Abstract
We present an accelerated full-waveforminversion based on dynamic mini-batch optimization, which naturally exploits redundancies in observed data from different sources. The method rests on the selection of quasi-random subsets (mini-batches) of sources, used to approximate the misfit and the gradient of the complete data set. The size of the mini-batch is dynamically controlled by the desired quality of the gradient approximation. Within each mini-batch, redundancy is minimized by selecting sources with the largest angular differences between their respective gradients, and spatial coverage is maximized by selecting candidate eventswith Mitchell's best-candidate algorithm. Information from sources not included in a specific minibatch is incorporated into each gradient calculation through a quasi-Newton approximation of theHessian, and a consistent misfitmeasure is achieved through the inclusion of a control group of sources. By design, the dynamic mini-batch approach has several main advantages: (1) The use ofmini-batches with adaptive size ensures that an optimally small number of sources is used in each iteration, thus potentially leading to significant computational savings; (2) curvature information is accumulated and exploited during the inversion, using a randomized quasi- Newton method; (3) new data can be incorporated without the need to re-invert the complete data set, thereby enabling an evolutionary mode of full-waveform inversion. We illustrate our method using synthetic and real-data inversions for upper-mantle structure beneath the African Plate. In these specific examples, the dynamic mini-batch approach requires around 20 per cent of the computational resources in order to achieve data and model misfits that are comparable to those achieved by a standard full-waveform inversion where all sources are used in each iteration.
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Van Herwaarden, D. P., Boehm, C., Afanasiev, M., Thrastarson, S., Krischer, L., Trampert, J., & Fichtner, A. (2020). Accelerated full-waveform inversion using dynamic mini-batches. Geophysical Journal International, 221(2), 1427–1488. https://doi.org/10.1093/gji/ggaa079
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