Title of article :
Optimization of Flight Endurance for Turboprop Air Taxis Using Metaheuristic Algorithms
Author/Authors :
Fozouni Talouki ، I. Department of New Technologies and Aerospace Engineering - Shahid Beheshti University , Toloei ، A. Department of New Technologies and Aerospace Engineering - Shahid Beheshti University
From page :
1685
To page :
1698
Abstract :
This study aims to optimize the flight endurance of a 12-passenger turboprop air taxi using two metaheuristic optimization algorithms: Grey Wolf Optimization (GWO) and Ant Colony Optimization (ACO). Initially, the gradient descent method was employed to estimate the aircraft’s maximum weight. Subsequently, the aircraft’s performance characteristics were utilized as design variables and flight endurance was optimized under specific constraints without altering the physical structure of the aircraft. The optimization process was implemented, and the results were evaluated and compared in terms of performance and efficiency. This research demonstrated that the two mentioned algorithms, utilizing random and collective strategies, were able to enhance the aircraft’s efficiency. Additionally, the optimization of flight endurance for three real aircraft—Piper, Beechcraft, and Bombardier—was examined compared to their original endurance. In this context, the Ant Colony Optimization algorithm exhibited better performance than the Grey Wolf Optimization algorithm, which could have a positive impact on flight operations without refueling or the process of finding alternative airports.
Keywords :
Air Taxi , optimization , Gradient Descent , Grey wolf optimization algorithm , Ant Colony Optimization Algorithm
Journal title :
International Journal of Engineering
Journal title :
International Journal of Engineering
Record number :
2781032
Link To Document :
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