experiments on a large number of alloy compositions. It is intuitive to apply machine learning in the discovery of this novel class of materials, of which only a small number of potential alloys has been probed to date. In this work, a proof-of-concept is proposed, combining generative adversarial networks (GANs) with discriminative neural networks (NNs), to accelerate the exploration of novel MPEAs. By applying the GAN model herein, it was possible to directly generate novel compositions for MPEAs, and to predict their phases. To verify the predictability of the model, alloys designed by the model are presented and a candidate produced; as validation. This suggests that the model herein offers an approach that can significantly enhance the capacity and efficiency of development of novel MPEAs.

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