Simulation of Drilling Temperature Rise in Frozen Soil of Lunar Polar Region Based on Discrete Element Theory
Abstract
:1. Introduction
2. Model
2.1. Heat Transfer Model
2.1.1. Heat Transfer Model between Particles
2.1.2. Heat Transfer Model of Geometry
- The drill tool is discretized into equispaced drill tool elements and segmented into time step;
- In the current time interval, the variations of the drill temperature caused by the heat source at the front of the drill were calculated, and the influence of convective heat transfer and radiation heat dissipation on the heat transfer inside the drill is considered;
- In the current time interval, the original continuous temperature field was no longer continuous because of radiation or convection, and thermal was transferred from the high-temperature element to the low-temperature element inside the drill tool. Herein, this process is referred to as the secondary heat conduction. Moreover, secondary heat conduction was calculated using the central difference method;
- In the subsequent time interval, steps 2 and 3 are repeated;
- End of simulation and output results.
2.2. Discrete Element Model
2.2.1. Particle Modeling
2.2.2. Geometric Modeling
3. Experimental Apparatus and Simulated Frozen Lunar Soil
3.1. Experimental Apparatus
3.2. Simulated Frozen Lunar Soil
- Weigh all kinds of particle size anorthosite and basalt, into the oven for drying (more than 8 h);
- According to the different material different particle size ratio configuration, place into a blender for uniform mixing;
- After the mixing of dry soil, the mixing of water samples should be allocated according to dry soil and different water content.
- After the completion of mixed water configuration, homogenize seal stand for 6 to 8 h;
- Use a press to compact the sample five times to the required compactness;
- Sample the samples after compaction to verify the actual moisture content of the samples after preparation;
- Transfer the sample to the secondary refrigeration freezer (−80 °C) for storage after 6–8 h of primary refrigeration (−30 °C), and the sample needs to undergo secondary refrigeration for 6–8 h before use.
4. Results and Discussion
4.1. Drilling Parameters and Experimental Results
4.2. Simulation Parameters and Results
4.2.1. Simulation Parameters
4.2.2. Simulation Results
4.3. Analysis and Discussion
5. Conclusions
- The error between the results of the discrete element simulation and experiments in terms of temperature increase was approximately 10%, indicating that the developed model can calculate the increase in drilling tool temperature with a certain applicability in the drilling process.
- Under the drilling conditions and reasonable considerations of this study, the maximum increase in the drill bit temperature was approximately 60 °C.
- The heat distribution ratio between the drill tool and the simulated lunar soil will change during drilling. The results indicated that the current calculation model exhibited a high adaptability, and the calculation results were not invalid due to fluctuations in the distribution ratio.
- In the simulations, the majority of the lunar soil particles near the drill tool traversed along the positive direction of the Z-axis, and the flow of the simulated lunar soil particles could effectively reduce the rate of temperature increase for the drill bit. Only a few particles near the drill bit traversed along the negative Z-axis, which is one of the reasons for the high temperature of the simulated lunar soil particles at the front of the drill tool.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Water Content (wt) | Effective Thermal Conductivity (W/m·K) | Specific Heat Capacity (J/kg·°C) | Shear Modulus (MPa) |
---|---|---|---|
5% | 50.00 | 228.95 | 40.00 |
10% | 66.18 | 406.70 | 40.00 |
Mineral Class @Proportion of | Particle Size Range | Proportion of |
---|---|---|
Anorthosite(A) @(70%) | 0.025–0.05 mm | 31.568% |
0.05–0.075 mm | 6.797% | |
0.075–0.1 mm | 10.545% | |
0.25–0.5 mm | 10.545% | |
0.5–1 mm | 10.545% | |
Basalt(B) @(30%) | 0.025–0.05 mm | 13.502% |
0.05–0.075 mm | 2.920% | |
0.075–0.1 mm | 4.526% | |
0.25–0.5 mm | 4.526% | |
0.5–1 mm | 4.526% |
Type | Parameter | ||
---|---|---|---|
Particle size range | 0–1 mm | ||
Sample temperature | 93 K | ||
Basic mineral | Pure dry soil sample and mixed water sample | ||
Moisture content | 5wt% | 10wt% | |
Density (g/cm3) | 1.9 | 1.75 | |
Measurement result | Effective thermal conductivity(W/(m·K)) | 0.8611 | 1.1397 |
Specific heat capacity (J/(kg·°C)) | 228.95 | 270.6 |
No. | Water Content (wt%) | Rotational Speed (rpm) | Feed Rate (mm/min) | Drilling Duration (s) |
---|---|---|---|---|
A1 | 5% | 120 | 0.62 | 120 |
A2 | 5% | 250 | 12.66 | 220 |
A3 | 10% | 250 | 5.70 | 190 |
Parameters of the Particle System | Parameter |
---|---|
Effective thermal conductivity of particles (W/m·K) | 50.00 (A1), 50.00 (A1), 66.18 (A1) |
specific heat capacity of a particle (J/kg·°C) | 228.95 (A1), 228.95 (A2), 406.70 (A3) |
Particle radius (mm) | 0.8 mm, 1.6 mm, and 2.4 mm |
Particle density (kg/m3) | 3 × 103 |
Shear modulus of particles (Pa) | 4 × 107 |
Poisson’s ratio of particles | 0.25 |
Thermal conductivity of geometry (W/m·K) | 44.19 |
Specific heat of geometry (J/kg·°C) | 544.00 |
Geometric density (kg/m3) | 7.85 × 103 |
Shear modulus of geometry (Pa) | 8 × 1010 |
Poisson’s ratio of geometry | 0.25 |
Particle-particle friction coefficient | 0.50 |
Particle-geometry friction coefficient | 0.48 |
Coefficient of restitution | 0.50 |
Inner diameter of drill pipe (mm) | 12.00 |
External diameter of drill pipe (mm) | 17.00 |
Thickness of drill pipe (mm) | 2.50 |
Cross-sectional area of drill pipe (mm2) | 113.83 |
Rotational speed of drill (rpm) | 120.00 (A1), 250.00 (A2), 250.00 (A3) |
Feed rate of the drill (m/s) | 1.03 × 10−5 (A1), 2.10 × 10–4 (A2), 9.50 × 10–5 (A3) |
Initial temperature (°C) | –139.60 (A1), –149.70 (A2), –97.20 (A3) |
No. | A1 | A2 | A3 |
---|---|---|---|
Temperature increase in experiments (°C) | 36.60 | 58.80 | 59.11 |
Temperature increase in simulation (°C) | 39.04 | 52.77 | 60.94 |
Relative error of temperature rise | 6.67% | 10.26% | 3.10% |
Maximum error of experimental and simulation (°C) | 2.63 | 13.32 | 5.43 |
Curve-fitting degree | 0.99 | 0.90 | 0.92 |
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Cui, J.; Kui, L.; Zhang, W.; Zhao, D.; Chang, J. Simulation of Drilling Temperature Rise in Frozen Soil of Lunar Polar Region Based on Discrete Element Theory. Aerospace 2023, 10, 368. https://doi.org/10.3390/aerospace10040368
Cui J, Kui L, Zhang W, Zhao D, Chang J. Simulation of Drilling Temperature Rise in Frozen Soil of Lunar Polar Region Based on Discrete Element Theory. Aerospace. 2023; 10(4):368. https://doi.org/10.3390/aerospace10040368
Chicago/Turabian StyleCui, Jinsheng, Le Kui, Weiwei Zhang, Deming Zhao, and Jiaqing Chang. 2023. "Simulation of Drilling Temperature Rise in Frozen Soil of Lunar Polar Region Based on Discrete Element Theory" Aerospace 10, no. 4: 368. https://doi.org/10.3390/aerospace10040368
APA StyleCui, J., Kui, L., Zhang, W., Zhao, D., & Chang, J. (2023). Simulation of Drilling Temperature Rise in Frozen Soil of Lunar Polar Region Based on Discrete Element Theory. Aerospace, 10(4), 368. https://doi.org/10.3390/aerospace10040368