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An improved NSGA-II based control allocation optimisation for aircraft longitudinal automatic landing system. (English) Zbl 1416.93139

Summary: In this paper, an improved nondominated sorting genetic algorithm II is proposed for control allocation optimisation in the field of aircraft automatic landing. The initial chromosomes are generated by using a quasi-random sequence to get a better initial searching ability. The adaptive crossover operator and mutation operator are proposed for the dynamic searching area by adaptively relocating the target according to the current searching results. The corresponding online boundary adjustment strategy is created to maintain the robustness of the algorithm during the whole searching process. The control relationships between the elevator and engine channels are presented and a set of feasible solutions are chosen as a reasonable control range for the ALS design. Finally, a 6 degrees of freedom (6DoF) rigid model of the F/A-18 with external wind perturbation is used as a test bed to demonstrate the feasibility of the proposed method.

MSC:

93C95 Application models in control theory
49N90 Applications of optimal control and differential games
Full Text: DOI

References:

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