Drift Potential Characteristics of a Flat Fan Nozzle: A Numerical and Experimental Study
Abstract
:1. Introduction
2. Model Construction and Numerical Simulation
2.1. Geometric Model Establishment and Mesh Generation
2.2. Numerical Calculation Model
2.2.1. Continuous Phase-Model Selection
2.2.2. Discrete-Phase Model Selection
2.2.3. Test Parameter Setting
- (1)
- Discrete-phase-injection source parameters: The discrete-phase material was water, and the discrete-phase-release position coordinates were (x, y, z) = (0, 0.6, 0). The axial vector component of the nozzle was (x, y, z) = (0, −1, 0). The droplet mass flow rate was 0.02 kg/s, the half angle of spraying was 60°, and the spray diffusion angle was 6°. Unsteady particle tracking was enabled, the discrete random walk model was adopted, and the particle release time scale constant was 0.01 s.
- (2)
- Boundary conditions: For the fluid boundary condition, x = −2.5, the plane of the box body area was the velocity inlet boundary, the velocities were 0 m/s, 1 m/s, 2 m/s, 3 m/s, 4 m/s, 5 m/s, and 6 m/s, respectively. The free outflow boundary plane corresponded to x = 17.5, and the other surfaces were the wall boundaries. For the DPM boundary condition type of discrete-phase, the fluid entered from the inlet and escaped from the outlet, the wall film was formed on the ground, and the rest of the boundary fluid mass was rebound. The material in the computational domain was set to ideal air.
- (3)
- Solution method and simulation parameters: The pressure velocity coupling mode was simple, the transient formula was second-order implicit, and the iterative time step was 0.01 s. When studying the influence of wind speed on droplet size, the simulated spraying time was 0.005 s. After spraying, the total particle-size distribution in the statistical flow field was delayed by 0.01 s, allowing for the full collision or polymerization of discrete particles in the air to occur. Simultaneously, the average flight length of discrete particles from the nozzle to the conventional droplet statistical position was 0.35 m. When studying the drift characteristics of droplet deposition, the simulated spray duration was 5 s.
2.3. Numerical Results
2.3.1. Computational Method
2.3.2. Simulated Droplet Parameters
3. Wind Tunnel Test
3.1. Test Materials and Equipment
3.2. Wind Tunnel Test Design
4. Results and Discussion
4.1. Droplet Parameters of Wind Tunnel Test
4.2. Comparison and Analysis of Data and Results
5. Conclusions
- (1)
- The droplet spectrum parameters and droplet drift results correlated with the test and can be obtained through measurement and analysis of the actual spraying process and the establishment of an appropriate spraying model. The statistical results of the data from the simulation of all droplet particle sizes for a short duration compared to the droplet particle sizes on a line tested by a particle-sizer laser beam were poor. However, the numerical simulation accurately predicted droplet drift.
- (2)
- Under different spray conditions, the characteristic height of the droplet drift h, the drift distance, the accurate deposition rate Ra, and the horizontal drift rate Rh were directly affected by the lateral wind speed. For the simulation results, the accurate deposition rate of Ra at wind speeds of 1 m/s and 6 m/s were 10.04% and 0.66%, respectively. The horizontal drift rate Rh at wind speeds of 1 m/s and 6 m/s were 21.28% and 60.58%, respectively. According to the test results, the characteristic height h at wind speeds of 1 m/s and 6 m/s were 0.175 m and 0.245 m, respectively. The horizontal drift rate at wind speeds of 1 and 6 m/s was 0.4% and 75.1%, respectively. For different wind speeds, the correlation between the results of the numerical simulation and wind tunnel test for drift and drift data was more than 0.9.
- (3)
- Compared with wind tunnel tests, hydrodynamic modeling and analysis can greatly save computation and experimentation resources by ensuring the correlation of results. Meanwhile, its results can be accurately visualized, and the test result data can be easily analyzed through statistics, reducing post-processing time.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Horizontal Wind Speed/m/s | 0 | 1 | 2 | 3 | 4 | 5 | 6 |
---|---|---|---|---|---|---|---|
Dv0.1/μm | 100.00 | 105.78 | 126.11 | 125.97 | 121.46 | 127.34 | 119.01 |
Dv0.5/μm | 218.49 | 229.05 | 225.51 | 227.10 | 235.25 | 238.84 | 241.78 |
Dv0.9/μm | 351.38 | 339.51 | 349.15 | 333.13 | 358.99 | 347.56 | 346.98 |
V100/% | 10.21% | 5.70% | 3.96% | 4.04% | 4.30% | 4.68% | 5.36% |
Droplet Spectrum Width | 1.15 | 1.02 | 0.92 | 0.91 | 1.01 | 0.92 | 1.01 |
Nozzle Type/Spray Pressure/(No. MPa) | Wind Speed (m/s) | |||||||
---|---|---|---|---|---|---|---|---|
0 | 1 | 2 | 3 | 4 | 5 | 6 | ||
Lu120-015, 0.3 | Dv0.1/μm | 84.24 | 82.47 | 79.35 | 72.77 | 72.71 | 71.69 | 69.26 |
Dv0.5/μm | 174.74 | 176.68 | 177.67 | 179.31 | 187.53 | 191.22 | 195.32 | |
Dv0.9/μm | 264.55 | 276.32 | 281.54 | 289.48 | 298.35 | 309.74 | 318.81 | |
V100/% | 11.84 | 12.17 | 13.76 | 14.73 | 14.63 | 14.27 | 14.01 | |
Droplet spectrum width | 1.03 | 1.10 | 1.14 | 1.21 | 1.20 | 1.24 | 1.28 | |
Lu120-015, 0.4 | Dv0.1/μm | 81.98 | 76.80 | 73.49 | 71.97 | 70.25 | 69.34 | 66.60 |
Dv0.5/μm | 171.02 | 172.14 | 175.64 | 178.86 | 182.71 | 186.34 | 190.52 | |
Dv0.9/μm | 261.29 | 269.51 | 276.36 | 279.76 | 287.91 | 295.78 | 304.32 | |
V100/% | 13.86 | 14.82 | 15.64 | 15.98 | 17.32 | 18.19 | 18.32 | |
Droplet spectrum width | 1.05 | 1.12 | 1.16 | 1.16 | 1.19 | 1.22 | 1.25 | |
Lu120-03, 0.3 | Dv0.1/μm | 96.62 | 91.75 | 89.37 | 87.91 | 85.46 | 83.17 | 82.78 |
Dv0.5/μm | 216.58 | 217.82 | 221.95 | 225.24 | 230.16 | 234.31 | 237.34 | |
Dv0.9/μm | 340.53 | 371.55 | 386.36 | 404.53 | 418.26 | 431.53 | 440.86 | |
V100/% | 11.84 | 12.17 | 13.76 | 14.73 | 15.63 | 16.27 | 16.01 | |
Droplet spectrum width | 1.13 | 1.28 | 1.34 | 1.41 | 1.45 | 1.49 | 1.51 |
Wind Speed/m/s | Nozzle Model/Spray Pressure/(No./MPa) | ||
---|---|---|---|
Lu 120-015, 0.3 | Lu 120-015, 0.4 | Lu 120-120, 0.3 | |
1 | 3.12 | 11 | 3.88 |
3 | 15.74 | 16.45 | 16.24 |
6 | 18.63 | 17.87 | 20 |
Wind Speed/m/s | 1 | 3 | 6 | |||
---|---|---|---|---|---|---|
Distance/m | Numerical Simulation | Test Value | Numerical Simulation | Test Value | Numerical Simulation | Test Value |
3 | 0.006403 | 0.00064 | 0.009923 | 0.062848 | 0.013863 | 0.0672 |
4 | 0.004032 | 0.000293 | 0.006228 | 0.039051 | 0.008777 | 0.055733 |
5 | 0.002681 | 0.000213 | 0.004843 | 0.032853 | 0.006894 | 0.038293 |
6 | 0.001431 | 0.00016 | 0.003942 | 0.02528 | 0.005624 | 0.03032 |
7 | 0.000147 | 0.000267 | 0.003108 | 0.02224 | 0.004611 | 0.026267 |
8 | 1.79 × 105 | 0.000107 | 0.001981 | 0.01744 | 0.003935 | 0.02424 |
9 | 1.76 × 105 | 0.00008 | 0.000511 | 0.010347 | 0.003367 | 0.024613 |
10 | 3.01 × 106 | 2.67 × 105 | 0.000149 | 0.008811 | 0.00282 | 0.0248 |
11 | 1.6 × 108 | 0.000107 | 0.000124 | 0.007061 | 0.00233 | 0.021333 |
12 | 1.78 × 106 | 5.33 × 105 | 9.97 × 105 | 0.004597 | 0.001436 | 0.019733 |
13 | 2.54 × 106 | 2.67 × 105 | 6.32 × 105 | 0.004155 | 0.000798 | 0.017867 |
14 | 3.74 × 108 | 2.67 × 105 | 6.34 × 105 | 0.003291 | 0.000309 | 0.013867 |
15 | 1.03 × 106 | 0 | 4.3 × 105 | 0.002347 | 0.000161 | 0.0112 |
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Wang, J.; Liang, Q.; Zeng, T.; Zhang, X.; Fu, W.; Lan, Y. Drift Potential Characteristics of a Flat Fan Nozzle: A Numerical and Experimental Study. Appl. Sci. 2022, 12, 6092. https://doi.org/10.3390/app12126092
Wang J, Liang Q, Zeng T, Zhang X, Fu W, Lan Y. Drift Potential Characteristics of a Flat Fan Nozzle: A Numerical and Experimental Study. Applied Sciences. 2022; 12(12):6092. https://doi.org/10.3390/app12126092
Chicago/Turabian StyleWang, Juan, Qifu Liang, Tiwei Zeng, Xirui Zhang, Wei Fu, and Yubin Lan. 2022. "Drift Potential Characteristics of a Flat Fan Nozzle: A Numerical and Experimental Study" Applied Sciences 12, no. 12: 6092. https://doi.org/10.3390/app12126092
APA StyleWang, J., Liang, Q., Zeng, T., Zhang, X., Fu, W., & Lan, Y. (2022). Drift Potential Characteristics of a Flat Fan Nozzle: A Numerical and Experimental Study. Applied Sciences, 12(12), 6092. https://doi.org/10.3390/app12126092