4.7 Article

Grid-based many-objective optimiser for aircraft conceptual design with multiple aircraft configurations

Journal

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.engappai.2023.106951

Keywords

Multi -configurations; Aircraft conceptual design; Many -objective optimisation; Iterative parameter distribution estimation; Metaheuristics; Aircraft performance

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This paper presents a technique called many-objective optimization for aircraft conceptual design with more than three objective functions. A new many-objective metaheuristic called MM-IPDE-Gr is developed, which integrates several additional reproduction schemes and a grid-based clustering technique to increase population diversity and improve the exploration ability of the algorithm. The results show that the proposed many-objective metaheuristic gives the best performance compared to existing design methods.
This paper presents an aircraft conceptual design technique with more than three objective functions, called many-objective optimisation. The selection of aircraft configuration is usually achieved using a system engineering approach. This selection approach has the design variables assigned to remove the configuration decision-making process. The design problem is demonstrated for the conceptual design of a fixed-wing unmanned aerial vehicle. Eight objective functions, including power required, take-off weight, take-off distance, landing distance, endurance, range, lift coefficient at cruise and drag coefficient at cruise, are posed, while the constraints are aircraft stability, performance required and take-off distance. Design variables simultaneously determine an aircraft configuration, shape and sizing parameters. Hence a new, many-objective metaheuristic is developed to increase the design performance. A grid-based many-objective metaheuristic with iterative parameter distribution estimation (MM-IPDE-Gr) is developed. It is an enhanced variant of the MM-IPDE with improved reproduction schemes, adaptive parameters and a grid-based clustering technique. Several additional reproduction schemes in mutation and crossover processes with two additional adaptive parameters are integrated to increase population diversity and improve the exploration ability of the algorithm. In addition, the gridbased method is integrated as a clustering technique to improve the Pareto clustering process in many-objective optimisation. The proposed method, with established newly invented metaheuristics, is used to solve the new design problem and its performance compared with existing design methods. It is shown that the proposed manyobjective metaheuristic gives the best results.

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