This paper considers the surrogate modeling of a complex numerical code in a multifidelity framework when the code output is a time series. Using an experimental design of the low-and high-fidelity code levels, an original Gaussian process regression method is proposed. The code output is expanded on a basis built from the experimental design. The first coefficients of the expansion of the code output are processed by a co-kriging approach. The last coefficients are collectively processed by a kriging approach with covariance tensorization. The resulting surrogate model taking into account the uncertainty in the basis construction is shown to have better performance in terms of prediction errors and uncertainty quantification than standard dimension reduction techniques.
翻译:本文考虑了当代码输出是一个时间序列时,在一个多方形框架中的复杂数字代码的替代模型。 使用低和高方形代码水平的实验设计, 提出了原始高斯进程回归法。 代码输出在实验设计的基础上扩大。 扩展代码输出的首批系数通过连带引力处理。 最后的系数通过使用共变拉力来集体处理。 由此而来的考虑到基础构建不确定性的替代模型在预测错误和不确定性量化方面比标准尺寸减少技术有更好的表现。