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Morphing Wing Structural Optimization Using Opposite-Based Population-Based Incremental Learning and Multigrid Ground Elements

机译:使用基于对立的基于人口的增量学习和多网格地面要素的变形机翼结构优化

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摘要

This paper has twin aims. Firstly, a multigrid design approach for optimization of an unconventional morphing wing is proposed. The structural design problem is assigned to optimize wing mass, lift effectiveness, and buckling factor subject to structural safety requirements. Design variables consist of partial topology, nodal positions, and component sizes of a wing internal structure. Such a design process can be accomplished by using multiple resolutions of ground elements, which is called a multigrid approach. Secondly, an opposite-based multiobjective population-based incremental learning (OMPBIL) is proposed for comparison with the original multiobjective population-based incremental learning (MPBIL). Multiobjective design problems with single-grid and multigrid design variables are then posed and tackled by OMPBIL and MPBIL. The results show that using OMPBIL in combination with a multigrid design approach is the best design strategy. OMPBIL is superior to MPBIL since the former provides better population diversity. Aeroelastic trim for an elastic morphing wing is also presented.
机译:本文具有双重目的。首先,提出了一种优化非常规变形机翼的多网格设计方法。根据结构安全要求,分配结构设计问题以优化机翼质量,升力效果和屈曲系数。设计变量包括局部拓扑,节点位置和机翼内部结构的组件大小。这样的设计过程可以通过使用多种分辨率的接地元件来完成,这称为多网格方法。其次,提出了一种基于对立的多目标基于人口的增量学习(OMPBIL)与原始的多目标基于人口的增量学习(MPBIL)进行比较。然后由OMPBIL和MPBIL提出并解决具有单网格和多网格设计变量的多目标设计问题。结果表明,将OMPBIL与多网格设计方法结合使用是最佳的设计策略。 OMPBIL优于MPBIL,因为前者提供了更好的人口多样性。还介绍了用于弹性变形机翼的气动弹性饰件。

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  • 来源
    《Mathematical Problems in Engineering》 |2015年第2期|730626.1-730626.16|共16页
  • 作者

    Sleesongsom S.; Bureerat S.;

  • 作者单位

    Chiangrai Coll, Dept Mech Engn, Fac Engn, Chiangrai 57000, Thailand.;

    Khon Kaen Univ, Fac Engn, Dept Mech Engn, Sustainable & Infrastruct Res & Dev Ctr, Khon Kaen 40002, Thailand.;

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