Uncertainty estimations are presented of the response of a multiscale in-stent restenosis model, as obtained by both non-intrusive and semi-intrusive uncertainty quantification. The in-stent restenosis model is a fully coupled multiscale simulation of post-stenting tissue growth, in which the most costly submodel is the blood flow simulation. Surrogate modeling for non-intrusive uncertainty quantification takes the whole model as a black-box and maps directly from the three uncertain inputs to the quantity of interest, the neointimal area. The corresponding uncertain estimates matched the results from quasi-Monte Carlo simulations well. In the semi-intrusive uncertainty quantification, the most expensive submodel is replaced with a surrogate model. We developed a surrogate model for the blood flow simulation by using a convolutional neural network. The semi-intrusive method with the new surrogate model offered efficient estimates of uncertainty and sensitivity while keeping relatively high accuracy. It outperformed the result obtained with earlier surrogate models. It also achieved the estimates comparable to the non-intrusive method with similar efficiency. Presented results on uncertainty propagation with non-intrusive and semi-intrusive metamodeling methods allow us to draw some conclusions on the advantages and limitations of these methods.
翻译:以非侵扰性和半侵扰性不确定性量化方法获得的多级静态反应模型的不确定性估计是非侵扰性和半侵扰性不确定性量化方法获得的多级静态反应模型的不确定性估计。在半侵扰性不确定性量化方法中,最昂贵的静态后组织生长模型是完全同时的多级模拟,其中最昂贵的子模型是血液流模拟。非侵扰性不确定性量化模型的替代模型将整个模型作为黑盒和地图,直接来自对兴趣量的三种不确定投入,即新星区。相应的不确定估计数与准蒙特卡洛模拟的结果相匹配。在半侵扰性不确定性量化方法中,最昂贵的子模型被代之以代孕模型。我们开发了一个血液流模拟的代孕模型,使用一个革命性神经网络。采用新代孕模型的半侵入性模型的半侵入性模型提供了对不确定性和敏感性的有效估计,同时保持相对较高的准确性。它比先前的代孕模型得出的结果要优。在半侵扰性模型中,还取得了与非侵入性方法相近的估算值。目前不确定性结论。