To address the challenges of reliability analysis in high-dimensional probability spaces, this paper proposes a new metamodeling method that couples active subspace, heteroscedastic Gaussian process, and active learning. The active subspace is leveraged to identify low-dimensional salient features of a high-dimensional computational model. A surrogate computational model is built in the low-dimensional feature space by a heteroscedastic Gaussian process. Active learning adaptively guides the surrogate model training toward the critical region that significantly contributes to the failure probability. A critical trait of the proposed method is that the three main ingredients-active subspace, heteroscedastic Gaussian process, and active learning-are coupled to adaptively optimize the feature space mapping in conjunction with the surrogate modeling. This coupling empowers the proposed method to accurately solve nontrivial high-dimensional reliability problems via low-dimensional surrogate modeling. Finally, numerical examples of a high-dimensional nonlinear function and structural engineering applications are investigated to verify the performance of the proposed method.
翻译:为解决高维概率空间中可靠性分析所面临的挑战,本文提出了一种将主动子空间、异方差高斯过程和主动学习相结合的新颖元建模方法。利用主动子空间识别高维计算模型的低维显著特征,在低维显著特征空间中构建异方差高斯过程代理模型。主动学习可指导代理模型的训练,使其适应地聚焦于显著贡献于失效概率的关键区域。该方法的关键特征是三个主要元素――主动子空间、异方差高斯过程和主动学习――被耦合以自适应地优化特征空间映射并同时进行代理建模。该耦合赋予了本方法通过低维代理建模精确求解复杂的高维可靠性问题的能力。最后,通过高维非线性函数和结构工程应用的数值例子验证了本方法的性能。