Robust Optimization Model of Airport Group Coordinated Timetable with Uncertain Flight Time
Abstract
:1. Introduction
2. Related Works
3. Methodology
3.1. Research Framework
- (1)
- Full flight information for each airport is available in advance.
- (2)
- Time-varying airport capacity is mainly determined by the safety interval between the aircraft on a runway as well as the number of runways available for aircraft to take off or land at different time slots, which is affected by some factors such as weather and traffic control.
- (3)
- Time-varying waypoint capacity is mainly determined by the horizontal and vertical separation between flight levels in a waypoint, as well as the number of flight levels, which is also affected by some factors such as weather and traffic control.
- (4)
- Upper and lower bounds of flight times between airports and shared waypoints could be obtained from big data.
3.2. Notation
3.3. Formulation
4. Solution Method
5. Case Study
5.1. Example Description
5.2. Results
5.3. Sensitivity Analysis
6. Conclusions
- (1)
- In the original flight planning data, the number of flights at each airport or waypoint for some of the time slots is greater than its capacity, making the current timetable unworkable. Once the current timetable has been optimized, it will satisfy some practical constraints, such as the capacity of each airport and waypoint at different time slots and the maximum delay time for each flight. Hence, this study can be used as a tool for authorities to yield valid arrival and departure times of flights at different airports in an airport group to improve operational efficiency.
- (2)
- When flight flow is greater than the airport or waypoint capacity, the reduced capacity of the airport or waypoint at different time slots increases the total delay time of all flights by requiring each flight to relax its maximum delay time limit to obtain a feasible timetable.
- (3)
- As the budget of uncertainty in flight time gradually increases, each flight with a wider feasible time window of flight time may lead to a reduction in the solution space for assigning all flights to their unique time slots to satisfy all relaxation variables, resulting in increased total flight delay times. Although a schedule with a larger budget of uncertainty in flight time leads to more flight delays, it is robust and easily applied in practice.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Sets: | |
---|---|
Set of airports | |
Set of time slots | |
Set of waypoints | |
Set of departure flights at airport ; | |
Set of arrival flights at airport ; | |
Set of departure flights at airport passing though waypoint ; | |
Set of arrival flights at airport passing though waypoint ; | |
Indices: | |
Time slot | |
Flight | |
Airport | |
Waypoint | |
Parameters: | |
Planned time slot of flight ; | |
Maximization deviation in time slot of flight ; | |
Capacity of airport at time slot ; | |
Capacity of airport during 15 min; | |
Capacity of airport during 30 min; | |
Capacity of airport during 60 min; | |
Capacity of waypoint at time slot ; | |
Capacity of waypoint during 15 min; | |
Capacity of waypoint during 30 min; | |
Capacity of waypoint during 60 min; | |
Flight time between airport and waypoint ; | |
Average flight time between airport and waypoint ; | |
Deviation of flight time between airport and waypoint ; | |
Random variable | |
Uncertainty set | |
Budget of uncertainty in flight time | |
Decision variables: | |
Whether the flight is assigned to time slot ; |
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Airport | Waypoint | ||||
---|---|---|---|---|---|
Name | Number of Arrival/Departure Flights | Name | Flight Times (slots) | Number of Arrival/Departure Flights | |
ZBAA | 799 (444/355) | 8 | P522 | 4 | 118 (95/23) |
P86 | 8 | 95 (31/64) | |||
VAGBI | 7 | 129 (29/100) | |||
DPX | 3 | 89 (65/24) | |||
ZBAD | 1033 (515/518) | 6 | P522 | 5 | 104 (65/39) |
P86 | 8 | 154 (60/94) | |||
VAGBI | 8 | 120 (53/67) | |||
DPX | 4 | 142 (109/33) | |||
ZBTJ | 455 (216/239) | 4 | P522 | 2 | 64 (54/10) |
P86 | 7 | 48 (13/35) | |||
VAGBI | 6 | 68 (14/54) | |||
DPX | 1 | 47 (37/10) | |||
ZBSJ | 244 (116/128) | 2 | P522 | 5 | 54 (45/9) |
P86 | 7 | 31 (10/21) | |||
VAGBI | 6 | 48 (7/41) | |||
DPX | 4 | 22 (16/6) |
Airport | Total Delay Time (slots) | Average Delay Time (slots) | Number of Flights Not Delayed | Number of Delayed Flights | ||
---|---|---|---|---|---|---|
More than 30 min | More than 60 min | More than 120 min | ||||
ZBAA | 192 | 0.24 | 668 | 0 | 0 | 0 |
ZBAD | 960 | 0.93 | 670 | 33 | 12 | 0 |
ZBTJ | 78 | 0.17 | 398 | 0 | 0 | 0 |
ZBSJ | 75 | 0.31 | 189 | 0 | 0 | 0 |
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Yan, J.; Hu, M. Robust Optimization Model of Airport Group Coordinated Timetable with Uncertain Flight Time. Aerospace 2024, 11, 457. https://doi.org/10.3390/aerospace11060457
Yan J, Hu M. Robust Optimization Model of Airport Group Coordinated Timetable with Uncertain Flight Time. Aerospace. 2024; 11(6):457. https://doi.org/10.3390/aerospace11060457
Chicago/Turabian StyleYan, Jianzhong, and Minghua Hu. 2024. "Robust Optimization Model of Airport Group Coordinated Timetable with Uncertain Flight Time" Aerospace 11, no. 6: 457. https://doi.org/10.3390/aerospace11060457
APA StyleYan, J., & Hu, M. (2024). Robust Optimization Model of Airport Group Coordinated Timetable with Uncertain Flight Time. Aerospace, 11(6), 457. https://doi.org/10.3390/aerospace11060457