Title :
Comparison of Mixed-Integer Linear Models for Fuel-Optimal Air Conflict Resolution With Recovery
Author_Institution :
Ecole Polytech. de Montreal, Montreal, QC, Canada
Abstract :
Any significant increase in current levels of air traffic will need the support of efficient decision-aid tools. One of the tasks of air traffic management is to modify trajectories when necessary to maintain a sufficient separation between pairs of aircraft. Several algorithms have been developed to solve this problem, but the diversity in the underlying assumptions makes it difficult to compare their performance. In this paper, separation is maintained through changes of heading and velocity while minimizing a combination of fuel consumption and delay. For realistic trajectories, the speed is continuous with respect to time, the acceleration and turning rate are bounded, and the planned trajectories are recovered after the maneuvers. After describing the major modifications to existing models that are necessary to satisfy this definition of the problem, we compare three mixed-integer linear programs. The first model is based on a discretization of the airspace and the second relies on a discretization of the time horizon. The third model implements a time decomposition of the problem; it allows only one initial maneuver and is periodically solved with a receding horizon to build a complete trajectory. The computational tests are conducted on a benchmark of artificial instances specifically built to include complex situations. Our analysis of the results highlights the strengths and limits of each model. The time decomposition proves to be an excellent compromise.
Keywords :
acceleration control; air traffic control; delays; integer programming; linear programming; minimisation; motion control; optimal control; trajectory control; velocity control; air traffic management; aircraft acceleration; aircraft speed; aircraft turning rate; airspace discretization; decision-aid tool; delay; fuel consumption; fuel-optimal air conflict resolution; minimization; mixed-integer linear model; receding horizon; time decomposition; time horizon discretization; trajectory recovery; Air safety; Air traffic control; Mixed integer linear programming; Air traffic control; conflict resolution; mixed-integer linear programming;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2015.2434942