Laboratory for Atomistic and Molecular Mechanics (LAMM), Massachusetts Institute of Technology, Cambridge, MA, 02139, USA.
Department of Materials Science and Engineering, Massachusetts Institute of Technology, Cambridge, MA, 02139, USA.
Small Methods. 2022 Sep;6(9):e2200537. doi: 10.1002/smtd.202200537. Epub 2022 Jul 29.
3D graphene assemblies are proposed as solutions to meet the goal toward efficient utilization of 2D graphene sheets, showing excellent performances in applications such as mechanical support, energy storage, and electrochemical catalysis. However, given the diversity and complexity of possible graphene 3D structures, there does not yet exist a systematic approach that can generate target 3D shapes and also, evaluate their performance. Here high-throughput data generation is combined with artificial intelligence approaches to realize rapid structure formation and property quantification of 3D graphene foams with mathematically controlled topologies, driven by molecular dynamics simulations. More than 4000 different foam structures are created, which feature diverse topologies that contain potential pathways for small molecules and auxetic structures with negative Poisson's ratio. Empowered by machine learning (ML) algorithms including graph neural networks, not only global properties such as elastic moduli, but also local behaviors such as atomic stress can be predicted and optimized based on their atomic structure, bypassing expensive atomistic simulations. The key findings of the research reported in this paper include a high-throughput virtual framework of generating diverse 3D graphene assemblies with mechanical performances quantification, and highly efficient methods of evaluating physical properties based on ML.
3D 石墨烯组件被提议作为解决方案,以满足高效利用 2D 石墨烯片的目标,在机械支撑、能量存储和电化学催化等应用中表现出优异的性能。然而,鉴于可能的石墨烯 3D 结构的多样性和复杂性,目前还没有一种系统的方法可以生成目标 3D 形状,也无法评估其性能。在这里,通过分子动力学模拟,高通量数据生成与人工智能方法相结合,实现了具有数学控制拓扑结构的 3D 石墨烯泡沫的快速结构形成和性能量化。创建了 4000 多个不同的泡沫结构,具有多样化的拓扑结构,其中包含小分子的潜在途径和具有负泊松比的各向异性结构。借助包括图神经网络在内的机器学习 (ML) 算法,不仅可以预测和优化全局性能(如弹性模量),还可以根据原子结构预测和优化局部行为(如原子应力),从而避免了昂贵的原子模拟。本文报道的研究的主要发现包括用于生成具有机械性能量化的多样化 3D 石墨烯组件的高通量虚拟框架,以及基于 ML 的高效物理性质评估方法。