基于信赖域策略的弹性全波形反演

Wensheng Zhang, Yijun Li
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引用次数: 0

摘要

本文研究了基于信赖域法的弹性波全波形反演(FWI)。FWI是一个最小化观测数据与模拟数据之间不拟合的优化问题。通常采用直线搜索法迭代更新模型参数。线搜索方法首先产生搜索方向,然后沿该方向寻找合适的步长。在信任域方法中,在当前迭代点的一定邻域内定义一个尝试步长,然后求解一个信任域子问题。介绍了用牛顿型方法求解信任域FWI的理论方法。给出了带直线搜索策略的截断牛顿法和带信赖域策略的高斯-牛顿法的算法。分别用L-BFGS法、高斯-牛顿法和截断牛顿法对Marmousi模型的FWI进行了数值计算。将直线搜索策略与信赖域策略进行了比较,结果表明信赖域方法比直线搜索方法更有效,高斯-牛顿法和截断牛顿法都比L-BFGS方法更精确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Elastic Full Waveform Inversion Based on the Trust Region Strategy
In this paper, we investigate the elastic wave full-waveform inversion (FWI) based on the trust region method. The FWI is an optimization problem of minimizing the misfit between the observed data and simulated data. Usually, the line search method is used to update the model parameters iteratively. The line search method generates a search direction first and then finds a suitable step length along the direction. In the trust region method, it defines a trial step length within a certain neighborhood of the current iterate point and then solves a trust region subproblem. The theoretical methods for the trust region FWI with the Newton type method are described. The algorithms for the truncated Newton method with the line search strategy and for the Gauss-Newton method with the trust region strategy are presented. Numerical computations of FWI for the Marmousi model by the L-BFGS method, the Gauss-Newton method and the truncated Newton method are completed. The comparisons between the line search strategy and the trust region strategy are given and show that the trust region method is more efficient than the line search method and both the Gauss-Newton and truncated Newton methods are more accurate than the L-BFGS method.
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