Numerical Simulation and Defect Identification in the Casting of Co-Cr Alloy
Abstract
:1. Introduction
2. Materials and Methods
2.1. Numerical Simulation
- Ceramic shell and pouring cup were 50 W/m2K
- Ceramic shell and wool blanket were 20 W/m2K
2.2. Investment Casting
2.2.1. Ceramic Shell Production
2.2.2. Thermocouple Positioning
2.2.3. Metal Pouring
3. Results and Discussion
3.1. Numerical Simulation Results
3.2. Cylinder with a Conic Gating System
3.3. Hip Prostheses
4. Conclusions
- It is possible to match numerical information with experimental results by controlling the thermal properties of the CoCr alloy, the interface between volumes, as well as heat conditions of the numerical model.
- Thermal properties are essential and can significantly influence numerical results. For any numerical simulation, there is a great need to study the alloy properties to achieve reliable results.
- The enthalpy curve plays a very important role in predicting shrinkage porosity and temperature behaviour. With a lower enthalpy value, for the same amount of mass and energy lost, and the decay of temperature is higher.
- With an increase in conductivity, the alloy and wool blanket cooling level is higher, proving that thermal conductivity influences numerical simulation results.
- Emissivity has virtually no influence on metal cooling behaviour.
- Heat transfer coefficients between the alloy and the ceramic shell only affect metal cooling behaviour below the solidus temperature.
- It is possible to develop a model that can predict shrinkage porosity defects in casts with different geometries, if the same alloy thermal properties and same thermal conditions are applied.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Tetrahedral Elements Size (mm) | |
---|---|
Cast | 10 |
Ceramic shell | 6.5 |
Wool blanket | 6.5 |
Element | Content |
---|---|
Cr | 27–30% |
Mo | 5–7% |
Ni | <0.5% |
Fe | <0.75% |
C | <0.35% |
Si | <1.0% |
Mn | <1.0% |
W | <0.2% |
P | <0.02% |
S | <0.01% |
N | <0.25% |
Al | <0.1% |
Ti | <0.1% |
B | <0.01% |
Co | Bal. |
Material Information | |
---|---|
Wax | PARACAST FW 13.070 |
Ceramic slurry | Levasil colloidal silica + ZrSiO4 (first layers) and levasil colloidal silica + SiO2 (following layers) |
Stuccos | Zircon (first layer) and AlSi (in the following layers) |
Wool blanket | Super wool plus density: 96 kg/m3 and 13 mm of thickness |
Iteration Number | Enthalpy Curve |
Thermal Conductivity Curve |
Heat Transfer Coefficient Curve | Emissivity |
---|---|---|---|---|
IT1 | curve 1 (Figure 5) | curve 1 (Figure 4) | curve 1 (Figure 7) | 0.9 |
IT2 | curve 2 (Figure 5) | curve 1 (Figure 4) | curve 1 (Figure 7) | 0.9 |
IT3 | curve 3 (Figure 5) | curve 1 (Figure 4) | curve 1 (Figure 7) | 0.9 |
IT4 | curve 1 (Figure 5) | curve 2 (Figure 4) | curve 1 (Figure 7) | 0.9 |
IT5 | curve 1 (Figure 5) | curve 3 (Figure 4) | curve 1 (Figure 7) | 0.9 |
IT6 | curve 1 (Figure 5) | curve 1 (Figure 4) | curve 2 (Figure 7) | 0.9 |
IT7 | curve 1 (Figure 5) | curve 1 (Figure 4) | curve 3 (Figure 7) | 0.9 |
IT8 | curve 1 (Figure 5) | curve 1 (Figure 4) | curve 1 (Figure 7) | 0.7 |
IT9 | curve 1 (Figure 5) | curve 1 (Figure 4) | curve 1 (Figure 7) | 0.5 |
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Silva, R.; Madureira, R.; Silva, J.; Soares, R.; Reis, A.; Neto, R.; Viana, F.; Emadinia, O.; Silva, R. Numerical Simulation and Defect Identification in the Casting of Co-Cr Alloy. Metals 2022, 12, 351. https://doi.org/10.3390/met12020351
Silva R, Madureira R, Silva J, Soares R, Reis A, Neto R, Viana F, Emadinia O, Silva R. Numerical Simulation and Defect Identification in the Casting of Co-Cr Alloy. Metals. 2022; 12(2):351. https://doi.org/10.3390/met12020351
Chicago/Turabian StyleSilva, Raimundo, Rui Madureira, José Silva, Rui Soares, Ana Reis, Rui Neto, Filomena Viana, Omid Emadinia, and Rui Silva. 2022. "Numerical Simulation and Defect Identification in the Casting of Co-Cr Alloy" Metals 12, no. 2: 351. https://doi.org/10.3390/met12020351
APA StyleSilva, R., Madureira, R., Silva, J., Soares, R., Reis, A., Neto, R., Viana, F., Emadinia, O., & Silva, R. (2022). Numerical Simulation and Defect Identification in the Casting of Co-Cr Alloy. Metals, 12(2), 351. https://doi.org/10.3390/met12020351