Inspired by recent work on extended image volumes that lays the ground for randomized probing of extremely large seismic wavefield matrices, we present a memory frugal and computationally efficient inversion methodology that uses techniques from randomized linear algebra. By means of a carefully selected realistic synthetic example, we demonstrate that we are capable of achieving competitive inversion results at a fraction of the memory cost of conventional full-waveform inversion with limited computational overhead. By exchanging memory for negligible computational overhead, we open with the presented technology the door towards the use of low-memory accelerators such as GPUs.
翻译:受最近关于扩大图像量的工作的启发,这些图像量为随机测算极大型地震波场矩阵打下了基础,我们展示了一种使用随机线性代数技术的记忆节制和计算高效反向方法。我们通过精心选择的现实合成例子,证明我们能够以传统的全波反向和有限的计算间接费用的记忆成本的一小部分实现竞争性反向结果。通过将记忆交换为可忽略不计的计算间接费用,我们以现出的技术打开了使用诸如GPUs等低分子加速器的大门。