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A framework for parallelized efficient global optimization with application to vehicle crashworthiness optimization

机译:并行高效全局优化的框架及其在车辆防撞性优化中的应用

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This article presents a framework for simulation-based design optimization of computationally expensive problems, where economizing the generation of sample designs is highly desirable. One popular approach for such problems is efficient global optimization (EGO), where an initial set of design samples is used to construct a kriging model, which is then used to generate new 'infill' sample designs at regions of the search space where there is high expectancy of improvement. This article attempts to address one of the limitations of EGO, where generation of infill samples can become a difficult optimization problem in its own right, as well as allow the generation of multiple samples at a time in order to take advantage of parallel computing in the evaluation of the new samples. The proposed approach is tested on analytical functions, and then applied to the vehicle crashworthiness design of a full Geo Metro model undergoing frontal crash conditions.
机译:本文提出了一个框架,用于基于计算的问题的基于仿真的设计优化,其中非常需要节省样本设计的生成。解决此类问题的一种流行方法是高效的全局优化(EGO),其中使用一组初始设计样本来构建克里金模型,然后将其用于在搜索空间存在的区域生成新的“填充”样本设计。改善的期望很高。本文试图解决EGO的局限性之一,在这种局限性下,填充样本的生成本身就可能成为一个困难的优化问题,并且允许一次生成多个样本,以利用并行计算的优势。新样品的评估。所提出的方法在解析函数上进行了测试,然后应用于经历正面碰撞条件的完整Geo Metro模型的车辆耐撞性设计。

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