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Tan Yawen, Jiang Jinwu. The empirical potential of two-dimensional nanomaterials and their heterostructures[J]. Advances in Mechanics, 2020, 50(1): 202005. doi: 10.6052/1000-0992-19-010
Citation: Tan Yawen, Jiang Jinwu. The empirical potential of two-dimensional nanomaterials and their heterostructures[J]. Advances in Mechanics, 2020, 50(1): 202005. doi: 10.6052/1000-0992-19-010

The empirical potential of two-dimensional nanomaterials and their heterostructures

doi: 10.6052/1000-0992-19-010
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The work is supported by the National Natural Science Foundation of China (NSFC) under Grant No. 11822206, and the Innovation Program of Shanghai Municipal Education Commission under Grant No. 2017-01-07-00-09-E00019.

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  • Corresponding author: Jiang Jinwu
  • Received Date: 2019-07-04
  • Publish Date: 2020-10-08
  • The atomic interaction is a fundamental ingredient in the research of two-dimensional (2D) nanomaterials that have been widely investigated for decades. The atomic interaction can be described by empirical models, which are of both high accuracy and efficiency owing to their physics-inspired functional forms. We outline some typical empirical potential models for the 2D material and its heterostructures, including the vertical van der Waals heterostructure and the lateral heterostructure. The present survey shall offer some help in choosing potential models for the simulation of these 2D-material-based systems. We also discuss some prospects and current challenges at the end of the article.

     

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