Li Xinyu, Shi Javen Qinfeng, Page Alister J
School of Information and Physical Sciences, The University of Newcastle, Callaghan, New South Wales 2308, Australia.
Australian Institute for Machine Learning, The University of Adelaide, Adelaide, South Australia 5000, Australia.
Nano Lett. 2023 Nov 8;23(21):9796-9802. doi: 10.1021/acs.nanolett.3c02496. Epub 2023 Oct 27.
Despite today's commercial-scale graphene production using chemical vapor deposition (CVD), the growth of high-quality single-layer graphene with controlled morphology and crystallinity remains challenging. Considerable effort is still spent on designing improved CVD catalysts for producing high-quality graphene. Conventionally, however, catalyst design has been pursued using empirical intuition or trial-and-error approaches. Here, we combine high-throughput density functional theory and machine learning to identify new prospective transition metal alloy catalysts that exhibit performance comparable to that of established graphene catalysts, such as Ni(111) and Cu(111). The alloys identified through this process generally consist of combinations of early- and late-transition metals, and a majority are alloys of Ni or Cu. Nevertheless, in many cases, these conventional catalyst metals are combined with unconventional partners, such as Zr, Hf, and Nb. The approach presented here therefore highlights an important new approach for identifying novel catalyst materials for the CVD growth of low-dimensional nanomaterials.
尽管如今已采用化学气相沉积(CVD)法进行商业规模的石墨烯生产,但生长具有可控形态和结晶度的高质量单层石墨烯仍然具有挑战性。在设计用于生产高质量石墨烯的改进型CVD催化剂方面,仍需付出巨大努力。然而,传统上,催化剂设计一直采用经验直觉或试错法。在此,我们将高通量密度泛函理论与机器学习相结合,以识别出新型的潜在过渡金属合金催化剂,这些催化剂表现出与已有的石墨烯催化剂(如Ni(111)和Cu(111))相当的性能。通过这一过程确定的合金通常由早期和晚期过渡金属组合而成,且大多数是Ni或Cu的合金。尽管如此,在许多情况下,这些传统的催化剂金属与Zr、Hf和Nb等非传统元素结合。因此,本文提出的方法突出了一种用于识别低维纳米材料CVD生长新型催化剂材料的重要新方法。