Temperature Experiment and Parameter Optimization of Cemented Carbide Tool in Milling 508III Steel
Abstract
:1. Introduction
2. Temperature Experiment and FE Analysis of Milling 508III Steel
2.1. Temperature Experimental Protocol and Measurement Method Design
2.2. Temperature Signal Test of Milling 508III Steel
2.3. Simulation Analysis of the Temperature
3. Results and Discussion
3.1. Simulated and Experimental Results
3.2. Influence of Cutting Parameters Interaction on Milling Temperature
3.3. Construction of Mathematical Model for Temperature Prediction
3.4. Significance Test of Temperature Model
3.5. Mathematical Model of Cutting Efficiency
4. Temperature Prediction Based on SVM
4.1. GA-Optimized SVM Model
4.2. Temperature Prediction Based on GA-SVM
5. Cutting Parameter Optimization Based on NSGA-II Algorithm
5.1. NSGA-II Algorithm
5.2. Construction of Optimization Objective Function and Constraint Conditions
- (1)
- Cutting speed constraints:
- (2)
- Constraints of feed rate per tooth:
- (3)
- Constraints on axial cutting depth:
5.3. Parameter Optimization Results and Discussion
6. Conclusions
- (1)
- Based on the Box-Behnken experimental design criteria in RSM, a series of milling temperature experiments and FE simulations were carried out. The temperature was measured by using the semi-artificial thermocouple fitting equation of 508III steel-NiCr effectively.
- (2)
- Based on the FE simulation results, it was found that the area near the main cutting edge of the rake face produced a lot of friction heat in contact with the chip due to high pressure and serious friction, resulting in a higher temperature. By comparing the temperature experiment with the FE results, it was found that the absolute value of the relative error was within 5%. Results showed that the simulation results were accurate and effective, which verified the reliability of the FE analysis method and provided data support for the validation of parameter optimization effectiveness.
- (3)
- On an experimental basis, the influence of the interaction of cutting parameters on the temperature was analyzed based on RSM. It was found that the temperature increased significantly with the increase in cutting speed and feed rate per tooth, and the temperature changed less with the increase in axial cutting depth, accompanied by a decreasing trend. Based on RSM, a second-order polynomial prediction model for temperature was constructed. The variance and F-test results showed that the temperature regression model constructed had high significance at a 95% confidence level and good effectiveness and reliability.
- (4)
- The SVM method was used for temperature prediction, and the GA-SVM model was established to predict cutting temperature. It was found that the prediction error range was −3.37~5.48%, indicating that the method had certain effectiveness and reliability.
- (5)
- Taking cutting temperature and efficiency as evaluation indicators, the NSGA-II algorithm was used to optimize cutting parameters. The Pareto optimal frontier and 30 groups of Pareto optimal solutions were obtained, and Decision makers can reasonably select processing parameters based on actual processing needs, effectively improving decision-making efficiency.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Temperature (°C) | Quadratic Fitting Voltage Value (mV) | Cubic Fitting Voltage Value (mV) | Quartic Fitting Voltage Value (mV) | Standard Voltage Value (mV) | Quadratic Fitting Relative Error (%) | Cubic Fitting Relative Error (%) | Quartic Fitting Relative Error (%) |
---|---|---|---|---|---|---|---|
100 | 3.9193 | 4.0363 | 4.0382 | 4.0950 | −4.2906 | −1.4543 | −1.3871 |
200 | 8.2088 | 8.0912 | 8.0997 | 8.1370 | 0.8824 | −0.5661 | −0.4584 |
300 | 12.4579 | 12.2336 | 12.2406 | 12.2070 | 2.0554 | 0.2174 | 0.2753 |
400 | 16.6666 | 16.4348 | 16.4369 | 16.3950 | 1.6566 | 0.2422 | 0.2556 |
500 | 20.8350 | 20.6667 | 20.6637 | 20.6400 | 0.9448 | 0.1292 | 0.1148 |
600 | 24.9630 | 24.9008 | 24.8947 | 24.9020 | 0.2450 | −0.0048 | −0.0293 |
700 | 29.0507 | 29.1087 | 29.1027 | 29.1280 | −0.2654 | −0.0663 | −0.0869 |
800 | 33.098 | 33.2621 | 33.2594 | 33.2770 | −0.5379 | −0.0448 | −0.0529 |
900 | 37.1049 | 37.3327 | 37.3354 | 37.3250 | −0.5897 | 0.0206 | 0.0279 |
1000 | 41.0715 | 41.292 | 41.2998 | 41.2690 | −0.4786 | 0.0557 | 0.0746 |
1100 | 44.9977 | 45.1116 | 45.1212 | 45.1080 | −0.2445 | 0.0080 | 0.0293 |
1200 | 48.8836 | 48.7633 | 48.7666 | 48.8280 | 0.1139 | −0.1327 | −0.1258 |
1300 | 52.7291 | 52.2186 | 52.2021 | 52.3930 | 0.6415 | −0.3340 | −0.3644 |
Name | Cemented Carbide | 508III Steel |
---|---|---|
Elastic modulus (GPa) | 600 | 212 |
Density (g/cm3) | 14.5 | 7.9 |
Thermal conductivity (W/(m·K)) | 62.8 | 14.5 |
Specific heat capacity (kg·K) | 460 | 460 |
Poisson’s ratio | 0.33 | 0.3 |
Parameters | Value |
---|---|
A | 1766 |
B | 904 |
C | 0.001 |
n | 0.144 |
m | 0.72 |
1 | |
Troom (°C) | 20 |
Tmelt (°C) | 1650 |
Exp. No. | Cutting Speed vc (m/min) | Feed Per Tooth fz (mm/z) | Axial Depth of Cut ap (mm) | Milling Temperature (°C) | ||
---|---|---|---|---|---|---|
Experimental Results | Simulated Results | Relative Error | ||||
1 | 298 | 0.06 | 2 | 656 | 661 | −0.76% |
2 | 370 | 0.06 | 1 | 723 | 728 | −0.69% |
3 | 298 | 0.08 | 2.5 | 677 | 693 | −2.31% |
4 | 298 | 0.04 | 2.5 | 620 | 610 | 1.64% |
5 | 370 | 0.06 | 2.5 | 697 | 706 | −1.27% |
6 | 298 | 0.08 | 1 | 693 | 678 | 2.21% |
7 | 188 | 0.08 | 2 | 593 | 578 | 2.66% |
8 | 298 | 0.06 | 1 | 668 | 686 | −2.62% |
9 | 188 | 0.04 | 1 | 553 | 542 | 2.03% |
10 | 188 | 0.06 | 2 | 574 | 579 | −0.86% |
11 | 298 | 0.06 | 2.5 | 641 | 658 | −2.58% |
12 | 370 | 0.04 | 2.5 | 672 | 692 | −2.89% |
13 | 298 | 0.04 | 2 | 611 | 620 | −1.45% |
14 | 298 | 0.08 | 2 | 681 | 659 | 3.34% |
15 | 188 | 0.08 | 2.5 | 594 | 593 | 0.17% |
16 | 298 | 0.04 | 1 | 634 | 651 | −2.61% |
17 | 370 | 0.08 | 2 | 734 | 737 | −0.41% |
Variance Analysis | DF | SS | MS | F |
---|---|---|---|---|
Regression | 9 | 43,038.49 | 4782.05 | 154.2 |
Residual | 7 | 217.04 | 31.01 | - |
Total | 16 | 43,255.53 | - | - |
Number | T (°C) | ||||
---|---|---|---|---|---|
A1 | 188.08541 | 0.0406 | 2.48802 | 540.29024 | −9070.72647 |
A2 | 191.21765 | 0.0583 | 2.48442 | 569.94189 | −13,223.27547 |
A3 | 251.56217 | 0.07634 | 2.46614 | 635.65477 | −22,611.9388 |
A4 | 203.50428 | 0.07651 | 2.48388 | 601.58856 | −18,465.67747 |
A5 | 201.09502 | 0.06932 | 2.48247 | 591.35964 | −16,522.64736 |
A6 | 295.59058 | 0.07904 | 2.48303 | 671.34076 | −27,698.27075 |
A7 | 268.83171 | 0.07841 | 2.48765 | 650.66639 | −25,037.65621 |
A8 | 191.76944 | 0.05446 | 2.48339 | 564.76379 | −12,383.03666 |
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Cheng, Y.; Gai, X.; Guan, R.; Jin, Y.; Lu, M. Temperature Experiment and Parameter Optimization of Cemented Carbide Tool in Milling 508III Steel. Materials 2023, 16, 2833. https://doi.org/10.3390/ma16072833
Cheng Y, Gai X, Guan R, Jin Y, Lu M. Temperature Experiment and Parameter Optimization of Cemented Carbide Tool in Milling 508III Steel. Materials. 2023; 16(7):2833. https://doi.org/10.3390/ma16072833
Chicago/Turabian StyleCheng, Yaonan, Xiaoyu Gai, Rui Guan, Yingbo Jin, and Mengda Lu. 2023. "Temperature Experiment and Parameter Optimization of Cemented Carbide Tool in Milling 508III Steel" Materials 16, no. 7: 2833. https://doi.org/10.3390/ma16072833
APA StyleCheng, Y., Gai, X., Guan, R., Jin, Y., & Lu, M. (2023). Temperature Experiment and Parameter Optimization of Cemented Carbide Tool in Milling 508III Steel. Materials, 16(7), 2833. https://doi.org/10.3390/ma16072833