An Efficient Track-Scale Model for Laser Powder Bed Fusion Additive Manufacturing: Part 1- Thermal Model

This is the first of two manuscripts that presents a computationally efficient full field deterministic model for laser powder bed fusion (LPBF). A new Hybrid Line (HL) heat input model integrates an exponentially decaying (ED) heat input over a portion of a laser path to significantly reduce the computational time. Experimentally measured properties of the high gamma prime nickel-based superalloy RENÉ 65 are implemented in the model to predict the in-process temperature distribution, stresses, and distortions. The model accounts for specific properties of the material as different phases. The first manuscript presents the HL heat transfer model, which is compared with the beam-scale exponentially decaying model, along with the melt pool geometry obtained experimentally by varying the laser parameters. The predicted melt pool geometry of the beam-scale ED model is shown to have good agreement with experimental measurements. While the proposed HL model exhibits lesser accuracy in predicting the melt pool geometries, it can predict the cooling rates and nodal temperatures as accurately as to the ED model. Moreover, under large time integration steps, the HL model becomes more than 1,500 times faster than the ED model.


INTRODUCTION
Laser powder bed fusion (LPBF) is an additive manufacturing (AM) process where a laser is used to locally consolidate powder into a desired geometry. Development of LPBF parts generally requires expensive trial-and-error experiments to determine an ideal set of laser parameters. A finite element (FE) model could be used to determine a set of laser parameters to reduce the number of defects and experimental iterations required to produce a functional AM part (Bikas, Stavropoulos, and Chryssolouris 2016;Tangestani et al., 2020).
Modeling requires knowledge of the material's thermo-mechanical behavior at different length scales. For LBPF processes, the laser spot size ranges from 50 to 250 µm (Yin et al., 2012;Paul, Gupta, and Singh 2015;Irwin and Michaleris 2016), while the final parts can achieve sizes in the centimeter scale. Consequently, to simulate full-scale AM parts, FE models must have large model sizes and high computational costs . There are limited publications describing a functional multi-scale model in detail and even fewer papers predicting the temperature field in a part-scale model (Pal et al., 2014;Francois et al., 2017;Liang et al., 2018;Gouge et al., 2019).
To simulate the thermal history and melt pool geometry, it is essential to accurately model the laser heat source. Depending on the length scale of the simulation, there are different types of heat input models such as beam-scale, track-scale, and layer-scale heat input models . One common approach to model laser melting at the part scale (macroscopic) is the lumped laser model where the heat source is distributed over multiple build layers. Several publications have applied a lumped heat source approach to LPBF simulation (King et al., 2015;Hodge, Ferencz, and Vignes 2016;Yang et al., 2018). This can accurately predict the part distortion and residual stresses but lacks resolution for thermal history at micro-and macroscopic scale. Beam-scale heat input models are capable of predicting the melt pool geometries, temperature distributions, and phase transitions within LPBF-printed parts as demonstrated in (Mukherjee, Zhang, and DebRoy 2017;Cook and Murphy 2019). However, to solve a typical transient beam-scale model, finite elements and time increments must be in the range of 100,000 and over 1,000,000, respectively, resulting in long computational times rendering it impractical at the part scale (Irwin and Michaleris 2016). To successfully model the effect of the laser beam at multiple scales, a model accounting for the effect of the laser beam at a larger scale must be developed.
One conventional approach to decrease the computational time at the laser-beam scale (microscopic) is to average the heat input over its path and simulate an entire track length in one increment. This is possible due to the high laser scan speed of the LPBF process. Luo and Zhao consider a simple Gaussian 2D track-scale heat source for a thermal model, which decreases the computational time by 70% (Luo and Zhao 2019). However, a 3D heat input is required to accurately simulate the heat penetration within the powder (Gusarov et al., 2009) and the heat distribution under the laser beam is far from a simple circular shape. Irwin and Michaleris propose a 3D heat source model to reduce the computational time by a factor of 100 with 10% error in predicted distortion (Irwin and Michaleris 2016). The model developed by Irwin and Michaleris (Irwin and Michaleris 2016) simulates the entire Goldak et al. heat input (Goldak, Chakravarti, and Bibby 1984) as a single heat input calculation. The semiellipsoidal power distribution proposed by Goldak et al. (Goldak, Chakravarti, and Bibby 1984) was originally developed for welding processes. Recently, Liu et al.  developed a new equation to describe the LPBF heat source more accurately. It follows a Gaussian profile on the Cartesian coordinate system, and an exponentially decaying profile along the z-direction. Zhang et al. (Zhang et al., 2019) showed that the exponentially decaying (ED) heat source model replicates the rapidly-moving LPBF laser heat source better than the model developed by Goldak et al.
Besides the laser heat source, the effect of the powder on heat absorption and cooling of the consolidated material must be considered during modelling of LPBF processing. The Irwin and Michaleris model neglects the effects of the powder state on the heat transfer boundary conditions (Irwin and Michaleris 2016). The powder properties have a significant effect on the LPBF thermo-mechanical performance, which has been described in . Sih and Barlow (Sih and Barlow 1994) showed thermal conductivity of the powder is significantly lower than the solid state of the material, which influences the heat distribution and residual stress.
In this series, a new track-scale model is proposed to account for the thermo-mechanical behavior at the microscopic scale. A new Hybrid Line (HL) heat input model is derived from the 3D ED heat input model from . The model accounts for the material state transition from powder to solid. It is calibrated for high gamma prime nickel-based (Ni-based) superalloys by incorporating thermo-mechanical properties of the powder and fully dense material. The first part of this work focuses on simulating the thermal behavior of LPBF. The HL model is evaluated by comparing the processing time and thermal behavior to experimental results and single-track simulation using beam scale ED model. Predicted melt pool geometries, nodal temperatures, cooling rates and temperature distributions are evaluated.

LPBF Experimental Procedure
To validate the HL model, a single-track LPBF design of experiments (DOE) was completed. The DOE print was conducted on an Aconity MIDI LPBF machine under atmospheric pressure conditions. A 120 mm × 85 mm × 2 mm substrate was printed on a non-pre-heated circular steel base plate using the as-received R65 powder. The as-built substrate was extracted and polished to minimize the surface roughness before printing a series of single tracks. A total of 90 single tracks were printed using 18 different process parameter combinations in a 40-μm thick powder layer on the polished substrate. Each set of parameters was repeated five times to achieve statistically consistent results. The process parameters investigated in this DOE included laser power and laser speed. The laser speed was varied from 800 to 1,300 mm/s in increments of 100 mm/s, and the laser power was varied from 180 to 220 W in increments of 20 W. The single-track DOE is shown in Figure 1A. A laser beam radius of 60 μm was maintained for the printing process.

Melt Pool Characterization
The printed single-track experiments were cross-sectioned perpendicular to the laser-path. Each block was mounted, ground and polished using standard metallographic techniques, then etched for 30 s with Glyceregia (15 ml HCl, Frontiers in Materials | www.frontiersin.org November 2021 | Volume 8 | Article 753040 2 10 ml Glycerol, 5 ml HNO3). Optical microscopy using a Keyence VK-X250 confocal laser microscope was completed to measure the melt pool width and depth of the printed tracks. Figure 1B shows an example of the melt pool dimensions obtained using this approach. The penetration into the substrate is considered the depth, and the distance between two edges of the melted zone is considered the width of the melt pool.

MODELLING OF THE LASER HEAT SOURCE
Accurate simulation of the LPBF process requires a thermal model capable of reproducing the laser heat input together with the dynamic phase transition between the solidified part and the powder bed. This section first describes the wellestablished beam-scale ED model used as a reference. Secondly, the new track-scale 3D heat source model developed for LPBF is described. Finally, the heat dissipation and FE implementation methodology are provided.

Beam Scale Exponentially Decaying Heat Input Model
In the ED model, the heat input energy from the laser is represented as a Gaussian distribution heat source on the surface and absorbed exponentially through the powder depth. The energy input (Q) of the ED model is given by: where Q is the input energy, η is the absorption coefficient, and P is the laser power. The parameters x, y, and z represent the orientations of the local coordinates, r l is the radius of the laser, and q 0 is the value of a 2D Gaussian heat input profile. The energy penetration depth within the powder is computed using the coefficient H, equal to the powder layer thickness, as done in .

Track Scale Hybrid Line Heat Input Model
For the HL model, the energy from the ED heat input model given in Eq. 1 is integrated over a time increment using Eq. 2: where Δt is the time increment, t 0 is the time at the beginning of the increment and Q is the time-average of the beam-scale heat input model. By substituting Eq. 1 into Eq. 2, the moving HL heat input model in the x direction corresponding to the laser scanning direction becomes: The function erf is the error function while x start and x end are the spatial start and endpoints of the heat input model. These two variables are defined by the laser speed (v s ) and time increment (Δt). The parameter η is the absorption factor obtained from (Keller et al., 2017), and the coefficient C is calibrated to match the ED model and account for the effect of latent heat. The track-scale model is more computationally efficient than the beam-scale model due to the increased time increment Δt, allowing fewer computations over the same track length. The time increment is dictated by the displacement equation (Δx v s Δt) and the terminal points (x start , x end ) of the scanned laser track.

Implementation of Heat Dissipation
The standard equations (Newton's laws) for heat dissipation during LPBF are taken from (Pham and Dimov 2001) and are applied to the two models. The equations developed by Sih and Barlow (Sih and Barlow 1994) are used to simulate the energy loss due to radiation. The overall emissivity is expressed as: and where ϕ is the powder bed relative density (65% from the machine settings), ε s is the emissivity of the solid (0.22) (Kieruj, Przestacki, and Chwalczuk 2016), ε H is the emissivity between adjacent powder particles, and A H is the area fraction of pores. Open surfaces are accounted for using convective boundary conditions based on the work of Li et al. (2019), and a value of 20 W m 2 o C is used as the coefficient for uniform natural convection. The ambient and initial temperatures for the model are both set to room temperature, 25°C.

Model Implementation in Finite Elements
The two heat transfer models (ED and HL) are implemented in Abaqus, a commercial finite element software. A part domain of 2.0 × 0.5 × 1.0 mm is modelled to capture melt pool dimensions of the beam-and track-scale models, as shown in Figure 2. The domain dimensions are selected to ensure a stable melt pool during the simulation as studied in (Cheng and Chou 2015). The powder layer thickness implemented in the model is 0.04 mm based on LPBF settings described in Laser Powder Bed Fusion Experimental Procedure. DC3D8 elements are used to mesh the substrate and powder layer. Based on a mesh sensitivity study, the powder region interacting with the laser is meshed with element dimensions of 10 μm for the y and z directions, and 20 μm for the x-direction. Coarser elements are employed for regions further from the laser heat source to decrease computation time.

Material Properties
Temperature-dependent material properties such as specific heat capacity and thermal conductivity are used in the solid substrate and R65 powder, as demonstrated in Figure 3. The thermal conductivity was experimentally measured using the laser flash approach described in (Touloukian, 1970), and the specific heat capacity was measured by pulse heating and enthalpy methods from (Touloukian and Buyco 1970). For the track-scale model, modified specific heat data is used to avoid failure in convergence. There is a spike in specific heat capacity around 1,000°C in Figure 3A that could generate numerical instabilities. A line extended from the last point before the peak and a "cut-off temperature" of 1,100°C is used to modify the data, as done in (Promoppatum and Rollett 2021). This is necessary for Ni-based superalloys due to gamma prime phase transformation, resembling the approaches used in (Baykasoglu et al., 2018;Olleak and Xi 2018;Anca et al., 2011;Rahman et al., 2019) for superalloys. However, this may not be required for the model's application to other alloy systems depending on the specific heat capacity as a function of temperature. The heat conduction coefficient inside the melt pool is set 2.8 times higher than solid-state to compensate for the convective heat transfer due to fluid flow inside the melt pool (see Figure 3B) (Ding 2012). The liquid state is not considered in the model, but a higher thermal conductivity is used for nodal temperatures above the liquidus. The liquidus (1,381°C) and solidus (1,338°C) were obtained experimentally using differential scanning calorimetry (DSC).
For the powder bed, the effective thermal conductivity k is taken from (Sih and Barlow 1994;Kundakcıoğlu et al., 2018) and is defined as: where k s is the solid material thermal conductivity, k f is the thermal conductivity of air, and k r represents the thermal conductivity portion of the powder bed. The coefficient k r accounts for radiation among particles, as described in the following equation taken from (Kundakcıoğlu et al., 2018): where d p is the powder particle diameter. A value of 8,276 kg/m 3 provided by the material supplier is used for the powder density and the following equation is used to determine the powder state density: where ρ p is the powder bed density and ρ s is the density of the fully dense material. The latent heat of melting (247,075 J), obtained experimentally using DSC, is taken into consideration in the ED model but not in the track-scale model. This is because of the convergence issue described previously. The latent heat of evaporation is assumed to be 33 times larger than the melting energy based on (Cao and Yuan 2019) who used a similar alloy. The temperature range of the phase transformation for evaporation is assumed to be from 3,000°C to 3,500°C; however, these temperatures are not approached in the track-scale simulations.

Modelling Material State Transformation
During LPBF processing, the material undergoes phase changes from solid powder to a liquid in the melt pool and back to a consolidated solid material. The liquid phase of the material is modelled as solid state with higher conduction as explained in Material properties. Both FEM implementations (ED and HL models) account for the material state changes. Above the melting temperature, the powder to solid-state transition is incorporated within the model using the USDFLD subroutine code in Abaqus. The relative density of the material state is stored in an index as shown in the legend of Figure 4A. The powder value is 0.65 (shown in blue), while the consolidated solid and liquid states both have a value of 1 (shown in red). The nodal temperature and the region experiencing temperatures higher than the melting point are shown in Figure 4B. Comparison of the figures demonstrates the correlation of the material transition and the nodal temperature during the process.
The USDFLD subroutine is called at the beginning of every time step to read the material index of each integration point to determine the material state and resulting properties. Figure 4C shows a schematic of the material state changes occurring at the beam scale. The heat source must always remain above the melt pool to accurately predict the material state transition. At time increment n, the DFLUX code applies heat to the material and the solver calculates the nodal temperatures. The material state at the time increment n + 1 is obtained from the nodal temperature of the previous increment (n). Consequently, the material state is always one time increment behind the applied heat source. Because the time increment in the ED model is small, the heat source is always situated above the melt pool allowing a low lag in material state transition. However, increasing the time step in the HL model causes significant delay in the material state transition and inaccuracy in thermal simulation, as shown in Figure 5A-D. Figures 5A,B show the nodal temperatures for subsequent time steps. The black ellipsoid shows the location of the applied heat. The lag of one increment between the heat input and the material state can be clearly observed in Figures 5C,D, as the applied heat is one increment in front of the material state transition.
To overcome any potential issue with the lag in phase transition, a new method accounting for phase transformation is proposed. To resolve the problem presented in Figure 5A-D , the material state change is set to occur above 5% of the total The value of 5% is calculated from the energy required to increase the material temperature to the melting point, which was used to predict the initial temperature of the activated material in . This value might differ slightly for other materials but is not expected to influence the accuracy  of the results. The lag of one increment between the heat input and the material state is now eliminated. This approach enables faster convergence of line heat input models and improves the accuracy of the predictions. Figure 6 shows the measured melt pool dimensions (depth and width) associated with the 18 different line energies described in Figure 1A. Each set of adjacent figures Figure 6A-F shows the melt pool depth and width with identical laser powers for different laser speeds. The error bars represent the maximum and minimum values of the five experimental repeats.

LPBF Melt Pool Geometry Analysis
As laser power increases, line energy increases, consequently leading to larger melt pool dimensions. Table 1 shows how the melt pool depths and widths increase at average rates of 16.4 µm W and 54.59 µm W with laser power in Figure 6. Conversely, as the laser speed increases, melt pool depths and widths decrease at average rates of 2.87 µm (mm/s) and 7.13 µm (mm/s) , respectively. Therefore, the laser power has more significant effect on the melt pool size than laser speed. Current results are consistent with previous researchers (Fu and Guo 2014;Irwin and Michaleris 2016) who also reported a stronger influence of laser power on the melt pool geometry.  The melt pool aspect ratio defined as melt pool depth divided by melt pool width shown in Figure 6 are plotted in Figure 7A with respect to the line energy density. The melt pool aspect ratio increases with increasing line energy density. The heat transfer mode generally transitions from conduction to keyhole mode between an aspect ratio of 0.4-0.5 (Ghosh et al., 2018;Cloots, Uggowitzer, and Wegener 2016;Khairallah et al., 2016), above which melt pools are in keyhole mode. Since the aspect ratio falls below 0.2 for each case, all laser conditions evaluated in this study are in conduction mode. The absence of a bell-shaped melt pool for the highest line energy density in Figure 7B confirms that the heat transfer mode is not keyhole. Additional studies would be required to validate the proposed HL model for laser heat sources operating in keyhole mode.

ED Model Evaluation
The laser radius (r l ) and H coefficient correspond to the experimental laser beam radius (60 µm) and powder bed thickness (40 µm) as recommended in . The absorption coefficient (η) for Ni-Based superalloys is 0.5 as per (Keller et al., 2017).
The ED heat input model is validated with the experimentally measured melt pool dimensions. The method used to measure the simulated melt pool geometry is shown in Figure 8. The grey region represents the area above the liquidus temperature, and only the grey portion within the substrate is considered for melt pool measurement.
The difference between the simulated and measured melt pool depths and widths are shown in Figure 6. Trends on the effect of laser speeds and powers on the melt pool geometries predicted by the ED model match the experimental observations. The simulated melt pool depths and widths increase at average rates of 21.25 µm W and 39.58 µm W , respectively, as the laser power increases and decreases at average rates of 3.24 µm (mm/s) and 6.86 µm (mm/s) , respectively, when laser speed increases (see Table 1). The predicted melt pool depth and width are on average within 4.2 and 11.0 μm of the experimentally measured values. This lies within the experimental error range derived from melt pool

HL Model Calibration
Following Irwin and Michaleris's methodology (Irwin and Michaleris 2016), the time increment (Δt (s)) of the HL model is normalized over the laser travel distance as follows: where v s is laser speed (m/s) and r l is beam radius (m). The parameter τ links the laser travel distance with r l . The heat source length of the HL model is equal to the ED beam radius when τ 1. When τ > 1, the heat source length is larger than the ED beam radius, reducing simulation time.
The H, r l , and η values are maintained from the ED model due to their dependency on the experimental set-up. As the ED model shows good agreement with experimental results, it is used as a reference to calibrate the coefficient C and validate the accuracy of the HL model in terms of temperature distribution and cooling rate. The coefficient C is determined by minimizing the difference in the nodal temperatures in regions surrounding the melt pools between the HL and ED models. A line energy of 200 J/mm is used for calibration and Figure 9 shows where the nodal temperatures are extracted. Cross-sections of the simulation results along the laser track are taken at different times. The number of cross-sections considered in the calibration is varied between three and nine depending on the value of τ due to the fixed part length. The cross-sections are taken ahead of, inside of and following the laser beam heat source. For each cross-section, only the nodal temperatures outside the melt pool (outside the grey region in Figure 9), are considered for calibration. As the laser heat input is lumped into a line, changing the value of τ changes the peak temperature in the melt pool. Thus, the temperatures inside the melt pool cannot be used for calibration. The calibration coefficient (C) is set to 1.2 independently of the normalized increment time (τ).

Computational Efficiency
The time required to solve the model is dependent on the number of time increments and iterations for each increment. While the term τ has a linear relationship with the time increment size, the number of iterations required for convergence increases with a larger time increment. Figure 10 shows the ratio between the time required to solve the HL and ED models Time ED TimeHL . The HL model is 330-1,500 times faster than the ED model as τ increases from 5 to 20. Even though the ratio should be close to τ (based on Eq. 3 and Eq.10), it is significantly larger in Figure 10. This is because the heat capacity relationship with temperature is simplified in the HL model and the latent heat is not considered as explained in Material properties. Consequently, the simulation requires a reduction of the time increment size by an average of Δt 7 × 10 −7 (for ED model) to overcome the FIGURE 9 | Example of an ED laser track simulation used for HL model calibration. The melt pool is shown in grey color. The nodal temperatures of the elements surrounding the melt pool are used for calibration of the HL model. The highlighted region (red cube) at the center of the cross section at the melt pool boundary is used to study the cooling rate in Cooling rate. convergence issue created by a sudden change in specific heat capacity shown in Figure 3A. The higher computational efficiency of the HL model over the ED model is thus due to simplified material properties and the integrated heat input equation.

Melt Pool Geometry
The heat input energy in the HL model is simplified from the ED model resulting in inaccuracies in prediction of the melt pool geometry. Nevertheless, the HL model with small time integration step (τ 5) offers reasonably accurate results while being 330 times faster than the ED model. Figure 11 shows the predicted melt pool dimensions (depth and width) for the HL model with τ 5. The trends on the effect of laser speeds on the melt pool depths predicted by the HL model match the experimental observations. As the laser speed increases, the melt pool width and depth decrease by average rates of 8.29 µm (mm/s) and 3.54 µm (mm/s) , respectively. The predicted melt pool depth and width are on average within 5.4 and 27.2 μm of the experimentally measured values. When the integration time step increases above τ 5, the simulated melt pool size decreases significantly due to the reduction in peak temperatures.

Laser Track Temperature
Simulation of the laser track temperature is necessary to understand the microscopic material behaviour during LPBF since it has a strong influence on the formation of microstructural inhomogeneity in Ni-based superalloys. This includes formation of bimodal grain structures resulting in strong thermo-mechanical anisotropy of the as-produced specimens discussed in (Carter, Attallah, and Reed 2012;Kontis et al., 2019). Detrimental phases and micro-segregation can arise during the LPBF process, promoting micro-cracking and low part ductility (Cloots, Uggowitzer, and Wegener 2016;Carter, 2013).
The nodal temperatures predicted by the ED and HL models are compared in Figure 12. The temperature distributions are taken on the top surface along the laser path, as shown by the red line in Figure 2 when the laser is located at 1.8 mm (90% of the simulation). The temperature distributions are predicted for three lines energies,275,200,and 138 J/mm,respectively. Both models demonstrate increasing maximum temperature with increasing laser power, consistent with previous experimental observations in (Carter, Attallah, and Reed 2012;Li et al., 2018). However, the HL model fails to capture the maximum temperature under the laser beam location (at 1.8 mm) because the heat input is homogeneously distributed along the time increment. As the τ value increases, the time step increases, and the maximum temperature decreases when compared with the ED model. The HL model exhibits plateaus in the temperature profiles (see numbers 1, 2 and 3 in Figure 12A). The length of each plateau is proportional to the τ value and thus to the time step used for integration along the laser path.
As the temperature decreases, the two models start converging in Figure 12 for all laser conditions. The errors in temperature predictions between the two models are given in Table 2 for various temperature ranges. Below 1,400°C, the temperature error varies between 1 and 15% for τ 5 and τ 10. Between 1,400°C and 1,300°C, the error is only 1.5% for τ 10 This is when material solidifies (liquidus 1,381°C and solidus 1,338°C). The error is approximately 12% within the solvus temperature range (∼1,110°C (Wessman 2016)). Both temperature ranges are critical to the LPBF of R65 since they are associated with the microcracking mechanism often observed in high γ′ Ni-based superalloys (Cloots, Uggowitzer, and Wegener 2016;Carter 2013;Grange et al., 2020) and the formation of carbides and gamma prime (γ') (Wessman 2016).

Cooling Rate
The cooling rate controls the thermal gradient causing thermal stresses and strains in the fabricated parts (Li et al., 2018). Therefore, the process-induced cooling rate must be captured accurately during the simulation. A comparison between the cooling rates obtained from the ED and HL models is shown in Figure 13. Three different laser conditions with line energies of 275, 200 and 138 J/mm are compared in Figures 13A-C, respectively. The cooling rates are evaluated at the melt pool boundary central to the laser track because it is a critical region for the formation of residual stresses. This is shown by the red cube element in the cross-section subset in Figure 9. As the melt pool depth depends on the energy input, the results are captured at locations of 40 μm, 22 μm, and 13 µm under the powder layer for line energies of 275, 200, and 138 J/mm, respectively. The maximum cooling rates obtained are on the order of 10 5°C /s, one order of magnitude lower than values reported in literature (∼10 6°C /s (Wang, Shi, and Liu 2019)). Lower cooling rates are attributed to the extraction of results as the laser reaches the end of the track (2 mm in Figure 2). Figure 13 shows that the cooling rates decrease rapidly and reach steady state around 2°C/s, 1 s after the track is printed. The average errors between the ED and HL models are 5.98, 5.37, 6.86, and 8.2% for τ 5, 10, 15, and 20, respectively. Both simulations show that increasing the line energy increases the cooling rate as it increases the maximum nodal temperatures shown in Figure 12. At 1.2 ms, the cooling rate decreases from 2.4×10 5°C /s to 1.1×10 5°C /s when the laser power drops from 220 to 180 W.

Temperature Distribution
The simulation of full-scale parts requires the temperature distribution to be accurately simulated. This entails accurate prediction of nodal temperatures, cooling rates, and the heat transfer between the different material states (liquid, solid and powder). Figures 14A,B show the temperature distributions in the ED and HL model with τ 10. The temperature distributions are taken 1.2 ms after track completion to minimize image contour level contrast due to peak temperatures. The nodal temperatures are higher at the end of the track since this is the last location of the laser heat source. The HL model temperature is higher at this position due to the length of its heat source. In both cases, the heat energy is mostly distributed within the solidified region and the substrate. The temperature gradients along the x, y, and z directions are similar for both models.  The ED beam-scale model was first validated by comparing the predicted melt pool geometry with experimental observations. Results show that the ED model can capture the melt pool geometry within few microns and the trends of the effect of laser speeds on the melt pool geometry within 10% error.  The comparison between the ED and HL models shows that the new track-scale model is a versatile substitute for a beam-scale model. At low τ value, the model can predict the effect of laser parameters on the melt pool geometry. The predicted melt pool depth deviates by approximately 5 μm, while the width prediction is less accurate due to variation in the peak temperature. The temperature distribution inside the laser path is in good agreement with the beam-scale model. This is specifically true for temperatures below the solidus where the deviation from the ED model remains below 5%. The sub solidus temperature range has the strongest impact on the microstructure generated during LPBF of Ni-based superalloys.
By increasing τ, some of the resolution is lost on the temperature profile resulting in increased error in peak temperature and melt pool geometry prediction. However, the cooling rate, which controls micro-and macroscopic stresses remains below 10% error with respect to the beam scale model. This allows for significant computational gains. At τ 5, the HL model is 330 times faster than the ED model and can easily become more than 1,000 times faster by increasing the τ value. The presented model is beneficial for predicting the in-process temperature field and thermal history that influences the resulting microstructure and mechanical properties of the printed material.

DATA AVAILABILITY STATEMENT
The original contributions presented in the study are included in the article/Supplementary Material, further inquiries can be directed to the corresponding author.

AUTHOR CONTRIBUTIONS
RT: Developed the track-scale model, evaluated the simulation results, and measured the melt pool dimensions. TS: Contributed with development of the modeling process and helped with writing the paper. AC: Helped experimental part of the paper, measured the melt pools, and contributed to evaluating the keyhole and conduction mode in process. WM: Worked on experimental part of the paper and the design of experiment; and extracted the samples from the baseplate. LY: Printed the single tracks on a single layer of powder and reviewed model development. ÉM: Supervised the project and contributed to writing the paper.