Modeling the Microstructure Evolution During Additive Manufacturing of Ti6Al4V: A Comparison Between Electron Beam Melting and Selective Laser Melting
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Abstract
Beam-based additive manufacturing (AM) is an innovative technique in which parts are built layerwise, starting from the material in powder form. As a developing manufacturing technique, achievement of excellent mechanical properties in the final part is of paramount importance for the mainstream adoption of this technique in industrial manufacturing lines. At the same time, AM offers an unprecedented opportunity to precisely control the manufacturing conditions locally within the part during build, enabling local influence on the formation of the texture and microstructure. In order to achieve the control of microstructure by tailoring the AM machine parameters, a full understanding and modeling of the heat transfer and microstructure evolution processes is needed. Here, we show the implementation of the non-equilibrium equations for phase formation and dissolution in an AM modeling framework. The model is developed for the Ti6Al4V alloy and allows us to show microstructure evolution as given by the AM process. The developed capability is applied to the cases of electron beam melting and selective laser melting AM techniques to explain the significantly different microstructures observed in the two processes.
Keywords
Martensite Microstructure Evolution Additive Manufacturing Selective Laser Melting Electron Beam MeltingIntroduction
Rapid prototyping differs from additive manufacturing (AM) in that the former is concerned with geometrical accuracy, while the latter adds a stringent requirement for the part’s mechanical properties.1 This requirement arises from the fact that AM parts not only need to be built but also to be put into service with an expected performance similar to, if not better than, corresponding cast parts (if available).2 In AM, several factors contribute to the ultimate mechanical properties of the part, including the manufacturing technique,3 the presence of porosity, including incomplete melting,4 proper thermal control to avoid balling/overmelting,5 and the quality of the powder feedstock.6 Moreover, even at optimal build conditions, in which the former issues are minimized, a large role is played by the actual metal microstructure, which represents the ultimate factor that dictates the mechanical properties of the part.
Ti6Al4V is a pseudo-binary alloy with rich equilibrium7 and non-equilibrium8 phase diagrams. The main phases are represented by \(\beta \), which is stable above 1000°C (beta transus),7 \(\alpha \), which is a diffusion-controlled phase stable below the beta transus, and martensite \(\alpha '\), which is \(\alpha \)-competing and originates from diffusionless transformation of \(\beta \) under specific circumstances. From a traditional metallurgy point of view, Ti6Al4V has been extensively studied and significant works on it have been published.9, 10, 11 For example, Lütjering et al. have shown that the thickness of the \(\alpha \) lath is the primary factor influencing strength and ductility.12 In turn, the \(\alpha \) lath thickness is controlled by the cooling rate after solidification, where faster cooling rates correspond to thinner \(\alpha \) laths.13 Moreover, rapid quenching below the so-called martensite start temperature (\(T_{\rm ms}\)) originates the \(\alpha '\) phase, which is hard but brittle.14 Overall, metallurgy of Ti6Al4V has been very successful in showing the relationship between the microstructure and its mechanical properties.
Introduction of Ti6Al4V in AM opens tremendous opportunities for manufacturing complex shapes with industrial relevance, for example, cellular structures for lightweight aircraft components.15 Therefore, understanding how the AM process influences the part microstructure is of paramount importance. In this regard, the focus of this work will be on electron beam melting (EBM) and selective laser melting (SLM), which are among the main AM processes for Ti6Al4V. The primary footprint of these two techniques is that SLM produces samples with close to 100% martensite, while EBM (both powder bed and wire feed) produces milder alloys with fine \(\alpha \) laths and retained \(\beta \).3 At the same time, a more sophisticated control of microstructure would be highly desirable. For example, such control could allow the production of parts with locally tailored mechanical properties. In order to control the microstructure during AM builds, it is first necessary to understand how microstructure evolves during the AM process. In this regard, modeling is useful because it allows the study of the process under well-defined and constant process parameters, which is not necessarily the case in actual machine builds in which process parameters continuously change.
Mesh employed in the simulations, which is composed of equal quadrilateral elements (4 integration points per element) with element size of 50 μm. The red highlight shows the elements that are added during the simulation. Each layer of elements corresponds to one layer of powder (Color figure online)
Model
Modeling was based on the finite element method (FEM) in which the commercial software ABAQUS was used for meshing, solution, and post-processing. Customization for additive manufacturing, as well as for microstructure evolution, was implemented through user subroutines. Additive manufacturing was modeled by considering a two-dimensional (2D) mesh of length × height of 5 × 1.2 mm. While such a size is small compared to common AM parts, our intention was to focus on a small mesh with fast convergence, which could show us the details of the thermal field as well as the microstructure evolution, which would be hindered at a larger scale. Addition of four layers of powder was considered, namely, the simulation consisted in the sequential addition of elements, using the “element birth” technique. Between two subsequent layers, a representative inter-layer time of 0.5 s was used to model the time needed by the recoater to spread the new powder layer. The simulation domain is shown in Fig. 1. Element size was 50 μm, which was one powder layer since the typical layer thickness for Ti6Al4V powder is 50 μm.16 Quadrilateral, linear elements with four integration points were employed.
Results and discussion
Validation of the implemented equations for microstructure evolution compared to the reference work of Kelly.21 Using the mesh domain of Fig. 1 as a solid block without additive manufacturing features, the mesh was constrained to follow the temperature path shown in (a). During temperature evolution, volume fraction of \(\alpha \) phase was recorded and compared to the one computed in Ref. 21 b). (a) and the green curve in (b) are adapted with permission from Ref. 21
Evolution of the temperature field during addition of four layers of powder. The arrow shows the direction of movement of the beam on each layer. Notice the heat accumulation at the sides of the scan track, caused by the low thermal conductivity of the powder compared to that of the bulk metal
Evolution of the volume fraction of \(\alpha \) phase at the same time frames as in Fig. 3. As the local temperature exceeds the beta transus, the alloy is purely in \(\beta \) phase (blue color). Later, as the material cools, \(\alpha \) nucleates from \(\beta \) with time dependence dictated by Eq. 4 in the text. Notice that, after deposition and scanning of a subsequent layer, the heat distribution is sufficient to transform \(\alpha \) into \(\beta \) at a considerable depth from the free surface, of around ten equivalent build layers. Finally, after the last layer is scanned, cooling induces the final transformation of \(\beta \) into \(\alpha \), which also involves the entire domain and not only the upper layer of material (Color figure online)
Evolution of the volume fraction of martensite \(\alpha '\) after completion of the four-layer scan, for a simulation in which machine parameters from selective laser melting were taken, in particular, where the boundary temperature was kept fixed at \(30^\circ {\rm C}\). (a) Martensite distribution immediately after scan of the fourth layer. (b)–(d) Limited martensite decomposition even after 50 min from the end of the build, because the domain temperature is not high enough to allow a significant rate of decomposition
Same evolution as in Fig. 5, except for the machine parameters which are now set for electron beam melting, in particular, where the boundary temperature was kept fixed at \(700^\circ {\rm C}\). (a) Martensite distribution immediately after scan of the fourth layer. (b)–(d) Complete martensite decomposition due to the relatively high domain temperature, allowing high kinetic rate for martensite decomposition
Next, our focus was on the formation and dissolution of martensite. To this end, two simulations were designed to represent the typical conditions of an EBM and a SLM machine, respectively. Here, because of the importance of resolving as many microstructure details as possible, a choice was made to halve the mesh size to 25 μm × 25 μm. Specifically, the two simulations differ in the heat source profile, the heat exchange at the free surface, and the preheating temperature, as described in the "Model" section. Under these conditions, the volume fraction of martensite at the end of the scanning of the four layers is shown in Figs. 5 and 6 for SLM and EBM, respectively. Comparison between the two panels show the formation of martensite in both cases, with slight variations in terms of qualitative distribution. In particular, the distribution \(\alpha '\) is shown to be more abrupt in the case of SLM than in EBM. This feature can be understood by recalling the lower build temperature, and therefore the sharper thermal gradients, that characterize SLM and therefore that limit the region of the sample where the conditions for martensite formation are met.
After scanning was complete, the material was allowed to anneal by keeping the boundary temperature constant. Figures 5 and 6 show the evolution of as-built martensite and, in particular, suggest that martensite decomposition is complete in EBM, while martensite is still mostly retained in SLM. This result is in agreement with actual manufacturing, where SLM samples consistently have more martensite than EBM samples.3 Indeed, further evidence of martensite formation and subsequent decomposition was recently found for EBM processing.16
Conclusion
In summary, we developed a numerical scheme in which the heat transfer and microstructure evolution equations are coupled for the additive manufacturing of Ti6Al4V parts. The simulations have shown that the heat transfer arising from material processing is sufficient to induce microstructure evolution through several layers below the free surface, and in particular to a depth of up to 10 layers. This result suggests that proper microstructure control has to be achieved by taking into account the effect of not only the first scan but also of the next few in determining the final microstructure. Formation and dissolution of martensite was studied in the context of comparing EBM to SLM processing. Given the two different processing temperature conditions, it was shown that EBM manufacturing allows for complete decomposition of martensite after build, while SLM mostly retains the martensite. Globally, our modeling represents a specific tool to understand and predict microstructure evolution in powder-bed additive manufacturing, and can help to find the choice of process parameters to locally control the microstructure which, in turn, allows the control of the final mechanical properties of the part.
Notes
Acknowledgements
The authors acknowledge helpful discussions with Dr. W. Pan and S.M.L. Nai at A*STAR Singapore Institute of Manufacturing Technology (SIMTech), and X. Tan and Prof. S.B. Tor at Nanyang Technological University. This work was supported by the Agency for Science, Technology and Research of Singapore through the Industrial Additive Manufacturing Program (Grants 132 550 4103 and 132 550 4106).
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