dc.description.abstract | Airlines face the complex task of optimizing aircraft fleet assignment to maximize profitability
and efficiency. This thesis tackles this challenge by proposing a hybrid approach that combines
Genetic Algorithms (GA) and Mixed-Integer Linear Programming (MILP). GA's strength lies in
its ability to efficiently explore vast solution spaces, while MILP provides precise mathematical
modeling and guarantees optimal solutions.
The research develops a comprehensive mathematical model for the Aircraft Fleet Assignment
Problem (AFAP) and evaluates it using both GA and CPLEX, a high-performance MILP solver, on
small-scale instances. Results demonstrate GA's computational efficiency while achieving
comparable optimality levels. Furthermore, a large-scale case study simulating a major North
American airline showcases the effectiveness of the GA approach in generating significant profit
improvements and cost reductions.
This research provides airlines with a robust and efficient method to optimize fleet
management, leading to enhanced operational performance and increased passenger satisfaction. | en_US |