Least-Squares Seismic Inversion with Stochastic Conjugate Gradient Method
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作者:
Wei Huang
论文数: 0引用数: 0
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机构:
Department of Earth & Atmospheric Sciences,University of HoustonDepartment of Earth & Atmospheric Sciences,University of Houston
Wei Huang
[1
]
Hua-Wei Zhou
论文数: 0引用数: 0
h-index: 0
机构:
Department of Earth & Atmospheric Sciences,University of Houston
College of Marine Geosciences,Ocean University of ChinaDepartment of Earth & Atmospheric Sciences,University of Houston
Hua-Wei Zhou
[1
,2
]
机构:
[1] Department of Earth & Atmospheric Sciences,University of Houston
[2] College of Marine Geosciences,Ocean University of China
With the development of computational power,there has been an increased focus on data-fitting related seismic inversion techniques for high fidelity seismic velocity model and image,such as full-waveform inversion and least squares migration.However,though more advanced than conventional methods,these data fitting methods can be very expensive in terms of computational cost.Recently,various techniques to optimize these data-fitting seismic inversion problems have been implemented to cater for the industrial need for much improved efficiency.In this study,we propose a general stochastic conjugate gradient method for these data-fitting related inverse problems.We first prescribe the basic theory of our method and then give synthetic examples.Our numerical experiments illustrate the potential of this method for large-size seismic inversion application.