A Study on the Effectiveness of SCD Seeding Fog Dissipation Mechanism Using LiDAR Sensor
Abstract
:1. Introduction
2. Artificial Fog Dissipation Technique
2.1. Fog Dissipation Technology with Cooling Material
2.2. Fog Dissipation Technology with Evaporation
2.3. Fog Dissipation Technology with Hygroscopic Droplets Seeding
3. Experiment
3.1. Experimental Apparatus
3.2. Experimental Procedure
3.3. Method of Data Analysis
4. Results and Discussion
4.1. Results of LiDAR Sensor Experiment
4.2. Results of Camera Experiment
4.3. Verification
5. Conclusions
- Based on the results of the distance measurement data of the LiDAR sensor, it was confirmed that the effect of increasing the weight of SCD seeding and improving visibility was proportional, although non-directly proportional. Due to the space limitations of the lab-scale chamber, it was determined that the energy conversion was limited. Therefore, further studies are needed to optimize the amount of suitable SCD for fog dissipation in different sized spaces.
- Using LiDAR sensor measurement results and camera images, the tendency of the fog dissipation method with natural and SCD seeding dissipation was analyzed. As a consequence, the similarities between the LiDAR sensor distance measurement and the camera result were validated. As a consequence, the effect of SCD seeding on improving visibility when compared to natural dissipation under cold fog conditions was proven based on LiDAR sensor distance data and camera images.
- It is considered that the results of this study are available as basic data for developing new fog dissipation technology.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Indoor | Outdoor | |
---|---|---|
Capacity (cooling) Capacity (heating) | 2000~15,000 kcal/h | |
2000~16,000 kcal/h | ||
Range of hydrothermograph | 10~50 °C | −20~60 °C |
30~90% RH | 5~90% RH | |
Range of air volume | 3~50 | 5.5~60 |
Wind speed | 0.5 m/s | |
Reproducibility | 2% | |
Accuracy | 2% | |
Air conditioner | 1 set | |
130 , 2.2 kW | ||
Heater: 40 kW | ||
Unit of refrigerator | 4 kW-1 set (Bitzer) | 5.5 kW-1 set (Bitzer) |
5.5 kW-2 set (Bitzer) Refrigerant: R-22 | 7.5 kW-2 set (Bitzer) Refrigerant: R-22 |
Detection Range (2D) | 200 mm~8000 mm |
Measure | 1 mm |
Distance accuracy | 1% |
FOV (Field of view, ) | 0 < < 120 |
Size (W D H) | 37.4 24.5 37.4 () |
Weight | 28 g |
Operating temperature | −10~50 °C |
Natural dissipation | 1972.85 | 2701 |
SCD (500 g) | 1969.75 | 2083 |
SCD (1000 g) | 1951.68 | 1426 |
SCD (1500 g) | 1973.65 | 1130 |
SCD (500 g) | 0.553 | |
SCD (1000 g) | 0.537 | |
SCD (1500 g) | 0.469 | |
Referenced paper [8] | 800 ft (244 m) | 0.660 |
1000 ft (305 m) | 0.431 | |
1200 ft (366 m) | 0.490 |
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Park, M.-G.; Kang, H.-S.; Kim, Y.-J. A Study on the Effectiveness of SCD Seeding Fog Dissipation Mechanism Using LiDAR Sensor. Fluids 2023, 8, 185. https://doi.org/10.3390/fluids8060185
Park M-G, Kang H-S, Kim Y-J. A Study on the Effectiveness of SCD Seeding Fog Dissipation Mechanism Using LiDAR Sensor. Fluids. 2023; 8(6):185. https://doi.org/10.3390/fluids8060185
Chicago/Turabian StylePark, Min-Gyun, Hyun-Su Kang, and Youn-Jea Kim. 2023. "A Study on the Effectiveness of SCD Seeding Fog Dissipation Mechanism Using LiDAR Sensor" Fluids 8, no. 6: 185. https://doi.org/10.3390/fluids8060185
APA StylePark, M. -G., Kang, H. -S., & Kim, Y. -J. (2023). A Study on the Effectiveness of SCD Seeding Fog Dissipation Mechanism Using LiDAR Sensor. Fluids, 8(6), 185. https://doi.org/10.3390/fluids8060185