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An improved critical constraint method for structural optimization of product families

机译:产品家族结构优化的一种改进的临界约束方法

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This paper discusses important improvements in the efficient Critical Constraint Method (CCM) for the optimization of structural product families subjected to multiple crash load cases. The method was first presented by ?man and Nilsson (Struct Multidisc Optim 41(5):797-815, 2010). However, the algorithm often converged towards an infeasible solution, which considerably limited the applicability of the method. Therefore, improvements are presented here to make the method more robust regarding feasible solutions, resulting in only a minor decrease in efficiency compared to the original method. The improvements include; a penalty approach to control the feasibility of the method by continuously pushing the solution out of the infeasible region, a dynamic contraction algorithm to increase the accuracy and robustness of the method by considering the optimization progress and variable history in the reduction of the step size, and the implementation of a parallel approach to further increase the efficiency of the method by enabling the full potential of large-scale computer clusters. Finally, the potential of the improved CCM algorithm is demonstrated on a large-scale industrial family optimization problem and it is concluded that the high efficiency of themethod enables the usage of large product family optimization in the design process.
机译:本文讨论了有效的关键约束方法(CCM)的重要改进,以优化承受多种碰撞载荷工况的结构产品系列。该方法由manman和Nilsson首次提出(Struct Multidisc Optim 41(5):797-815,2010)。然而,该算法通常趋向于不可行的解决方案,这极大地限制了该方法的适用性。因此,在此提出改进措施,使该方法在可行的解决方案方面更加稳健,与原始方法相比,效率仅稍有下降。改进包括:通过不断地将解决方案推出不可行区域来控制方法可行性的惩罚方法,通过在减小步长的过程中考虑优化进度和变量历史,采用动态收缩算法来提高方法的准确性和鲁棒性,并行方法的实现,通过充分利用大型计算机集群的潜力来进一步提高该方法的效率。最后,在大规模工业系列优化问题上证明了改进的CCM算法的潜力,并得出结论:该方法的高效率使得设计过程中可以使用大型产品系列优化。

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