Multi-objective climb path optimization for aircraft/engine integration using particle swarm optimization

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Abstract

In this article, a new multi-objective approach to the aircraft climb path optimization problem, based on the Particle Swarm Optimization algorithm, is introduced to be used for aircraft-engine integration studies. This considers a combination of a simulation with a traditional Energy approach, which incorporates, among others, the use of a proposed path-tracking scheme for guidance in the Altitude-Mach plane. The adoption of population-based solver serves to simplify case setup, allowing for direct interfaces between the optimizer and aircraft/engine performance codes. A two-level optimization scheme is employed and is shown to improve search performance compared to the basic PSO algorithm. The effectiveness of the proposed methodology is demonstrated in a hypothetic engine upgrade scenario for the F-4 aircraft considering the replacement of the aircraft's J79 engine with the EJ200; a clear advantage of the EJ200-equipped configuration is unveiled, resulting, on average, in 15% faster climbs with 20% less fuel.

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APA

Antonakis, A., Nikolaidis, T., & Pilidis, P. (2017). Multi-objective climb path optimization for aircraft/engine integration using particle swarm optimization. Applied Sciences (Switzerland), 7(5). https://doi.org/10.3390/app7050469

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