Particle Swarm Optimization with Required Time of Arrival Constraint for Aircraft Trajectory

SAE-PP-00255

02/03/2021

Authors Abstract
Content
Global warming has motivated the aeronautical industry to develop new technologies that will reduce polluting emissions. A direct way to achieve this goal is to reduce fuel consumption. Reference trajectory optimization contributes to this goal by guiding aircraft to zones where meteorological conditions are favorable to execute their required missions and thereby to reduce flight costs. In this paper, the reference trajectory was optimized in terms of geographical position, altitude, and speed, by taking into account a required time of its arrival constraint and weather conditions. The algorithm assumes that there is no traffic and that the aircraft can fly anywhere in the search space. The search space was modeled in the form of a unidirectional weighted graph, fuel burn was computed using a numerical model, and the weather forecast was taken into account. The methodology utilized in this paper to determine the most economical combinations of parameters that delivered the optimal trajectory was inspired by the particle swarm optimization algorithm. Results showed that the algorithm provided acceptable solutions under traffic management constraints. It was observed that the developed algorithm was able to save up to 9.1% (6800 kg) of fuel burn when there was no RTA constraint for flight trajectories and up to 1.8% (600 kg) of fuel against real, as-flown trajectories with an RTA constraint of +/- 30 seconds. Because of the nature of the Particle Swarm Optimization Algorithm, the local best trajectories are extracted and provided as a Trajectory Option Set which is similar in cost as the optimal trajectory.
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Citation
Anthony, L., "Particle Swarm Optimization with Required Time of Arrival Constraint for Aircraft Trajectory," SAE MobilityRxiv™ Preprint, submitted February 3, 2021, https://doi.org/10.47953/SAE-PP-00255.
Additional Details
Publisher
Published
Feb 3, 2021
Product Code
SAE-PP-00255
Content Type
Pre-Print Article
Language
English