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LARGE SCALE RANDOMIZED LEARNING GUIDED BY PHYSICAL LAWS WITH APPLICATIONS IN FULL WAVEFORM INVERSION

机译:物理定律指导的大规模随机学习及其在全波形反演中的应用

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摘要

The rapid convergence rate, high fidelity learning outcome and low computational cost are key targets in solving the learning problem of the complex physical system. Guided by physical laws of wave propagation, in full waveform inversion (FWI), we learn the subsurface images through optimizing the media velocity model in a large scale non-linear problem. In this paper, we combine randomized subsampling techniques with a second-order optimization algorithm to propose the Sub-Sampled Newton (SSN) method for learning velocity model of FWI. By incorporating the curvature information, SSN preserves comparable convergence rate to Newtons method and significantly reduces the iteration cost by approximating the Hessian matrix through a non-uniform subsampling scheme. The numerical experiments demonstrate that the proposed SSN method has a faster convergence rate, and achieves a more accurate velocity model in terms of mean squared error than commonly used methods.
机译:快速收敛速度,高保真学习结果和低计算成本是解决复杂物理系统学习问题的关键目标。根据波传播的物理定律,在全波形反演(FWI)中,我们通过优化大规模非线性问题中的介质速度模型来学习地下图像。在本文中,我们将随机二次抽样技术与二次优化算法相结合,提出了用于FWI学习速度模型的二次抽样牛顿(SSN)方法。通过合并曲率信息,SSN保留了与牛顿法相当的收敛速度,并通过非均匀子采样方案通过近似Hessian矩阵显着降低了迭代成本。数值实验表明,所提出的SSN方法具有更快的收敛速度,并且在均方误差方面实现了比常用方法更准确的速度模型。

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