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An efficient variable screening method for effective surrogate models for reliability-based design optimization

机译:一种有效的替代模型的有效变量筛选方法,用于基于可靠性的设计优化

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In the reliability-based design optimization (RBDO) process, surrogate models are frequently used to reduce the number of simulations because analysis of a simulation model takes a great deal of computational time. On the other hand, to obtain accurate surrogate models, we have to limit the dimension of the RBDO problem and thus mitigate the curse of dimensionality. Therefore, it is desirable to develop an efficient and effective variable screening method for reduction of the dimension of the RBDO problem. In this paper, requirements of the variable screening method for deterministic design optimization (DDO) and RBDO are compared, and it is found that output variance is critical for identifying important variables in the RBDO process. An efficient approximation method based on the univariate dimension reduction method (DRM) is proposed to calculate output variance efficiently. For variable screening, the variables that induce larger output variances are selected as important variables. To determine important variables, hypothesis testing is used in this paper so that possible errors are contained in a user-specified error level. Also, an appropriate number of samples is proposed for calculating the output variance. Moreover, a quadratic interpolation method is studied in detail to calculate output variance efficiently. Using numerical examples, performance of the proposed method is verified. It is shown that the proposed method finds important variables efficiently and effectively
机译:在基于可靠性的设计优化(RBDO)过程中,通常使用代理模型来减少仿真次数,因为对仿真模型的分析需要大量的计算时间。另一方面,为了获得准确的替代模型,我们必须限制RBDO问题的维度,从而减轻维度的诅咒。因此,期望开发一种有效且有效的变量筛选方法以减小RBDO问题的维度。在本文中,比较了确定性设计优化(DDO)和RBDO的变量筛选方法的要求,并且发现输出方差对于确定RBDO过程中的重要变量至关重要。提出了一种基于单变量降维方法(DRM)的有效近似方法,可以有效地计算输出方差。对于变量筛选,将引起较大输出方差的变量选为重要变量。为了确定重要的变量,本文使用了假设检验,以便将可能的错误包含在用户指定的错误级别中。此外,建议使用适当数量的样本来计算输出方差。此外,详细研究了二次插值方法,以有效地计算输出方差。通过数值算例验证了所提方法的性能。结果表明,该方法能够有效地找到重要的变量。

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