Abstract
We analyze the underlying structural order that transcends liquid, glass and crystalline states in metallic systems. A genetic algorithm is applied to search for the most common energetically favorable packing motifs in crystalline structures. These motifs are in turn compared to the observed packing motifs in the actual liquid or glass structures using a cluster-alignment method. Using this method, we have revealed the nature of the short-range order in Cu64Zr36 glasses. More importantly, we identified a novel structural order in the Al90Sm10 system. In addition, our approach brings new insight into understanding the origin of vitrification and describing mesoscopic order-disorder transitions in condensed matter systems.
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Introduction
Rapid solidification has been a promising materials processing technique to drive metallic systems out of equilibrium for the formation of amorphous glasses or composite materials with ultra-fine nanocrystalline meta-stable phases1. As-formed materials often display superior chemical or mechanical properties compared with their equilibrium counterparts2. While apparently lacking long-range translational symmetry, the undercooled metallic liquids and glasses have clear elements of short- and medium-range order3,4,5,6,7,8,9,10. A satisfactory knowledge of such structural order is essential not only to understand the glass formation, but to control the microstructures of the nanocomposite materials formed during rapid solidification or devitrification of as-quenched glasses11.
Various methods have been proposed to identify the short-range order (SRO) in non-crystalline metallic systems, ranging from pure geometric consideration12 to more sophisticated Voronoi tessellation13 and Honeycutt-Anderson (HA) common neighbor analysis14. So far, these methods have only recorded limited success: the former is based on the idea of dense random packing of hard spheres and often oversimplifies the chemical bonding in these systems15; while the latter is vulnerable to large deformations from an ideal motif due to the intrinsic amorphicity5,16,17.
Interestingly, none of the structural motifs uncovered in liquids or glasses are exclusive to amorphous structures; that is, they can pack into crystals. This is true even for the most commonly seen icosahedral order18,19,20,21,22,23, which contains non-crystallographic five-fold symmetry: numerous crystals contain nearly ideal local icosahedral ordering and some of them are commonly used to model icosahedral quasi-crystals24. It was also demonstrated in a Lennard-Jones system that the SRO of the undercooled liquid matches that found in the crystal of the same composition25. Local packing is a relatively fast process compared with global networking of local clusters5; thus, even under rapid quenching, the system has sufficient time to survey the potential energy surface for a stable local packing motif. Given the energetic stability of the selected packing motif, it is possible that the same motif also appears in crystalline structures of close compositions. Such crystals may not be observed under actual experimental conditions. However, they should be accessible with a theoretical method that can efficiently search the configurational space for low-energy crystalline structures.
In this paper, we demonstrate the clear connection between crystalline and non-crystalline structural order in two systems: Cu-Zr and Al-Sm, representing strong and marginal glass formers, respectively. We first establish the dominant packing motif in crystalline structures identified by a genetic algorithm (GA)26,27, which is a robust means to locate low-energy configurations in crystals28,29. Then, we use the cluster alignment method30, which is analogous to the structural alignment used to identify regions of similarity in biomolecules31 to check the popularity of the GA-identified motifs in real undercooled liquids achieved by ab initio molecular dynamics (AIMD) simulations.
Results
Cu64Zr36 system
We first revisit a well known glass-forming Cu-Zr system, focusing on one of the optimal glass-forming composition xCu = 0.64 32,33,34,35,36. The GA search was performed to collect low-energy crystal structures with unit cells containing up to 50 atoms and a Cu composition between 0.6 and 0.7. A semi-empirical potential in the Finnis-Sinclair form37 was used to expedite the GA search. The 100 lowest-energy structures found by GA were then collected for more accurate density functional theory (DFT) calculations as implemented in the VASP code38 (see methods). In order to identify the dominant packing motifs surrounding Cu and Zr atoms in these relaxed structures, we performed the cluster-alignment study on each pair of Cu-centered and Zr-centered clusters extracted from the relaxed structures. An alignment score was obtained to quantify the similarity between each pair of clusters (see methods). The lower the score is, the more similar the two clusters are. Figure 1a,b show the similarity matrix for the Cu-centered and Zr-centered clusters, respectively. The matrix element Mij is the alignment score between the cluster i and cluster j. Similar clusters are organized into cliques. The lower left corners in Fig. 1a,b show the largest clique formed by Cu- and Zr-centered clusters, respectively. Here, a clique is a subset of clusters whose similarity matrix elements are all lower than a cutoff value of 0.12. Therefore, the clusters in each clique are expected to display significant similarity. The cliques in Fig. 1a,b contain 70% and 66% of Cu- and Zr-centered clusters, respectively and thus should represent the dominant packing motifs. Indeed, once superposing these clusters, each pre-aligned against a fixed member of the same clique, one can see a distinct pattern in the atomic density of the superposed clusters, as shown in the right panels of the Fig. 1a,b for Cu- and Zr-centered clusters, respectively (see Methods for the calcultion of the atomic density of superposed clusters). The Cu-centered clusters give the icosahedral motif, consistent with a series of previous reports16,39,40,41,42. The Zr-centered clusters show the Frank-Kasper Z16 motif, which has also been reported before16, although in this study the dominance of the Z16 order can only be established through lengthy molecular dynamics simulations over hundreds of nanoseconds. These results clearly show that the two motifs, which are established in the GA-identified crystalline structures, are favored in both crystalline and amorphous structures of similar compositions.
Furthermore, other motifs such as distorted-icosahedral polyhedra (Voronoi indices <0,2,8,2>, <0,3,6,3> or <0,2,8,1>) and Frank-Kasper Z14 (Voronoi index <0,0,12,2>) and Z15 (Voronoi index <0,0,12,3>), which are found in CuZr liquid and glass state43,44,45,46, are also captured by GA-identified crystalline structures, as shown in the Supplementary Fig. 1. Although these motifs could also be a choice for local packing, the dominance of icosahedra and Frank-Kasper Z16 packing will eventually merge when given sufficient relaxation time16,47. Previous works47,48,49 also suggested interpenetrating icosahedral network as the origin of the medium-range order in this system. Such interpenetrating icosahedra are also observed in the GA-identified structures within relatively large unit cells. Please refer to the Supplemental Note 1 for more details.
Al90Sm10 system
We have also applied this technique to reveal unknown structural order in undercooled Al90Sm10 liquids. As a member of the aluminum-rare-earth (Al-RE) series, this system can undergo deep undercooling and form amorphous solids or nanocrystalline composite materials with much improved mechanical properties than pure Al 2. Understanding the structure of undercooled liquids is critical for understanding and controlling phase selection in the design of a series of similar Al-rich materials.
Considering the large size disparity and affinity between Al and Sm atoms, we believe the Al90Sm10 system falls into the category in which the solute (Sm)-centered ordering plays the dominant role in defining the overall structural features4,50 (see Supplementary Note 2 for analysis of SRO around Al atoms). However, due to large coordination numbers (~16) of solute atoms and fcc-related packing in the system, even Voronoi tessellation analysis can hardly get a distinct polyhedron index for the system (see details in Supplementary Note 3). Thus, based on the concept of the crystalline gene in the liquid, we first identify extensive motifs in low-energy Al-Sm crystal structures with similar compositions and then compare these motifs with the clusters in the liquid samples to establish the dominant SRO.
As shown in Fig. 2a, the Al-Sm system has already shown a rich collection of Sm-centered ordering in known crystalline compounds, including Al2Sm, Al3Sm, Al4Sm and Al11Sm3, which have all been observed experimentally51,52. Since the composition of the target system (~10 at.% Sm) is different from any of the above compounds, we expect to see new structural motifs characterizing this composition range that are not covered in Fig. 2a.
To identify the missing motifs, we have performed GA search for low-energy crystal structures with unit cells containing up to 50 atoms over a narrow Sm composition range between 0.075 and 0.125. After performing pairwise alignment analysis similar to the CuZr system [see Fig. 3a], we found two new Sm-centered motifs, T6 and T7, as shown in Fig. 2b. The T6 motif consists of a top triangular Al layer followed by two hexagonal Al layers and a bottom Sm atom, whereas T7 contains three successive pentagonal Al layers. In Fig. 3b, we show the formation energy (Eform), which is referenced to the stable Al3Sm and fcc Al phases, for ~500 structures with the lowest energies from our extensive GA search. These structures are all fully relaxed by DFT calculations. Again, the dominance of T6 and T7 motifs is clearly seen since structures containing these motifs cover the entire composition range and comprise 50.3% and 33.5% of all the structures, respectively. The positive values of Eform show that these structures are unstable with respect to separation into Al and Al3Sm ground-state structures, consistent with the fact that the Al-Sm phase diagram shows no stable Al-rich compounds other than Al3Sm52. However, under fast quenching conditions, the pathway to phase separation into the equilibrium mixture of Al and Al3Sm can be kinetically by-passed and local clusters of T6 or T7 can still be formed.
The preference of T6 and T7 will be checked against various other clusters in undercooled Al90Sm10 liquids. In addition to those existing in known crystalline compounds [T1–T5 in Fig. 2a], we introduce two more hypothetical competitors: T8 and T9 as shown in Fig. 2c. T8 is the building block of the fcc structure for pure Al and T9 represents the icosahedral SRO commonly seen in amorphous structures.
Ab initio molecular dynamics (AIMD) simulations (using VASP38) are performed to create three independent Al90Sm10 samples for a good statistical analysis (see methods). Each sample containing 500 atoms, which is large enough to fully capture the SRO, is annealed to equilibrate at 1300 K, 1000 K and 800 K. In Fig. 4a–c, the calculated partial pair correlation functions (PPCFs) of the samples are presented at various temperatures in the liquid or undercooled liquid regime. The PPCF is averaged over the three independently prepared samples. An “error band” is included by sweeping the error bar across all positions. The error bands for the Al-Al and Al-Sm PPCFs are vanishingly narrow. For the Sm-Sm PPCF, the error band is slightly broadened, since Sm is the sparse species in the system. Overall, Fig. 4a–c shows that the PPCFs for the three different samples are reasonably well converged and thus the structural features extracted from these samples are statistically valid. Furthermore, we calculated the total structure factor S(q) of the simulated samples at 1300 K following the technique proposed in ref. 53. As shown in Fig. 4d, the calculated S(q) compares favorably with that measured in X-ray diffraction experiments54 (see details in Supplementary Note 4), confirming that our simulations reliably capture the structural properties of the Al90Sm10 system.
We first independently align the Sm-centered clusters extracted from the AIMD samples against each template motif shown in Fig. 2. Figure 5a shows the distribution of the alignment score for all template motifs aligned with the clusters at T = 800 K, where one can see vastly different peak positions for different templates. The alignment score reflects the similarity of the as-extracted clusters to the template motif; thus, the GA-identified motif T6 has the highest popularity since it shows the leftmost peak position as shown in Fig. 5a.
A closer inspection of the template motifs in Fig. 1 shows that T6 also shares similarity with a group of other motifs: T1, T2, T3, T7 and T8, while the remaining motifs T4, T5 and T9 are well separated from this group (see details in Supplementary Note 5). In Fig. 5b, we show the population of four topologically distinct motifs T4, T5, T6 and T9 in AIMD samples at several temperatures, using T6 to represent the group with similarities. Here, the motif with the lowest alignment score is used to characterize an as-extracted cluster in AIMD samples. However, if the lowest alignment score is larger than a cut-off value of 0.19, which is close to the peak position for T6 in Fig. 5a, the cluster remains uncharacterized. The temperature varies from above the melting point of 1253 K52 to deeply undercooled regime. The averaged population over three independent samples is shown along with the error bar. At T = 1300 K, less than 10% Sm-centered clusters from the liquid samples can be characterized with the four typical motifs, due to poorly developed local structural order at this temperature. Among them, the T6 motif already has a considerable population of 8%. With the temperature decreasing, the unknown population reduces, indicating the enhanced SRO. The same trend can be seen from the increment of the first peak height in the PPCFs during the cooling process, as shown in the inserts of Fig. 4a–c. At T = 800 K, the total population of identified clusters increase to 40%, most of which belongs to the T6 motif. This clearly shows that the T6 motifs, commonly seen in Al-Sm crystalline structures with xSm close to 0.1, are also characteristic of undercooled amorphous structures with similar compositions, while other three motifs are essentially nonexistent in the samples.
Discussion
Experimentally, Al90Sm10 glass samples can be synthesized by different techniques, such as melt spinning and magnetron sputtering. When thermally annealed, the samples prepared by different methods (e.g., liquid processing vs. sputtering) can exhibit much different devitrification behaviors, which lead to different dominant crystalline phases in the first devitrification step55,56. Nevertheless, both crystals share the same T6 motif surrounding Sm atoms as the undercooled liquids in our AIMD simulations56,57, as shown in Fig. 6. The similarity of the SRO between the crystal structures and the amorphous parent structure can probably lower the transformation barriers between the glass phase and crystal phase, which may be the reason why these complex metastable phases appear first in the devitrification process. The different devitrification pathway for melt-spun or sputtered samples is likely attributed to differences beyond SRO in these samples, which is an intriguing subject for future studies.
In summary, we developed a systematical scheme integrating genetic algorithm, ab initio MD simulations and the cluster alignment method to reveal crystal genes, that is, the dominant SROs that transcend metallic crystals, glasses and liquids. With two glass forming systems, we show that the SROs characterizing low-energy crystals also have abundant population in deeply undercooled liquids or glasses with similar composition. By establishing the connection between crystalline and non-crystalline orders, our work provides a systematic approach to address a key question in determining the prevailing forms of non-crystalline order in liquids and glasses.
Methods
Adaptive Genetic algorithm
We use a genetic algorithm to search for low-energy crystal structures and obtain favored packing motifs for CuZr and AlSm systems. Based on the conventional GA scheme26, a classical potential in the Finnis-Sinclair37 form is employed in the adaptive GA to quickly calculate energy during the GA search. A portion of low-energy structures obtained in the GA search are then collected for accurate calculations using the density functional theory (DFT). The DFT results are used to adapt the parameters of the auxiliary classical potential. The above process is repeated until the structures collected in the DFT calculation pool are converged.
Density functional theory (DFT)
All DFT calculations are performed using the Vienna ab initio simulation package (VASP)38. The projected augmented-wave (PAW) method is used to describe the electron-ion interaction and the generalized gradient approximation (GGA) in the Predew-Burke-Ernzerhof (PBE) form is employed for the exchange-correlation energy functional.
Ab initio molecular dynamics simulations
We simulated undercooled liquid samples of Al90Sm10 with ab initio molecular dynamics simulations. The constant number of atoms, volume and temperature (NVT) ensemble is applied with Nose-Hoover thermostats. The Verlet algorithm is used to integrate Newton’s equation of motion, using a time step of 3 fs. Three different samples, all with 450 Al atoms and 50 Sm atoms, are created independently for better statistical analysis. To construct these samples, randomly generated configurations with cubic supercell are equilibrated at 2100 K over 2000 time steps. Then each sample is cooled down to 800 K, well-below the melting temperature 1253 K with a cooling rate of 2.2 × 1013 K/s. After that, the structures at 1300 K, 1000 K and 800 K are collected separately for further isothermal annealing for about 6,000 time steps. The first 3,000 time steps are not used in the analysis to ensure equilibrium has been reached.
Cluster alignment methods
To evaluate the similarity between two independent cluster motifs, we employ a cluster alignment algorithm, following the “Individual cluster-template alignment” in ref. 17. We take one cluster as a fixed template and align the other cluster to it. An alignment score, describing how the aligned cluster deviates from the template, is defined as
where N is the number of the neighbor atoms in the template; and are the atom positions in the aligned cluster and template, respectively; and α is a coeffient to adapt the template’s bond length. The range of α is between 0.8 and 1.2, which allows a large enough “breathing” room for the bond length in templates, in order to achieve an optimal alignment. The smaller score indicates a higher similarity between the two clusters.
To reveal the common SRO in the clusters that belong to the same clique, we align all the clusters against a fixed member of the same clique and superpose the aligned clusters by overlapping their centers. A continuous 3D atomic density of the superposed clusters is calculated according to
where is the position of atom i, m is the number of superposed clusters and n is the number of atoms per cluster. Here, the atomic density of a single atom is smeared by a Gaussian distribution. An isosurface of is plotted in the right panel of Fig. 1.
Additional Information
How to cite this article: Sun, Y. et al. ‘Crystal Genes’ in Metallic Liquids and Glasses. Sci. Rep. 6, 23734; doi: 10.1038/srep23734 (2016).
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Acknowledgements
Work at Ames Laboratory was supported by the US Department of Energy, Basic Energy Sciences, Materials Science and Engineering Division, under Contract No. DE-AC02-07CH11358, including a grant of computer time at the National Energy Research Supercomputing Center (NERSC) in Berkeley, CA. The high-energy X-ray experiments were performed at the Advanced Photon Source, Argonne National Laboratory, under Grant No. DE-AC02-06CH11357. Y.S. acknowledges support from China Scholarship Council (File No. 201406340015). Z.D. acknowledges support from the National Natural Science Foundation of China (No. 11274288 and No. 11574289) and the National Basic Research Program of China (No. 2012CB933702). K.-M.H. acknowledges support from USTC Qian-Ren B (1000-Talents Program B) fund.
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Contributions
K.-M.H. and C.-Z.W. designed and supervised the project. Y.S., F.Z. and Y.Z. carried out AIMD calculation. F.Z., Z.Y. and Y.S. performed GA search. X.F., Y.S., F.Z., Z.D., C.-Z.W. and K.-M.H. designed and revised cluster-alignment code. M.I.M. developed the Finnis-Sinclair potential for the Al-Sm system. R.T.O. and M.J.K. performed experimental measurements of the structure factor. Y.S., F.Z. and C.-Z.W. coordinated the work on the manuscript with contributions from other authors.
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Sun, Y., Zhang, F., Ye, Z. et al. ‘Crystal Genes’ in Metallic Liquids and Glasses. Sci Rep 6, 23734 (2016). https://doi.org/10.1038/srep23734
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Science China Materials (2020)
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Observation of η-Al41Sm5 reveals motif-aware structural evolution in Al-Sm alloys
Scientific Reports (2019)
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Computational modeling sheds light on structural evolution in metallic glasses and supercooled liquids
npj Computational Materials (2017)
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