Atmospheric Disturbance Modelling for a Piloted Flight Simulation Study of Airplane Safety Envelope over Complex Terrain
Abstract
:1. Introduction
2. Stochastic Method of Atmospheric Turbulence Modelling
- low-altitude , where
- between low and medium/high altitudes 1000 2000 , where turbulence quantities are determined by linearly interpolating between the values from the low altitude model at 1000 and the values from the high altitude model at 2000 [47].
3. Numerical Procedure
3.1. Governing Equations
3.2. Turbulence Closure
3.2.1. Deardorff Subgrid-Scale Model
3.2.2. Dynamic Subgrid-Scale Model
3.3. Discretization and Numerics
3.3.1. Numerical Grid
3.3.2. Numerical Scheme
3.3.3. Pressure Solver
3.4. Boundary Conditions
3.4.1. Topography and Surface Boundary Condition
- (i)
- grid cells in free atmosphere without adjacent solid surfaces,
- (ii)
- grid cells within orography,
- (iii)
- grid cells adjacent to solid surfaces, where a local surface layer is assumed.
3.4.2. Mesoscale Nesting and Synthetic Turbulence Generation
3.5. Grid Nesting and Computational Domain
4. Flight Simulation Test Campaign
4.1. Concept of Flight Simulation Test Environment
- (i)
- by importing PALM instantaneous data with high temporal resolution with local mesh refinements (hereafter called turbulence case PALM),
- (ii)
- by activating Dryden turbulence model plus temporally mean data from PALM simulations without local mesh refinements (hereafter called turbulence case Dryden).
4.2. Summary of Test Procedure
5. Results and Discussion
5.1. PALM Simulation Evaluation
5.1.1. Vertical Profiles
5.1.2. Temporal Evolution
5.2. Results of Flight Simulation Test
5.2.1. Spectral Analysis
5.2.2. Results of Pilot Questionnaire
- (i)
- the mean value of case PALM must lie outside the confidence interval of case Dryden;
- (ii)
- the mean value of case Dryden must lie outside the confidence of case PALM.
6. Conclusions and Outlook
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ABL | Atmospheric Boundary Layer |
AMSL | Above Mean Sea Level |
BEH | Passo del Bernina |
COV | Piz Corvatsch |
COSMO | Consortium for Small-scale Modeling |
CFD | Computational Fluid Dynamics |
CLS | Control Loading System |
COV | Piz Corvatsch |
DNS | Direct Numerical Simulation |
FEAST | Finite Element Aircraft Simulation of Turbulence |
FFT | Fast Fourier Transform |
GUI | Graphic User Interface |
IMIS | Intercantonal Measurement and Information System |
INIFOR | Initialization and Forcing |
LES | Large Eddy Simulations |
LiDAR | Light Detection And Ranging |
NetCDF | Network Common Data |
PALM | Parallelized Large-Eddy Simulation |
PPL | Private Pilot License |
QGIS | Quantum Geographic Information System |
RANS | Reynolds-averaged Navier–Stokes |
SOBERT | Rotor Blade Element Turbulence |
SLEVE | Smooth LEvel VErtical |
SMN | SwissMetNet |
SRTM | Shuttle Radar Topography Mission |
STSB | Swiss Transportation Safety Investigation Board |
SGS | Sub-grid scale |
TKE | Turbulence Kinetic Energy |
UTC | Coordinated Universal Time |
WSL | Swiss Federal Institute for Forest, Snow and Landscape Research |
ZAV | Centre for Aviation |
ZHAW | Zurich University of Applied Sciences |
Appendix A. Flight Simulation Test Campaign
Appendix A.1. Weight and Balance
MASS | ARM | ||||
---|---|---|---|---|---|
in | |||||
Empty Mass | 1500 | ||||
Position 1 | 80 | ||||
Position 2 | 50 | ||||
Position 3 | 50 | ||||
Position 4 | 50 | ||||
Fuel | 80 | ||||
Overall | M.A.C. |
Appendix A.2. Flight Test Card
Appendix A.3. Question Sheet
Appendix A.4. Pilot’s Experience
Pilot | Total No. of Hours | Hours under Similar Conditions | Technical Background |
---|---|---|---|
Pilot A | 95 | 10 | Aeronautical engineer |
Pilot B | 175 | 25 | Aeronautical engineer |
Pilot C | 55 | 5 | Aeronautical engineer |
Pilot D | 155 | 20 | Meteorologist |
Appendix A.5. Questionnaire Results
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Symbol | Value | Description |
---|---|---|
SGS model constant | ||
Heat capacity of dry air at constant pressure | ||
g | Gravitational acceleration | |
Reference pressure | ||
Specific gas constant for dry air | ||
Specific gas constant for water vapor | ||
Von Kármán constant | ||
Angular velocity of the Earth |
Spatial Domain | Number of Grid | Grid Resolution | Domain Origin in Coordinates System | Time Domain | |
---|---|---|---|---|---|
Parent domain | (774,572 E, 133,915 N) | E, N) | |||
Child domain 1 | (778,864 E, 140,087 N) | E, N) | UTC 06:00–UTC 12:00 | ||
Child domain 2 | (793,612 E, 141,947 N) | E, N) |
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Liu, X.; Abà, A.; Capone, P.; Manfriani, L.; Fu, Y. Atmospheric Disturbance Modelling for a Piloted Flight Simulation Study of Airplane Safety Envelope over Complex Terrain. Aerospace 2022, 9, 103. https://doi.org/10.3390/aerospace9020103
Liu X, Abà A, Capone P, Manfriani L, Fu Y. Atmospheric Disturbance Modelling for a Piloted Flight Simulation Study of Airplane Safety Envelope over Complex Terrain. Aerospace. 2022; 9(2):103. https://doi.org/10.3390/aerospace9020103
Chicago/Turabian StyleLiu, Xinying, Anna Abà, Pierluigi Capone, Leonardo Manfriani, and Yongling Fu. 2022. "Atmospheric Disturbance Modelling for a Piloted Flight Simulation Study of Airplane Safety Envelope over Complex Terrain" Aerospace 9, no. 2: 103. https://doi.org/10.3390/aerospace9020103
APA StyleLiu, X., Abà, A., Capone, P., Manfriani, L., & Fu, Y. (2022). Atmospheric Disturbance Modelling for a Piloted Flight Simulation Study of Airplane Safety Envelope over Complex Terrain. Aerospace, 9(2), 103. https://doi.org/10.3390/aerospace9020103