Characterization of Terrain-Induced Turbulence by Large-Eddy Simulation for Air Safety Considerations in Airport Siting
Abstract
:1. Introduction
2. Study Area-Leknes, Lofoten Islands
3. Materials and Methods
3.1. Simulation Setup
3.1.1. Simulation Model-PALM
3.1.2. Simulation Suite and Parameters
3.1.3. Topography Data
3.1.4. Domain and Boundary Conditions
3.1.5. Sensitivity Analysis
3.2. Methodology
4. Results
4.1. Atmospheric Stratification
4.2. Turbulence Characteristics as Function of Wind Speed and Direction
4.2.1. Horizontal Cross-Sections
4.2.2. Vertical Cross Sections
4.3. Aviation Safety Risk Analysis on the Glide Slope
- Southwesterly group (S20, SSW20, SW20, WSW20): The overall resolved TKE condition of this group is moderate, with a high turbulence probability of 3.6%. For the direction of RWY03, main peaks are observed in the lee of Skottind. For RWY21, only one high-risk area is found in SSW20.
- Northwesterly group (W20, WNW20, NW20, NNW20): This group reports considerably more turbulence hot spots than the others, with a high turbulence probability of 14.1%. According to the profiles, there are two common hot spots along the RWY03 slope, and another two along the RWY21 slope. If we assume an aircraft is approaching along the RWY03 slope, it will first encounter intensive turbulence at approximately 750 m altitudes. This hot spot is located at the lee of the mountains on Flakstadøya. The mountains there run north to south, maximizing the blockage effect on northwesterly winds, and, as a result, generating high turbulence levels. The aircraft will cross high turbulence again at about 400 m in altitude. As discussed in Section 4.2, this hot spot is related to the mountains to the south of LKN.
- Northeasterly group (N20, NNE20, NE20, ENE20): The high turbulence risk of this group is, 3.6%, again, moderate. Unlike the other groups, whose extreme values distribute relatively evenly, most of the extremes in this group are found in the major peak of ENE20. This peak stands out at about 20 km distance from RWY21, located above two lakes (Urvatnet and Steirapollen), situated between the mountains Helfjellet and Haveren. As discussed in Section 4.2.1, the wind field here turns northeasterly, maximizing the interference with Haveren. As a result, high turbulence levels are induced in the downwind region. The mechanism and wind setting of NE20 is quite similar, but the statistics yield results with huge contrast. By investigating the turbulence distribution for the whole domain, one can observe that the total amount of resolved TKE between NE20 and ENE20 is rather similar. However, due to the slight shift in wind direction, the turbulence hot spot induced by Haveren, moves slightly southeastwards to the lake Alstadpollen, making it undetectable in the cross-section along the LKN runway.
- Southeasterly group (E20, ESE20, SE20, SSE20): This group is least overall least exposed to turbulence risks among the four groups, with a high turbulence probability of 2.1%. There are no shared peak locations among the group members, instead, various extreme values (with relatively low magnitude) spread in the region 10–20 km away from RWY21, i.e., the northeastern part of the main valley on the Vestvågøya island. The potential reason this group experiences the least turbulence risk is the fact that the topography on the southeastern side of Vestvågøya is lower and gentler than its northwestern counterpart, but spread more continuously. Therefore, as the easterly winds in this group interfere with the mountains, turbulent eddies are induced in a larger area but with overall lower TKE intensity.
5. Conclusions and Outlook
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Figures of Full-Set Simulation Results
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Name | Value |
---|---|
Grid resolution (dx, dy, dz) | 50 m |
Grid points | |
Simulated time | 12 h |
Number of timesteps | 25,341 |
CPU cores | 400 |
RAM allocated | 32,768 MB |
Initial surface sensible heat flux | |
Zonal boundary condition | cyclic |
Meridional boundary condition | cyclic |
Vertical boundary condition | no-slip |
Grid Resolution | Avg. Simulation Time | Avg. Memory Usage | Avg. Disk Write |
---|---|---|---|
25 m | 20:21:56 | 493 GB | 59 GB |
50 m | 01:15:36 | 141 GB | 7 GB |
100 m | 00:17:22 | 111 GB | 0.05 GB |
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Wang, S.; De Roo, F.; Thobois, L.; Reuder, J. Characterization of Terrain-Induced Turbulence by Large-Eddy Simulation for Air Safety Considerations in Airport Siting. Atmosphere 2022, 13, 952. https://doi.org/10.3390/atmos13060952
Wang S, De Roo F, Thobois L, Reuder J. Characterization of Terrain-Induced Turbulence by Large-Eddy Simulation for Air Safety Considerations in Airport Siting. Atmosphere. 2022; 13(6):952. https://doi.org/10.3390/atmos13060952
Chicago/Turabian StyleWang, Sai, Frederik De Roo, Ludovic Thobois, and Joachim Reuder. 2022. "Characterization of Terrain-Induced Turbulence by Large-Eddy Simulation for Air Safety Considerations in Airport Siting" Atmosphere 13, no. 6: 952. https://doi.org/10.3390/atmos13060952
APA StyleWang, S., De Roo, F., Thobois, L., & Reuder, J. (2022). Characterization of Terrain-Induced Turbulence by Large-Eddy Simulation for Air Safety Considerations in Airport Siting. Atmosphere, 13(6), 952. https://doi.org/10.3390/atmos13060952