Goldie Stuart J, Degiacomi Matteo T, Jiang Shan, Clark Stewart J, Erastova Valentina, Coleman Karl S
Department of Chemistry, Durham University, South Road, Durham, DH1 3LE, United Kingdom.
Department of Physics, Durham University, South Road, Durham, DH1 3LE, United Kingdom.
ACS Nano. 2022 Oct 25;16(10):16109-16117. doi: 10.1021/acsnano.2c04406. Epub 2022 Sep 27.
The scalable production and dispersion of 2D materials, like graphene, is critical to enable their use in commercial applications. While liquid exfoliation is commonly used, solvents such as -methyl-pyrrolidone (NMP) are toxic and difficult to scale up. However, the search for alternative solvents is hindered by the intimidating size of the chemical space. Here, we present a computational pipeline informing the identification of effective exfoliation agents. Classical molecular dynamics simulations provide statistical sampling of interactions, enabling the identification of key molecular descriptors for a successful solvent. The statistically representative configurations from these simulations, studied with quantum mechanical calculations, allow us to gain insights onto the chemophysical interactions at the surface-solvent interface. As an exemplar, through this pipeline we identify a potential graphene exfoliation agent 2-pyrrolidone and experimentally demonstrate it to be as effective as NMP. Our workflow can be generalized to any 2D material and solvent system, enabling the screening of a wide range of compounds and solvents to identify safer and cheaper means of producing dispersions.
二维材料(如石墨烯)的可扩展生产和分散对于其在商业应用中的使用至关重要。虽然液相剥离法常用,但诸如N-甲基吡咯烷酮(NMP)等溶剂有毒且难以扩大规模。然而,化学空间规模庞大,阻碍了对替代溶剂的寻找。在此,我们展示了一个计算流程,用于指导有效剥离剂的识别。经典分子动力学模拟提供了相互作用的统计抽样,能够识别成功溶剂的关键分子描述符。通过量子力学计算对这些模拟中具有统计代表性的构型进行研究,使我们能够深入了解表面-溶剂界面处的化学物理相互作用。作为一个范例,通过这个流程我们识别出一种潜在的石墨烯剥离剂2-吡咯烷酮,并通过实验证明它与NMP一样有效。我们的工作流程可推广到任何二维材料和溶剂体系,能够筛选多种化合物和溶剂,以确定更安全、更廉价的制备分散体的方法。