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Accurate Simulation for 2D Lubricating Materials in Realistic Environments: from Classical to Quantum Mechanical Methods.

Advanced materials(2024)

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摘要
2D materials such as graphene, MoS2, and hexagonal BN are the most advanced solid lubricating materials with superior friction and anti-wear performance. However, as a typical surface phenomenon, the lubricating properties of 2D materials are largely dependent on the surrounding environment, such as temperature, stress, humidity, oxygen, and other environmental substances. Given the technical challenges in experiment for real-time and in situ detection of microscopic environment-material interaction, recent years have witnessed the acceleration of computational research on the lubrication behavior of 2D materials in realistic environments. This study reviews the up-to-date computational studies for the effect of environmental factors on the lubrication performance of 2D materials, summarizes the theoretical methods in lubrication from classical to quantum-mechanics ones, and emphasizes the importance of quantum method in revealing the lubrication mechanism at atomic and electronic level. An effective simulation method based on ab initio molecular dynamics is also proposed to try to provide more ways to accurately reveal the friction mechanisms and reliably guide the lubricating material design. On the basis of current development, future prospects, and challenges for the simulation and modeling in lubrication with realistic environment are outlined. This perspective reviews the simulation methods from classical to quantum mechanical ones for 2D lubricating materials in realistic environments and emphasizes the importance of quantum method in revealing atomic and electronic mechanisms. An effective simulation method based on ab initio molecular dynamics is proposed to try to provide more ways to reveal the friction mechanisms and guide the material design. image
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关键词
2D material,computational simulations,environment,lubrication
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