Cheon Gowoon, Cubuk Ekin D, Antoniuk Evan R, Blumberg Lavi, Goldberger Joshua E, Reed Evan J
Department of Applied Physics , Stanford University , Stanford , California 94305 , United States.
Google Brain , Mountain View , California 94043 , United States.
J Phys Chem Lett. 2018 Dec 20;9(24):6967-6972. doi: 10.1021/acs.jpclett.8b03187. Epub 2018 Dec 3.
We discover the chemical composition of over 1000 materials that are likely to exhibit layered and 2D phases but have yet to be synthesized. This includes two materials our calculations indicate can exist in distinct structures with different band gaps, expanding the short list of 2D phase-change materials. Whereas databases of over 1000 layered materials have been reported, we provide the first full database of materials that are likely layered but are yet to be synthesized, providing a roadmap for the synthesis community. We accomplish this by combining physics with machine learning on experimentally obtained data and verify a subset of candidates using density functional theory. We find that our model performs five times better than practitioners in the field at identifying layered materials and is comparable to or better than professional solid-state chemists. Finally, we find that semisupervised learning can offer benefits for materials design where labels for some of the materials are unknown.
我们发现了1000多种可能呈现层状和二维相但尚未合成的材料的化学成分。这其中包括两种材料,我们的计算表明它们可以以具有不同带隙的不同结构存在,从而扩充了二维相变材料的简短清单。虽然已经报道了包含1000多种层状材料的数据库,但我们提供了首个可能为层状但尚未合成的材料的完整数据库,为合成领域提供了路线图。我们通过将物理学与基于实验获得的数据的机器学习相结合来实现这一点,并使用密度泛函理论验证了一部分候选材料。我们发现,在识别层状材料方面,我们的模型比该领域的从业者表现好五倍,与专业固态化学家相当或更优。最后,我们发现半监督学习可为某些材料标签未知的材料设计带来益处。