2021
DOI: 10.48550/arxiv.2110.06455
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Seismic Tomography with Random Batch Gradient Reconstruction

Abstract: Seismic tomography solves high-dimensional optimization problems to image subsurface structures of Earth. In this paper, we propose to use random batch methods to construct the gradient used for iterations in seismic tomography. Specifically, we use the frozen Gaussian approximation to compute seismic wave propagation, and then construct stochastic gradients by random batch methods. The method inherits the spirit of stochastic gradient descent methods for solving highdimensional optimization problems. The prop… Show more

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