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首页> 外文期刊>International Journal for Numerical Methods in Engineering >Active learning polynomial chaos expansion for reliability analysis by maximizing expected indicator function prediction error
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Active learning polynomial chaos expansion for reliability analysis by maximizing expected indicator function prediction error

机译:通过最大化预期指示函数预测误差来实现可靠性分析的主动学习多项式混沌扩展

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摘要

Assessing the failure probability of complex aeronautical structure is a difficult task in presence of uncertainties. In this paper, active learning polynomial chaos expansion (PCE) is developed for reliability analysis. The proposed method firstly assigns a Gaussian Process (GP) prior to the model response, and the covariance function of this GP is defined by the inner product of PCE basis function. Then, we show that a PCE model can be derived by the posterior mean of the GP, and the posterior variance is obtained to measure the local prediction error as Kriging model. Also, the expectation of the prediction variance is derived to measure the overall accuracy of the obtained PCE model. Then, a learning function, named expected indicator function prediction error (EIFPE), is proposed to update the design of experiment of PCE model for reliability analysis. This learning function is developed under the framework of the variance-bias decomposition. It selects new points sequentially by maximizing the EIFPE that considers both the variance and bias information, and it provides a dynamic balance between global exploration and local exploitation. Finally, several test functions and engineering applications are investigated, and the results are compared with the widely used Kriging model combined with U and expected feasibility function learning function. Results show that the proposed method is efficient and accurate for complex engineering applications.
机译:评估复杂航空结构的失败概率是在不确定性存在下的艰巨任务。本文开发了主动学习多项式混沌扩展(PCE)以进行可靠性分析。该提出的方法首先在模型响应之前分配高斯过程(GP),并且该GP的协方差函数由PCE基函数的内部产品定义。然后,我们表明PCE模型可以通过GP的后序来导出,并且获得后差来测量局部预测误差作为Kriging模型。此外,推导出预测方差的期望来测量所获得的PCE模型的整体精度。然后,提出了一种名为预期指示符功能预测误差(EIFPE)的学习功能,以更新PCE模型的实验设计以进行可靠性分析。该学习功能是在方差 - 偏置分解的框架下开发的。它通过最大化考虑方差和偏见信息的EIFPE来顺序选择新点,并且它在全球探索和本地开发之间提供动态平衡。最后,研究了几种测试功能和工程应用,并将结果与​​广泛使用的Kriging模型与U与U和预期的可行性功能学习功能进行了比较。结果表明,该方法对于复杂的工程应用是有效准确的。

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