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Article Dans Une Revue Aerospace Science and Technology Année : 2020

Efficient sizing and optimization of multirotor drones based on scaling laws and similarity models

Résumé

In contrast to the current overall aircraft design techniques, the design of multirotor vehicles generally consists of skill-based selection procedures or is based on pure empirical approaches. The application of a systemic approach provides better design performance and the possibility to rapidly assess the effect of changes in the requirements. This paper proposes a generic and efficient sizing methodology for electric multirotor vehicles which allows to optimize a configuration for different missions and requirements. Starting from a set of algebraic equations based on scaling laws and similarity models, the optimization problem representing the sizing can be formulated in many manners. The proposed methodology shows a significant reduction in the number of function evaluations in the optimization process due to a thorough suppression of inequality constraints when compared to initial problem formulation. The results are validated by comparison to characteristics of existing multirotors. In addition, performance predictions of these configurations are performed for different flight scenarios and payloads.
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Dates et versions

hal-02997596 , version 1 (10-11-2020)

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Scott Delbecq, Marc Budinger, Aitor Ochotorena, Aurélien Reysset, François Defaÿ. Efficient sizing and optimization of multirotor drones based on scaling laws and similarity models. Aerospace Science and Technology, 2020, 102, pp.1-23. ⟨10.1016/j.ast.2020.105873⟩. ⟨hal-02997596⟩
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