When Machine Learning Meets 2D Materials: A Review

Author:

Lu Bin12ORCID,Xia Yuze12,Ren Yuqian12,Xie Miaomiao12,Zhou Liguo12ORCID,Vinai Giovanni3ORCID,Morton Simon A.4,Wee Andrew T. S.5,van der Wiel Wilfred G.67ORCID,Zhang Wen126ORCID,Wong Ping Kwan Johnny128ORCID

Affiliation:

1. ARTIST Lab for Artificial Electronic Materials and Technologies, School of Microelectronics Northwestern Polytechnical University Xi'an 710072 P. R. China

2. Yangtze River Delta Research Institute of Northwestern Polytechnical University Taicang 215400 P. R. China

3. Instituto Officina dei Materiali (IOM)‐CNR Laboratorio TASC Trieste I‐34149 Italy

4. Advanced Light Source (ALS) Lawrence Berkeley National Laboratory Berkeley CA 94720 USA

5. Department of Physics and Centre for Advanced 2D Materials (CA2DM) and Graphene Research Centre (GRC) National University of Singapore Singapore 117542 Singapore

6. NanoElectronics Group, MESA+ Institute for Nanotechnology and BRAINS Center for Brain‐Inspired Nano Systems University of Twente Enschede 7500AE The Netherlands

7. Institute of Physics University of Münster 48149 Münster Germany

8. NPU Chongqing Technology Innovation Center Chongqing 400000 P. R. China

Abstract

AbstractThe availability of an ever‐expanding portfolio of 2D materials with rich internal degrees of freedom (spin, excitonic, valley, sublattice, and layer pseudospin) together with the unique ability to tailor heterostructures made layer by layer in a precisely chosen stacking sequence and relative crystallographic alignments, offers an unprecedented platform for realizing materials by design. However, the breadth of multi‐dimensional parameter space and massive data sets involved is emblematic of complex, resource‐intensive experimentation, which not only challenges the current state of the art but also renders exhaustive sampling untenable. To this end, machine learning, a very powerful data‐driven approach and subset of artificial intelligence, is a potential game‐changer, enabling a cheaper – yet more efficient – alternative to traditional computational strategies. It is also a new paradigm for autonomous experimentation for accelerated discovery and machine‐assisted design of functional 2D materials and heterostructures. Here, the study reviews the recent progress and challenges of such endeavors, and highlight various emerging opportunities in this frontier research area.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Shaanxi Province

Natural Science Foundation of Chongqing Municipality

Natural Science Foundation of Guangdong Province

Deutsche Forschungsgemeinschaft

Ministry of Education - Singapore

Publisher

Wiley

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