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A gradient-based shape optimization scheme via isogeometric exact reanalysis

机译:通过等几何精确再分析的基于梯度的形状优化方案

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Purpose - This paper aims to propose a gradient-based shape optimization framework in which traditional time-consuming conversions between computer-aided design and computer-aided engineering and the mesh update procedure are avoided/eliminated. The scheme is general so that it can be used in all cases as a black box, no matter what the objective and/or design variables are, whilst the efficiency and accuracy are guaranteed.Design/methodology/approach - The authors integrated CAD and CAE by using isogeometric analysis (IGA), enabling the present methodology to be robust and accurate. To overcome the difficulty in evaluating the sensitivities of objective and/or constraint functions by analytic method in some cases, the authors adopt the finite difference method to calculate these sensitivities, thereby providing a universal approach. Moreover, to further eliminate the inefficiency caused by the finite difference method, the authors advance the exact reanalysis method, the indirect factorization updating (IFU), to exactly and efficiently calculate functions and their sensitivities, which guarantees its generality and efficiency at the same time.Findings - The proposed isogeometric gradient-based shape optimization using our IFU approach is reliable and accurate, as well as general and efficient.Originality/value - The authors proposed a gradient-based shape optimization framework in which they first integrate IGA and the proposed exact reanalysis method for applicability to structural response and sensitivity analysis.
机译:目的-本文旨在提出一种基于梯度的形状优化框架,该框架可避免/消除计算机辅助设计与计算机辅助工程之间传统的耗时转换以及网格更新过程。该方案是通用的,因此无论目标和/或设计变量是什么,它都可以在所有情况下用作黑匣子,同时可以保证效率和准确性。设计/方法/方法-作者集成了CAD和CAE通过使用等几何分析(IGA),可以使本方法可靠且准确。为了克服在某些情况下通过分析方法评估目标和/或约束函数的敏感性的困难,作者采用有限差分法来计算这些敏感性,从而提供了一种通用方法。此外,为了进一步消除有限差分法带来的效率低下的问题,作者提出了精确的重新分析方法,即间接因式分解更新(IFU),以精确有效地计算函数及其灵敏度,从而保证了函数的通用性和有效性。发现-使用我们的IFU方法提出的基于等几何梯度的形状优化是可靠,准确,通用且高效的。原始性/价值-作者提出了基于梯度的形状优化框架,在该框架中他们首先将IGA集成在一起并提出了用于结构响应和灵敏度分析的精确再分析方法。

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