An extended Gauss-Newton method for full waveform inversion

ArXiv Pub Date : 2023-02-08 DOI:10.48550/arXiv.2302.04124
A. Gholami
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Abstract

Full Waveform Inversion (FWI) is a large-scale nonlinear ill-posed problem for which implementation of the Newton-type methods is computationally expensive. Moreover, these methods can trap in undesirable local minima when the starting model lacks low-wavenumber part and the recorded data lack low-frequency content. In this paper, the Gauss-Newton (GN) method is modified to address these issues. We rewrite the GN system for multisoure multireceiver FWI in an equivalent matrix equation form whose solution is a diagonal matrix, instead of a vector in the standard system. Then we relax the diagonality constraint, lifting the search direction from a vector to a matrix. This relaxation is equivalent to introducing an extra degree of freedom in the subsurface offset axis for the search direction. Furthermore, it makes the Hessian matrix separable and easy to invert. The relaxed system is solved explicitly for computing the desired search direction, requiring only inversion of two small matrices that deblur the data residual matrix along the source and receiver dimensions. Application of the Extended GN (EGN) method to solve the extended-source FWI leads to an algorithm that has the advantages of both model extension and source extension. Numerical examples are presented showing robustness and stability of EGN algorithm for waveform inversion.
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全波形反演的扩展高斯-牛顿法
全波形反演(FWI)是一个大规模的非线性病态问题,实现牛顿型方法的计算成本很高。此外,当启动模型缺乏低波数部分,记录数据缺乏低频内容时,这些方法会陷入不希望的局部极小值。本文对高斯-牛顿(GN)方法进行了改进,以解决这些问题。我们用等价矩阵方程的形式重写了多源多接收机无线wi的GN系统,其解是对角矩阵,而不是标准系统中的向量。然后我们放宽对角约束,将搜索方向从一个向量提升到一个矩阵。这种松弛相当于在搜索方向的地下偏移轴上引入一个额外的自由度。此外,该方法使Hessian矩阵可分离,易于逆变换。为了计算期望的搜索方向,对松弛系统进行了显式求解,只需要对两个小矩阵进行反演,从而沿源和接收维消除数据残差矩阵的模糊。将扩展GN (Extended GN, EGN)方法应用于求解扩展源FWI问题,得到了一种既具有模型可拓性又具有源可拓性的算法。数值算例表明了EGN算法在波形反演中的鲁棒性和稳定性。
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