* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download The optimized composition of Mg–Al–Cu metallic glass investigated
Geometrical frustration wikipedia , lookup
Crystal structure wikipedia , lookup
Colloidal crystal wikipedia , lookup
Heat transfer physics wikipedia , lookup
State of matter wikipedia , lookup
Strengthening mechanisms of materials wikipedia , lookup
Glass-to-metal seal wikipedia , lookup
Electronic band structure wikipedia , lookup
Tight binding wikipedia , lookup
Glass production wikipedia , lookup
Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. RSC Advances View Article Online PAPER Cite this: RSC Adv., 2016, 6, 102329 View Journal | View Issue The optimized composition of Mg–Al–Cu metallic glass investigated by thermodynamic calculations and an atomistic approach S. Zhao, J. H. Li* and B. X. Liu Issues related to the glass formation of ternary Mg–Al–Cu metallic glass are investigated by thermodynamic calculations and an atomistic approach. Based on the extended Miedema model, thermodynamic calculations show that Mg–Al–Cu metallic glasses are favored over a large composition range, and that the sub-region of MgxAlyCu1xy (x ¼ 20–30; y ¼ 30–40; 1 x y ¼ 35–45) shows a better glass formation ability than the other compositions. Then, a realistic interatomic potential was constructed for the Mg–Al–Cu system and applied in Monte Carlo simulations to predict the favored composition at the atomic level, and even pinpoint the optimized composition. The simulation not only predicted a quadrilateral region, within which Mg–Al–Cu metallic glass formation is energetically favored, but also pinpointed an optimized sub-region within which the amorphization driving force (ADF), i.e. the energy difference between the solid solution and the disordered state, is larger than that outside. The Received 14th July 2016 Accepted 7th October 2016 predictions of the atomistic approach are consistent with the thermodynamic calculation. The DOI: 10.1039/c6ra17942h simulations not only provided predictions for producing Mg–Al–Cu metallic glasses, but also revealed the physical origin of the crystal–amorphous transition, which could be of great help for designing www.rsc.org/advances ternary glass formers. 1. Introduction Bulk metallic glasses (BMGs) have been a hot topic ever since they were rst found.1–3 The properties of BMGs, such as high yield strength, hardness, elastic strain limit, and corrosion resistance4–7 have led people to spare no effort in researching them. To date, BMGs have been obtained in many multicomponent alloy systems, such as Mg–Cu–Y,8,9 Al–Cu–Zr10,11 and Ca–Al–Mg–Cu.12 In the eld of BMGs, a basic and interesting issue is to clarify the glass forming ability (GFA), so that one could easily design appropriate compositions for producing metallic glasses. To characterize the GFA, some experimental criteria13–15 have been proposed based on the glass transition temperature Tg, melting temperature Tm and crystallization onset temperature Tx. However, these criteria are not able to predict the GFA, because they are obtained aer the glass has been produced. Besides, it takes plenty of work to pinpoint the optimized compositions. Thus, several criteria have been proposed to predict the glass formation range and the optimized compositions, such as deep eutectic,16 size difference17 or structural difference18 rules. Although these empirical rules have been widely used for producing BMGs, the predictions are not accurate enough. Besides, these rules are restricted in Key Laboratory of Advanced Materials (MOE), School of Materials Science and Engineering, Tsinghua University, Beijing 100084, China. E-mail: lijiahao@mail. tsinghua.edu.cn This journal is © The Royal Society of Chemistry 2016 reecting the internal characteristics and mechanisms. Therefore, it is of signicance to seek a more valid way to clarify the underlying physics of glass formation and predict more accurately. Among various thermodynamic calculation schemes, Miedema's model and Alonso's method19,20 are widely used to quantitatively explain and predict the formation of metallic glass from a semi-empirical perspective. Furthermore, once the interaction between the atoms is conrmed, atomistic simulations, including molecular dynamics (MD) and Monte Carlo (MC) simulations, can be a powerful tool for investigating fundamental issues relating to metallic glasses. Recently, bulk metallic glasses including the elements of Mg, Al and Cu have been widely studied,8,9,11,12,21 due to their good GFA, low cost, high specic strength and biocompatibility. However, metallic glasses which consist of Mg, Al and Cu are less researched. Therefore, we selected ternary Mg–Al–Cu as a model system, and investigated it in two ways, i.e. through thermodynamic calculations and MC simulations. 2. Thermodynamic calculations Miedema's model and Alonso's method are proposed based on the macroscopic atom picture, of which the basic assumption is the choice of the reference as the atoms embedded in the metal instead of the free atoms, and it has been veried widely in predicting glass formation.19,20 When applying these methods, RSC Adv., 2016, 6, 102329–102335 | 102329 View Article Online Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. RSC Advances Paper the Gibbs free energy of the competing alloy phases, including the solid solution, intermetallic compounds and the amorphous phase should be calculated, which can be expressed as DG ¼ DH TDS, where DH and DS are the enthalpy and entropy terms, respectively. The entropy term DS for a concentrated solid solution or an amorphous phase can be approximated as that of an ideal solution. For a ternary system consisting of the elements of A, B and C, DS can be expressed as DS ¼ R[cA ln cA + cB ln cB + cC ln cC] (1) where R is the gas constant, and cA, cB and cC is the atomic concentration of A, B and C, respectively. According to the work by Miedema and Alonso, the enthalpy of formation of a ternary solid solution of transition metals A, B and C is given by: c e s DHss ABC ¼ DHABC + DHABC + DHABC (2) where DHcABC, DHeABC and DHsABC is the chemical, elastic and structural contribution, respectively. The chemical term DHcABC is related to the electron redistribution generated at the boundary of the Wigner–Seitz unit cell when the alloy is formed and can be divided into three binary sub-systems as: DHcABC ¼ DHcAB + DHcAC + DHcBC (3) For a binary subsystem consisting of A and B, DHcAB is given by: DHcAB ¼ cAcB[cBDH inter A in B inter + cADH A in B] (6) For the A–B binary subsystem, DHeAB is given by: elastic DHeAB ¼ cAcB[cBDH elastic A in B + cADH B in A] 102330 | RSC Adv., 2016, 6, 102329–102335 (8) , ZA, ZB and ZC is the average number of valence elecwhere Z trons of the alloy phase and valence electrons of the pure metals ), Es(ZA), Es(ZB) and Es(ZC) is the A, B and C, respectively. Es(Z lattice stability parameter of the alloy phase and the pure metals A, B and C, respectively. For the amorphous phase, the enthalpy difference between the amorphous and crystalline states of the pure metals should be considered, while the elastic term and the structural term are absent. Thus, the formation enthalpy of the amorphous phase can be calculated as: c a–s a–s a–s DHam ABC ¼ DHABC + cADHA + cBDHB + cCDHC (9) where DHAa–s, DHBa–s and DHCa–s is the enthalpy difference between the amorphous and crystalline states of pure metals A, B and C, respectively. As proposed by van der Kolk et al.,22 DHa– s i can be calculated by: ¼ aTm,i DHa–s i (10) where a ¼ 3.5 J mol1 K1 and Tm,i is the melting temperature of component i. According to Xia's proposal23 and Wang's modication,24 the GFA can be evaluated as follows: g*ABC ¼ GFAf am DHABC inter DHABC am DHABC (11) (5) where csA and csB are the cell surface concentrations, which can cA VA 2=3 and csB ¼ 1 csA. The be calculated by csA ¼ 2=3 cA VA þ cB VB 2=3 parameter g describes the short-range ordering in different alloys and is an empirical constant which is usually taken as 0, 5 and 8 for the solid solution, amorphous phase and ordered compound, respectively. Similarly, the chemical terms of DHcAC and DHcBC can be calculated by eqn (4), thus the chemical term can be obtained by eqn (3). The elastic term DHeABC is the contribution of the atomic size mismatch and can also be divided into three binary subsystems: DHeABC ¼ DHeAB + DHeAC + DHeBC [cAEs(ZA) + cBEs(ZB) + cCEs(ZC)] DHsABC ¼ Es(Z) (4) inter inter where DH A in B and DH B in A are the electron redistribution contributions to the enthalpy of A dissolved in B and that of B dissolved in A. Considering the possible chemical short range ordering of the alloy phases, the right-hand side of eqn (4) should be multiplied by a factor f ¼ 1 + g(csAcsB)2 elastic elastic where DH A in B and DH B in A are the elastic contributions to the enthalpy of A dissolved in B and that of B dissolved in A. Similarly, the calculation of DHeAC and DHeBC are the same, thus DHeABC of the ternary system can be calculated by eqn (6). The structural contribution DHsABC is the correlation between the number of valence electrons and the crystal structure of the ) of each metals. It can be deduced from the lattice stability Es(Z crystal structure s (s ¼ bcc, fcc or hcp) as a function of the number of valence electrons Z of the metal: (7) Thus, by calculating the parameter g*ABC , the composition dependence of the GFA can be predicted. The parameters used in the thermodynamic calculations of the Mg–Al–Cu system are listed in Table 1. The glass formation range (GFR), within which the Gibbs free energy of the amorphous phase is lower than that Table 1 The parameters used in the thermodynamic calculations for A), the Mg–Al–Cu system. Tm,i is expressed in K, and Es(Z inter elastic elastic 1 inter DH , D H , D H , and D H are expressed in kJ mol A in B B in A A in B B in A Tm,i A) Es(Z inter DH A in B inter DH B in A elastic DH A in B elastic DH B in A Mg Al Cu 922 0 933 0 1357 1.5 Mg–Al Mg–Cu Al–Cu 6.35 6.98 8.23 1.40 22.58 17.11 36.22 42.40 47.17 37.61 16.19 12.34 This journal is © The Royal Society of Chemistry 2016 View Article Online Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. Paper RSC Advances A glass formation stoichiometry diagram, obtained from thermodynamic calculations at 300 K for the Mg–Al–Cu ternary system. (a) The glass formation range bounded by dashed lines and (b) the distribution of g*ABC of each composition within the glass formation range. Fig. 1 of the solid solution, is shown in Fig. 1(a) and is represented by black dots and bounded by dashed lines. Fig. 1(b) shows the distribution of the GFA, in which the sub-region (colored red) with the composition MgxAlyCu1xy (x ¼ 20–30; y ¼ 30–40; 1 x y ¼ 35–45) shows a better GFA than other compositions. In the following sections, we proceed to investigate glass formation at the atomic level and compare the results with those of thermodynamic calculations. 3. Mg–Al–Cu interatomic potential To perform the atomistic simulations, a starting base is the construction of a realistic interatomic potential, which can reect the internal interactions in a certain system and thus clarify the glass formation and predict the favored compositions of the glassy alloys, and even pinpoint the optimized compositions. Therefore, we rst constructed the atomic interactions of the Mg–Al–Cu system and applied the framework of smoothed and long-range second-moment-approximation of tight-binding (TB-SMA).25,26 The formalism can be written as: sffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffi X 1X (12) 4 rij j rij Ei ¼ 2 jsi jsi 4 rij ¼ 8 rij > > 1 ; 2A 1 exp p1 > < r 0 Table 2 Lattice constants (a and c), cohesive energies Ec, elastic constants Cij and bulk moduli B0 of Al, Mg, Cu fitted by the potential and obtained from experimental data or ab initio calculations rij # rm1 n1 > > r rc1 rij > : 2A1m exp p1m ij 1 ; r0 r0 r0 between atom i and j. In the expression, P1, A1, rm1, A1m, rc1, P1m, P2, A2, rm2, A2m, rc2 and P2m are the potential parameters to be tted, while n1 and n2 are selected as 4 and 5, respectively. Readers can refer to a previous paper25 for more details about the potential parameters. It is easy to see that the pair item and density item, as well as their higher derivatives, can go to zero continuously and smoothly at the cutoff distance, thus removing the leaps of energy and force, as well as avoiding some non-physical behaviors.27 Generally, six kinds of interaction should be considered for a ternary system. In the Mg–Al–Cu system, the interactions are Mg–Mg, Al–Al, Cu–Cu, Mg–Al, Mg–Cu and Al–Cu. The potential parameters were obtained by tting to the lattice constants, cohesive energies, elastic constants and bulk moduli of elements as well as the stable or meta-stable compounds in each of the binary systems.28,29 In the tting process, ab initio calculations using the Cambridge serial total energy package (CASTEP)30 were applied to derive the relevant physical properties of the compounds. The tted potential parameters of the Mg–Al–Cu system are listed in Table 3. Tables 2 and 4 give the cohesion energies, elastic constants and bulk moduli of Mg, Al and Cu and their Hcp-Mg rm1\rij # rc1 (13) j rij ¼ 8 rij > > A exp p 1 ; 2 > 2 < r 0 rij # rm2 n2 > > r rc2 rij > : A2m exp p2m ij 1 ; rm2 \rij # rc2 r0 r0 r0 (14) where Ei is the total potential energy of atom i, 4 and j is the pair item and n-body item respectively, and rij is the distance This journal is © The Royal Society of Chemistry 2016 a (Å) c (Å) Ec (eV) C11 (Mbar) C12 (Mbar) C13 (Mbar) C33 (Mbar) C44 (Mbar) B0 (Mbar) a Fcc-Al Fcc-Cu Fitted Exp. Fitted Exp. Fitted Exp. 3.209 5.235 1.508 0.591 0.270 0.223 0.642 0.112 0.362 3.209a 5.21a 1.510b 0.595a 0.261a 0.218a 0.616a 0.164a 0.354a 4.051 4.050a 3.611 3.615a 3.387 0.821 0.705 3.390b 1.067a 0.605a 3.502 1.688 1.225 3.490b 1.683a 1.221a 0.289 0.743 0.283a 0.722a 0.745 1.361 0.757a 1.370a Ref. 27. b Ref. 28. RSC Adv., 2016, 6, 102329–102335 | 102331 View Article Online RSC Advances Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. Table 3 Paper The fitted potential parameters of the Mg–Al–Cu system p1 A1 (eV) rm1 (Å) n1 p1m A1m (eV) rc1 (Å) p2 A2 (eV2) rm2 (Å) n2 p2m A2m (eV2) rc2 (Å) r0 (Å) Mg Al Cu Mg–Al Mg–Cu Al–Cu 10.37307 0.145780 3.522308 4 3.850843 0.538535 5.487015 4.375061 0.951887 2.588516 5 0.000378 1.130393 6.250000 3.203567 8.776460 0.402184 2.764394 4 2.588558 2.917212 4.607023 5.249466 4.738155 3.786874 5 0.000477 1.114067 6.515324 2.864321 9.625372 0.315491 2.124148 4 2.860823 8.049825 3.634148 4.903930 3.854734 3.611361 5 0.000602 0.458708 6.215324 2.553618 10.23828 0.190712 2.654430 4 3.447698 3.457160 4.421070 3.439821 1.890899 2.636021 5 0.000438 0.441637 6.996059 2.999131 7.831151 0.257021 2.100661 4 3.867485 0.723304 5.005640 3.735459 2.685112 2.555986 5 0.000781 0.948748 6.409856 2.878592 4.575749 0.977351 2.162239 4 1.107382 1.112537 5.286440 4.620459 9.720919 3.618114 5 0.000619 1.388810 6.550000 2.708969 Table 4 The properties reproduced from the interatomic potential (first line) and calculated via ab initio methods (second line) of the Mg–Al, Mg–Cu and Al–Cu compounds Compounds Space group a or a, c or a, b, c (Å) Ec (eV) B0 (Mbar) MgAl3 m Pm3 4.168 4.156 2.913 2.913 0.6364 0.6390 MgAl m Pm3 3.424 3.402 2.379 2.378 0.4902 0.4717 Mg17Al12 3m I4 10.59 10.57 2.305 2.305 0.4875 0.4912 MgCu2 m Pm3 7.118 7.048 2.984 2.984 0.806 0.954 compounds which are obtained by tting experiments or ab initio calculations.28,29 It can be seen that the physical properties tted by the potential match quite well with the experimental results or ab initio calculations. We further evaluated the tted potentials in a non-equilibrium state. The equation of state (EOS) derived from the potentials was compared with the Rose equation.31 The pair terms, n-body parts and the total energies reproduced from the potential, together with the corresponding Rose equations, are shown in Fig. 2. It can be seen that the pair terms, n-body parts and the total energy of these structures are smooth and continuous over the entire range. Meanwhile, the EOSs derived from the proposed potential agree well with the corresponding Rose equations, indicating that the constructed Mg–Al–Cu potential could be applied to describe the atomic interactions of the system even far from the equilibrium state. In conclusion, the newly constructed Mg–Al–Cu potential is adequate to describe the atomic interactions in both equilibrium and nonequilibrium environments. 4. Simulation models and characterization methods During the process of forming metallic glasses, kinetic conditions were always limited, and thus complicated intermetallic compounds are not able to nucleate and grow. The phase competing against the metallic glass is therefore the solid 102332 | RSC Adv., 2016, 6, 102329–102335 MgCu m Pm3 3.194 3.159 2.595 2.594 0.532 0.698 Mg2Cu Fddd 9.156, 5.333, 18.55 9.062, 5.283, 18.35 2.291 2.292 0.497 0.540 Al3Cu m Pm3 4.009 3.939 3.494 3.493 0.590 0.611 Al2Cu I4/mcm 5.997, 5.083 6.067, 4.877 3.623 3.623 0.681 0.792 AlCu3 m Pm3 3.700 3.696 3.660 3.658 0.862 1.253 solution, frequently of a simple structure. Consequently, the issue related to the glass formation is converted into one comparing the relative stability of the solid solution to its amorphous counterpart.18,32–34 Based on the Mg–Al–Cu n-body potential, Monte Carlo methods were employed for the following simulations. Since the stable crystalline structure of Mg, Al and Cu is hcp, fcc and fcc, respectively, two types of solid solution model, i.e. the hcp and fcc solid solution models, were constructed according to which type of atom is dominant in the alloy composition. For fcc models, the [100], [010] and [001] crystalline direction is parallel to the x, y and z axes, respectively, while for the hcp model, the [100], [001] and [120] crystalline direction is parallel to the x, y and z axes, respectively. Periodic boundary conditions were applied in the three directions. The hcp and fcc solid solution models consist of 2912 (13 8 7 4) atoms and 2916 (9 9 9 4) atoms, respectively. In constructing the solid solution models, the solvent atoms were substituted randomly by a certain number of solute atoms to obtain a desired composition. The initial solid solutions were annealed at zero pressure and 300 K in an isothermal–isobaric ensemble for a sufficient simulation time in order to reach a relatively stable state. 4.1 Glass formation region of the Mg–Al–Cu system Based on the solid solution models, MC simulations were carried out over the entire composition triangle. For a solid solution of MgxAlyCu1xy, the values of x and y were varied with This journal is © The Royal Society of Chemistry 2016 View Article Online Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. Paper RSC Advances Fig. 2 Total energies, pair terms and n-body parts as a function of lattice constant calculated from the interatomic potential and the Rose equation for Mg, Al, Cu, Mg17Al12, MgCu and Al3Cu. a composition interval of 5% to cover the range of 0 to 100%, and the initial lattice parameter of each solid solution was set according to Vegard's law. Aer an adequate MC simulation time, the initially constructed solid solution models reach two different stable states with varying compositions, i.e., either keeping the initial crystalline state or collapsing into a disordered state. Taking the Mg50Al50 and Mg5Al70Cu25 alloys as examples, Fig. 3 shows the total pair-correlation functions S(q) 35 and atomic position projections of these two alloys. In Fig. 3(a), it is obvious that the S(q) curve of Mg50Al50 shows crystalline peaks, suggesting a long-range ordered state, and in Fig. 3(c) the atoms are arranged regularly. For Mg5Al70Cu25, as seen in Fig. 3(b), all the peaks beyond the second have disappeared, exhibiting typical long-range disordered and short-range ordered features. This is also shown by the fact that the crystalline lattice has collapsed into an amorphous state, as shown in Fig. 3(d). According to S(q) and atomic position projections, we dealt with the entire Mg–Al–Cu composition as shown in Fig. 4(a). The composition triangle was divided into three regions by two critical solubility lines, i.e., the lines AB and CD. When an alloy composition was located beyond line CD and toward the Al–Mg side, or beyond line AB and toward the Cu corner, the crystalline structure could remain stable. When the composition falls in the central quadrilateral region, enclosed by ABCD, the crystalline structure would become unstable and spontaneously collapse into an amorphous state. This quadrilateral region is thus dened as the glass formation region (GFR). To further validate the predicted GFR, experimental observations36–40 were extensively collected for the Mg–Al–Cu system and shown in This journal is © The Royal Society of Chemistry 2016 Fig. 4(a) by the red dots. It can be seen that these experimental data mostly fall within the predicted quadrilateral region. In comparison to the results obtained by thermodynamic calculations, they agree well with each other, suggesting that the results predicted by the MC simulations are quite reasonable for the Mg–Al–Cu system. Meanwhile, the procedure of the MC simulations conrms that the formation mechanism of metallic glasses is the competition between the metallic glass and the solid solutions. Besides, the obtained GFR is derived directly from the interatomic potential, so it could be considered as the intrinsic GFR of the Mg–Al–Cu system, which is determined by its internal characteristics. 4.2 Composition optimization for glass formation Based on the obtained glass formation range, one can conveniently predict the glass formation at a given composition. However, the issues related to the GFA of each Mg–Al–Cu alloy, i.e. the ease or difficulty in obtaining the metallic glass, still remain. To depict the GFA, the energy differences between the amorphous phase and the solid solutions of each MgxAlyCu1xy alloy were calculated and dened as the amorphization driving force (ADF), represented by the term DEam, which can be expressed as: DEam ¼ Eam [xEMg + yEAl + (1 x y)ECu] (15) where Eam is the energy per atom of the MgxAlyCu1xy amorphous phase and EMg, EAl and ECu is the lattice energy of Mg, Al and Cu respectively. The ADF of each MgxAlyCu1xy alloy was RSC Adv., 2016, 6, 102329–102335 | 102333 View Article Online Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. RSC Advances Paper Fig. 3 The total pair-correlation functions S(q) and atomic position projections for (a and c) the crystalline state of Mg50Al50 and (b and d) the amorphous state of Mg5Al70Cu25. Green circles represent Mg, orange circles represent Al and blue circles represent Cu. Fig. 4 The glass formation stoichiometry diagram derived from the MC simulations at 300 K for the Mg–Al–Cu ternary system. (a) The glass formation range bounded by ABCD and (b) the distribution of the ADF of each composition within the glass formation range. thus obtained and shown in Fig. 4(b). It is clear to see that the ADF is negative over the whole GFR and energetically favored, suggesting that the energy of the amorphous phase is lower than that of the solid solution. Moreover, the larger the ADF is, the stronger the GFA is. Thus, a sub-region with the composition of MgxAlyCu1xy (x ¼ 20–30; y ¼ 30–40; 1 x y ¼ 35–45) shows a larger ADF than those alloys located outside the subregion. It follows that the Mg–Al–Cu amorphous alloys within the sub-region are expected to be more attainable or more thermally stable, thus providing basic guidelines for designing appropriate alloy compositions for producing Mg– Al–Cu metallic glasses. Besides, the sub-region is consistent 102334 | RSC Adv., 2016, 6, 102329–102335 with the thermodynamic calculations, in that they both show similar compositions for the best GFA. The relevance of the optimal compositions of the Mg–Al–Cu system, as well as the validity of the constructed n-body potential, has been further conrmed. 5. Conclusion In conclusion, the glass formation range and ability of ternary Mg–Al–Cu metallic glass are obtained by thermodynamic calculations and an atomistic approach. Firstly, thermodynamic calculations were applied and show that the Mg–Al–Cu This journal is © The Royal Society of Chemistry 2016 View Article Online Published on 14 October 2016. Downloaded by Ningbo Institute of Materials Technology and Engineering, CAS on 08/03/2017 11:18:02. Paper metallic glasses are favored over a large composition range, and that the sub-region of MgxAlyCu1xy (x ¼ 20–30; y ¼ 30–40; 1 x y ¼ 35–45) shows a better GFA than the other compositions. Then, we further investigated the system from an atomic level and a realistic interatomic potential was constructed for the Mg–Al–Cu system under a proposed modied tight-binding formalism, and applied in Monte Carlo simulations to predict the favored composition, and even pinpoint the optimized composition. The simulation not only predicted a quadrilateral region, within which Mg–Al–Cu metallic glass formation is energetically favored, but also pinpointed an optimized subregion (MgxAlyCu1xy (x ¼ 20–30; y ¼ 30–40; 1 x y ¼ 35– 45)) within which the amorphization driving force (ADF), i.e. the energy difference between the solid solution and the disordered state, is larger than that outside. The GFR and the optimized compositions are fairly consistent with the thermodynamic calculations. The simulations not only provided predictions for producing Mg–Al–Cu metallic glasses, but also revealed the physical origin of the crystal–amorphous transition, which could be of great help for guiding the composition design of ternary glass formers. Acknowledgements The authors are grateful for the nancial support from the National Natural Science Foundation of China (51131003, 51571129), and the Administration of Tsinghua University. The authors appreciate Dr Shunning Li and Dr Simin An for their collection of experimental data and providing some advice for the present work. References 1 J. J. Gilman, J. Appl. Phys., 1975, 46, 1435–1436. 2 W. Klement, R. H. Willens and P. Duwez, Nature, 1960, 187, 869–870. 3 A. L. Greer and M. F. Ashby, Scr. Mater., 2006, 54, 321–326. 4 T. Lin, C. Yong-Qiang, S. Zhi-Wei, L. Ju, W. Cheng-Cai, H. Xiao-Dong, S. Jun and M. Evan, Nat. Commun., 2012, 3, 609. 5 J. Schroers, Adv. Mater., 2010, 22, 1566–1597. 6 W. H. Wang, C. Dong and C. H. Shek, Mater. Sci. Eng., R, 2004, 44, 45–89. 7 B. A. Sun and W. H. Wang, Prog. Mater. Sci., 2015, 74, 211– 307. 8 S. G. Kim, A. Inoue and T. Masumoto, Mater. Trans., JIM, 1990, 31, 929–934. 9 H. Ma, Q. Zheng, J. Xu, Y. Li and E. Ma, J. Mater. Res., 2005, 20, 2252–2255. 10 C. C. Wang and C. H. Wong, Intermetallics, 2012, 22, 13–16. 11 Y. Y. Cui, T. L. Wang, J. H. Li, Y. Dai and B. X. Liu, Phys. Chem. Chem. Phys., 2011, 13, 4103–4108. 12 F. Q. Guo, S. J. Poon and G. J. Shiet, Appl. Phys. Lett., 2004, 84, 37–39. 13 D. Turnbull, Contemp. Phys., 1969, 10, 473–488. This journal is © The Royal Society of Chemistry 2016 RSC Advances 14 A. Inoue, T. Zhang and T. Masumoto, J. Non-Cryst. Solids, 1993, 156, 473–480. 15 Z. P. Lu and C. T. Liu, Acta Mater., 2002, 50, 3501–3512. 16 D. Turnbull, Trans. Metall. Soc. AIME, 1961, 221, 422–439. 17 T. Egami and Y. Waseda, J. Non-Cryst. Solids, 1984, 64, 113– 134. 18 J. H. Li, X. D. Dai, S. H. Liang, K. P. Tai, Y. Kong and B. X. Liu, Phys. Rep., 2008, 455, 1–134. 19 F. R. de Boer, R. Boom, W. C. M. Mattens, A. R. Miedema and A. K. Niessen, Cohesion in metals: transition metal alloys, 1988. 20 J. A. Alonso, L. J. Gallego and J. A. Somoza, Nuovo Cimento Soc. Ital. Fis., D, 1990, 12, 587–595. 21 Z. Wang, P. Wen, L. S. Huo, H. Y. Bai and W. H. Wang, Appl. Phys. Lett., 2012, 101, 121906. 22 G. J. Vanderkolk, A. R. Miedema and A. K. Niessen, J. LessCommon Met., 1988, 145, 1–17. 23 L. Xia, S. S. Fang, Q. Wang, Y. D. Dong and C. T. Liu, Appl. Phys. Lett., 2006, 88, 171905. 24 T. L. Wang, J. H. Li and B. X. Liu, Phys. Chem. Chem. Phys., 2009, 11, 2371–2373. 25 J. H. Li, X. D. Dai, T. L. Wang and B. X. Liu, J. Phys.: Condens. Matter, 2007, 19, 086228. 26 V. Rosato, M. Guillope and B. Legrand, Philos. Mag. A, 1989, 59, 321–336. 27 D. F. a. B. Smit, Understanding molecular simulation: From algorithmx to applications, Academic, New York, 2002. 28 C. Kittel, Introduction to solid state physics, Wiley, New York, 2002. 29 D. R. L. a. T. J. Bruno, CRC handbook of chemistry and physics, New York, 2002. 30 M. D. Segall, P. J. D. Lindan, M. J. Probert, C. J. Pickard, P. J. Hasnip, S. J. Clark and M. C. Payne, J. Phys.: Condens. Matter, 2002, 14, 2717–2744. 31 J. H. Rose, J. R. Smith, F. Guinea and J. Ferrante, Phys. Rev. B: Condens. Matter Mater. Phys., 1984, 29, 2963–2969. 32 B. X. Liu, W. S. Lai and Q. Zhang, Mater. Sci. Eng., R, 2000, 29, 1–48. 33 J. M. Lopez, J. A. Alonso and L. J. Gallego, Phys. Rev. B: Condens. Matter Mater. Phys., 1987, 36, 3716–3722. 34 H. W. Sheng, G. Wilde and E. Ma, Acta Mater., 2002, 50, 475– 488. 35 C. Suryanarayana and M. G. Norton, X-Ray diffraction: a practical approach, Plenum Press, 1998. 36 H. B. Yan, F. X. Gan and D. Q. Huang, J. Non-Cryst. Solids, 1989, 112, 221–227. 37 S. Y. Wang, M. J. Kramer, M. Xu, S. Wu, S. G. Hao, D. J. Sordelet, K. M. Ho and C. Z. Wang, Phys. Rev. B: Condens. Matter Mater. Phys., 2009, 79, 144205. 38 R. H. de Tendler, M. R. Soriano, M. E. Pepe, J. A. Kovacs, E. E. Vicente and J. A. Alonso, Intermetallics, 2006, 14, 297–307. 39 M. F. M. Wahid, K. J. Laws and M. Ferry, Mater. Res. Innovations, 2013, 17, s67–s72. 40 T. Aburada, J. M. Fitz-Gerald and J. R. Scully, Corros. Sci., 2011, 53, 1627–1632. RSC Adv., 2016, 6, 102329–102335 | 102335