Improving Deposited Surface Quality in Additive Manufacturing Using Structured Light Scanning Characterization and Mechanistic Modeling
Abstract
:1. Introduction
2. Methodology
2.1. Fabrication of Parts Using Laser DED
2.2. Structured Light Scanning Characterization of Part Surfaces
Parameters | Values |
---|---|
Thermal conductivity of alloy, W/mK | 15 |
Specific heat, J/kgK | 500 |
Density, kg/m3 | 7800 |
Latent heat of fusion, J/kg | 272,000 |
Surface tension, N/m | 1.5 |
Surface tension gradient with temperature, N/mK | 0.0004 |
Solidus temperature, K | 1693 |
Liquidus temperature, K | 1733 |
Viscosity, Pa·s | 0.007 |
Laser beam diameter, mm | 2.0 |
Average powder diameter, microns | 75 |
Shielding gas (Argon) velocity, m/s | 5 |
Shielding gas (Argon) flow rate, L/min | 4 |
Hatch spacing, mm | 0.5 |
Ambient temperature, K | 298 |
Laser absorptivity | 0.3 |
2.3. Calculations of Temperature Fields and Deposit Geometry
- The mechanistic model assumes a quasi-steady state of heat conduction [1]. In this method, the coordinates along the direction of the laser beam scanning are transformed to capture the scanning speed effect. The method also assumes that the substrate width is significantly larger than the width of the deposited track.
- The LDED process is in conduction mode. The effects of the convective flow of liquid metal inside the molten pool [1], mainly driven by buoyancy and the spatial gradient of surface tension on temperature fields, are neglected. However, the model is calibrated against a 3D, transient numerical heat transfer and fluid flow model [39].
- Thermophysical properties of alloys are assumed to be independent of temperature. The laser absorptivity is assumed to be a constant.
2.4. Three Physical Factors and Their Calculations
3. Results and Discussions
3.1. Temperature Fields and Deposit Geometry
3.2. Effects of Three Physical Factors on Surface Quality
3.3. Skewness and Kurtosis of the Deposited Surfaces
3.4. Surface Quality Map
4. Summary and Conclusions
- (1)
- The average surface roughness of deposits fabricated by laser-directed energy deposition was found to increase at higher values of the geometric, instability, and disintegration factors. Based on the geometric factor, it was found that the surface roughness could be minimized by fabricating thinner and wider deposits and by lowering the hatch spacing. A pronounced hydrodynamic instability of the molten pool indicated by a high value of the Richardson number could result in rough surfaces. A long solidification time and low surface tension force on the molten pool surface could lead to the disintegration of the molten pool into small balls on the deposit surface and degrade the surface quality.
- (2)
- Surfaces with positive skewness values primarily had peaks. The sharpness of the peaks was represented by kurtosis. The skewness and kurtosis of the printed deposit surfaces were close to 0 and 3, respectively, indicating a normal distribution of the surface profile. In addition, the measured values of skewness and kurtosis show that the LDED deposit surface quality was significantly better than traditional manufacturing processes such as milling, honing, grinding, electro-discharge machining, and turning.
- (3)
- A surface quality map indicating the relative susceptibilities to surface roughness at different LDED processing conditions is presented. From the map, it was found that a high heat input and powder mass flow rate could degrade the surface quality. A high heat input results in a larger pool that can disintegrate into small balls and increase surface roughness. A large mass accumulation per unit length of the track at a high mass flow rate can increase the peak-to-valley distance and result in a rough surface. The surface quality map can be used to select appropriate sets of process parameters to improve deposit surface quality.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Approach | Limitations | Reference | |
---|---|---|---|
Experimental | Post-process laser polishing with optimized processing conditions was used. | The process is expensive, difficult to apply for internal surfaces, and can promote other defects and undesirable microstructure. | [8] |
Post-process laser remelting removed the traces of the spatter and unmelted powder to improve the surface quality. | The process is time-consuming, expensive, and applicable only to external surfaces. | [9,10] | |
Post-process laser remelting reduced surface roughness and waviness. | The process is tested only for thin wall structures. In addition, there is no guided approach to select the power of remelting laser. | [11] | |
Post-process laser polishing was applied at different laser energy levels to improve surface finish. | The process is time-consuming and applicable only to the external surfaces. | [12] | |
An annular laser beam produced a higher temperature at the deposit edges than at the center and was beneficial to obtain smooth surfaces. | Commercial LDED machines have limited flexibility in adjusting the laser beam profile. | [13] | |
The scanning direction was changed between two consecutive layers to minimize the surface unevenness. | Changing scanning direction between layers can result in other defects such as lack of fusion. | [14] | |
Process parameters such as power of the laser beam and scanning speed were adjusted to improve surface quality. | Trial-and-error adjustment of process variables is time-consuming and expensive. | [15,16] | |
Computational and data sciences | A three-phase computational fluid dynamics model was used to observe the melting dynamics of individual powder particles to understand the evolution of surface features. | Powder scale models simulating the dynamics of individual powder particles are computationally intensive and can not be used in real time. | [17] |
A thermal finite element simulation was used to adjust the laser power to control the melt pool dimensions and surface quality. | A limited understanding of the relations between the temperature field and surface quality can make the part-scale thermal models inefficient. | [18] | |
A simplified geometric model was used to obtain the track overlap to approaximately predict the surface smoothness. | This model did not consider the effects of temperature fields and molten pool geometry on surface quality. | [19] | |
Multiphysics Object-Oriented Simulation Environment based model was used to obtain the deposit surface features. | This approach did not provide the local surface roughness, skewness, and kurtosis | [20] | |
Statistical correlations and machine learning frameworks were established to reduce surface roughness by adjusting process variables. | The use of statistical correlations and machine learning depends on the availability of high-quality data. | [21,22,23] |
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Mukherjee, T.; Shen, W.; Liao, Y.; Li, B. Improving Deposited Surface Quality in Additive Manufacturing Using Structured Light Scanning Characterization and Mechanistic Modeling. J. Manuf. Mater. Process. 2024, 8, 124. https://doi.org/10.3390/jmmp8030124
Mukherjee T, Shen W, Liao Y, Li B. Improving Deposited Surface Quality in Additive Manufacturing Using Structured Light Scanning Characterization and Mechanistic Modeling. Journal of Manufacturing and Materials Processing. 2024; 8(3):124. https://doi.org/10.3390/jmmp8030124
Chicago/Turabian StyleMukherjee, Tuhin, Weijun Shen, Yiliang Liao, and Beiwen Li. 2024. "Improving Deposited Surface Quality in Additive Manufacturing Using Structured Light Scanning Characterization and Mechanistic Modeling" Journal of Manufacturing and Materials Processing 8, no. 3: 124. https://doi.org/10.3390/jmmp8030124
APA StyleMukherjee, T., Shen, W., Liao, Y., & Li, B. (2024). Improving Deposited Surface Quality in Additive Manufacturing Using Structured Light Scanning Characterization and Mechanistic Modeling. Journal of Manufacturing and Materials Processing, 8(3), 124. https://doi.org/10.3390/jmmp8030124