Design of and Experiments with an Automatic Cuttage Device for an Arch Shed Pillar with Force Feedback
Abstract
:1. Introduction
- (1)
- The cuttage span of the arch shed pillar should be 60 cm with less than 1 cm of error;
- (2)
- The height of the arch shed pillar after cuttage should be 40 cm with less than 1 cm of error;
- (3)
- The diameter of the arch shed pillar that can be cut should be 1 cm;
- (4)
- The cuttage depth should be equal at the ends of the arch shed pillar;
- (5)
- The damage rate of the arch shed pillar should remain below 5%;
- (6)
- The cuttage device should operate smoothly, have optimal stability, and have a long service life.
- (1)
- Suitable pillar cuttage depth;
- (2)
- A quick and convenient method for determining the ideal cuttage depth at both ends of the pillar;
- (3)
- Ensuring that the damage rate of the pillar is controlled below 5%;
- (4)
- Ensuring the optimal operation and stability of the device.
2. Pillar Cuttage Depth and Wind Resistance Analysis of the Arch Shed
3. Real-Time Detection Principle of Cuttage Depth Based on “Current–Force–Depth”
4. Simulation Analysis of Cuttage Device
4.1. Simulation Analysis of the Motion Trajectory of the Execution End
- (1)
- When , the execution end moves along the AB segment, and the kinematic parameters of the execution end are:
- (2)
- When the execution end moves within the segment along the Láme curve, the kinematic parameters of the execution end are solved according to the arc differentiation method, as shown in Figure 8:
- (3)
- When the execution end moves within the CD segment, the motion parameters of the execution end at time are:
- (4)
- The left and right sides of the motion trajectory of the execution end are symmetrical and the physical parameters of the second half of the motion are determined as described above.
4.2. Modal Analysis of the Installation Frame
5. Experimental Results and Analysis
5.1. Construction of Entity System
5.2. Verification Experiment of the Cuttage Depth
5.2.1. Verification Experiment of “Current Depth” Real-Time Feedback
5.2.2. Determination Experiment of the Cuttage Speed
5.2.3. Error Calibration of the Cuttage Depth
5.3. Experiment of Trajectory Planning
- (1)
- According to the transportation and distance lifting of the pillar, the trajectory of the execution end was planned to obtain the theoretical data, and the theoretical curve was generated using MATLAB;
- (2)
- The motion trajectory of the execution end was tracked and measured, the experiment was repeated five times, and the collected data was used to generate the actual trajectory route;
- (3)
- The coincidence degree between the theoretical calculated trajectory and the actual trajectory was compared, as shown in Figure 18.
5.4. Modal Experiment Analysis
6. Conclusions
- (1)
- The wind resistance of a small arch shed was analyzed. The simulation analysis by ANSYS software showed that the wind resistance was better when the cutting depth was 10 cm.
- (2)
- Three-dimensional modeling of the cuttage device was carried out through SOLIDWORKS software, the trajectory of the execution end was planned, and the relevant motion parameters were solved through MATLAB software simulation to avoid motion impact and make the motion trajectory smoother.
- (3)
- A modal analysis and experimental verification were carried out for the installation frame. The experiment showed that the resonance frequency was in the range of 303–565 Hz, and the device did not resonate during the operation.
- (4)
- A real-time feedback mechanism based on “current–force–depth” was built, which could feed back the current of the electric pusher motor in real-time. Based on this, the cutting depth was estimated in real time, allowing for the convenient building of an equal-depth pillar cuttage device. Even under the condition of the stress limit of the pillar, the automatic cutting device was able to realize “overload stop” without causing damage to the pillar, and realize the overload protection of the pillar. This could have a positive role in promoting the technical development and social application of automatic arch shed construction.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Soil Type | Moisture Content (%) | Soil Firmness at Different Depths (kPa) | ||||
---|---|---|---|---|---|---|
2.5 cm | 5 cm | 7.5 cm | 10 cm | 12.5 cm | ||
Sandy soil | 3.25 | 291.00 | 747.71 | 1604.43 | 1818.14 | 2141.29 |
Dry soil | 19.37 | 162.17 | 544.33 | 720.17 | 1141.50 | 1800.17 |
Wet soil | 37.84 | 159.20 | 427.40 | 606.20 | 622.80 | 725.00 |
Order | Frequency | Vibration Shape | Frequency of Error | ||
---|---|---|---|---|---|
Modal Finite Element Analysis (Hz) | Modal Test Analysis (Hz) | Modal Finite Element Analysis | Modal Test Analysis | ||
1 | 303.47 | 296.58 | bending | bending | 2.32% |
2 | 441.18 | 443.94 | bending | bending | −0.62% |
3 | 500.69 | 506.72 | bending + torsion | bending + torsion | −1.19% |
4 | 564.62 | 554.53 | bending + torsion | bending + torsion | 1.82% |
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Chen, K.; Liu, X.; Jin, S.; Li, L.; He, X.; Wang, T.; Mi, G.; Shi, Y.; Li, W. Design of and Experiments with an Automatic Cuttage Device for an Arch Shed Pillar with Force Feedback. Agriculture 2022, 12, 875. https://doi.org/10.3390/agriculture12060875
Chen K, Liu X, Jin S, Li L, He X, Wang T, Mi G, Shi Y, Li W. Design of and Experiments with an Automatic Cuttage Device for an Arch Shed Pillar with Force Feedback. Agriculture. 2022; 12(6):875. https://doi.org/10.3390/agriculture12060875
Chicago/Turabian StyleChen, Kezhou, Xing Liu, Shiteng Jin, Longfei Li, Xin He, Tao Wang, Guopeng Mi, Yinggang Shi, and Wei Li. 2022. "Design of and Experiments with an Automatic Cuttage Device for an Arch Shed Pillar with Force Feedback" Agriculture 12, no. 6: 875. https://doi.org/10.3390/agriculture12060875
APA StyleChen, K., Liu, X., Jin, S., Li, L., He, X., Wang, T., Mi, G., Shi, Y., & Li, W. (2022). Design of and Experiments with an Automatic Cuttage Device for an Arch Shed Pillar with Force Feedback. Agriculture, 12(6), 875. https://doi.org/10.3390/agriculture12060875