Obtaining samples from the posterior distribution of inverse problems with expensive forward operators is challenging especially when the unknowns involve the strongly heterogeneous Earth. To meet these challenges, we propose a preconditioning scheme involving a conditional normalizing flow (NF) capable of sampling from a low-fidelity posterior distribution directly. This conditional NF is used to speed up the training of the high-fidelity objective involving minimization of the Kullback-Leibler divergence between the predicted and the desired high-fidelity posterior density for indirect measurements at hand. To minimize costs associated with the forward operator, we initialize the high-fidelity NF with the weights of the pretrained low-fidelity NF, which is trained beforehand on available model and data pairs. Our numerical experiments, including a 2D toy and a seismic compressed sensing example, demonstrate that thanks to the preconditioning considerable speed-ups are achievable compared to training NFs from scratch.
翻译:与昂贵的前方操作员一起从事后分配反面问题中获取样本具有挑战性,特别是当未知因素涉及高度多样化的地球时。为了迎接这些挑战,我们提出一个先决条件方案,涉及有条件的正常流动(NF),能够直接从低不忠实的后端分布中取样。这个条件性NF用于加速高信仰目标的培训,包括尽量减少所预测的和预期的间接测量的高不忠诚后退密度之间的差别。为了尽量减少与前方操作员相关的费用,我们先用事先经过训练的低不易感性NF的重量,先用现有的模型和数据配对进行训练。我们的数字实验,包括一个2D玩具和一个地震压缩感测示例,表明由于具备了相当高速度的前提条件,才能从零开始对NF进行培训。