Yang Chengqiao, Sun Minhua
Department of Physics, Harbin Normal University, Harbin, 150025, People's Republic of China.
J Mol Model. 2024 Nov 12;30(12):397. doi: 10.1007/s00894-024-06204-8.
BCC and FCC metals have different glass-forming abilities (GFA) and exhibit different characteristics during the glass transition. However, the structural origin of their different GFAs is still not clear. Here, we explored the structures of eight monatomic metallic glasses by combining molecular dynamics (MD) simulations and machine learning (ML). Our findings reveal that, despite their common long-range disordered atomic structure, metallic glasses can be further classified into two distinct categories indicating an underlying structural order within the disorder. Using machine learning, we found that BCC liquids can sample more diverse glass states than FCC liquids. Furthermore, glasses formed from BCC metals (GFFBs) exhibit a higher degree of disorder than glasses formed from FCC metals (GFFFs). These findings highlight the inherent differences between GFFFs and GFFBs, which help explain the different glass-forming abilities of FCC and BCC metals. Additionally, our results demonstrate the promising potential of computer vision and ML methods in exploring material structures.
Classical molecular dynamics simulations were employed to generate configurations of GFFBs and GFFFs, and the simulations were performed using the LAMMPS code. Inter-atomic interactions were described using a classical embedded atom model (EAM) potential. The initial configuration of the model consists of 32,000 atoms in a three-dimensional (3D) cubic box with periodic boundary conditions applied in all three directions. For machine learning, we utilized an unsupervised machine learning method along with MobileNetV2 for classifying glass structures. Image entropy and image distances were used to measure the structural differences of the metallic glasses.
体心立方(BCC)和面心立方(FCC)金属具有不同的玻璃形成能力(GFA),并且在玻璃转变过程中表现出不同的特性。然而,它们不同GFA的结构起源仍不清楚。在这里,我们通过结合分子动力学(MD)模拟和机器学习(ML)探索了八种单原子金属玻璃的结构。我们的研究结果表明,尽管金属玻璃具有共同的长程无序原子结构,但它们可以进一步分为两个不同的类别,这表明无序中存在潜在的结构有序性。通过机器学习,我们发现BCC液体比FCC液体能够采样更多样化的玻璃态。此外,由BCC金属形成的玻璃(GFFB)比由FCC金属形成的玻璃(GFFF)表现出更高的无序度。这些发现突出了GFFF和GFFB之间的内在差异,这有助于解释FCC和BCC金属不同的玻璃形成能力。此外,我们的结果证明了计算机视觉和ML方法在探索材料结构方面具有广阔的潜力。
采用经典分子动力学模拟来生成GFFB和GFFF的构型,模拟使用LAMMPS代码进行。原子间相互作用使用经典嵌入原子模型(EAM)势来描述。模型的初始构型由一个三维(3D)立方盒中的32000个原子组成,在所有三个方向上都应用了周期性边界条件。对于机器学习,我们使用了一种无监督机器学习方法以及MobileNetV2来对玻璃结构进行分类。图像熵和图像距离用于测量金属玻璃的结构差异。