Fast 3D joint inversion of gravity and magnetic data based on cross gradient constraint

IF 2.8 4区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Sheng Liu , Xiangyun Wan , Shuanggen Jin , Bin Jia , Songbai Xuan , Quan Lou , Binbin Qin , Rongfu Peng , Dali Sun
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引用次数: 2

Abstract

The gravity and magnetic data can be adopted to interpret the internal structure of the Earth. To improve the calculation efficiency during the inversion process and the accuracy and reliability of the reconstructed physical property models, the triple strategy is adopted in this paper to develop a fast cross-gradient joint inversion for gravity and magnetic data. The cross-gradient constraint contains solving the gradients of the physical property models and performing the cross-product calculation of their gradients. The sparse matrices are first obtained by calculating the gradients of the physical property models derived from the first-order finite difference. Then, the triple method is applied to optimize the storages and the calculations related to the gradients of the physical property models. Therefore, the storage compression amount of the calculations related to the gradients of the physical property models and the cross-gradient constraint are reduced to one-fold of the number of grid cells at least, and the compression ratio increases with the increase of the number of grid cells. The test results from the synthetic data and field data prove that the structural coupling is achieved by using the fast cross-gradient joint inversion method to effectively reduce the multiplicity of solutions and improve the computing efficiency.

基于交叉梯度约束的重磁数据三维快速联合反演
重磁资料可以用来解释地球的内部结构。为了提高反演过程中的计算效率和重建物性模型的准确性和可靠性,本文采用三重策略,开发了重磁资料快速跨梯度联合反演方法。交叉梯度约束包括求解物性模型的梯度和对其梯度进行交叉积计算。稀疏矩阵首先通过计算由一阶有限差分导出的物理性质模型的梯度得到。在此基础上,采用三重法对储层进行优化,并对物理性质模型的梯度相关计算进行优化。因此,与物理性质模型的梯度和交叉梯度约束相关的计算的存储压缩量至少减少到网格单元数的1倍,并且压缩比随着网格单元数的增加而增加。综合数据和现场数据的试验结果表明,采用快速交叉梯度联合反演方法实现了结构耦合,有效地减少了解的多重性,提高了计算效率。
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来源期刊
Geodesy and Geodynamics
Geodesy and Geodynamics GEOCHEMISTRY & GEOPHYSICS-
CiteScore
4.40
自引率
4.20%
发文量
566
审稿时长
69 days
期刊介绍: Geodesy and Geodynamics launched in October, 2010, and is a bimonthly publication. It is sponsored jointly by Institute of Seismology, China Earthquake Administration, Science Press, and another six agencies. It is an international journal with a Chinese heart. Geodesy and Geodynamics is committed to the publication of quality scientific papers in English in the fields of geodesy and geodynamics from authors around the world. Its aim is to promote a combination between Geodesy and Geodynamics, deepen the application of Geodesy in the field of Geoscience and quicken worldwide fellows'' understanding on scientific research activity in China. It mainly publishes newest research achievements in the field of Geodesy, Geodynamics, Science of Disaster and so on. Aims and Scope: new theories and methods of geodesy; new results of monitoring and studying crustal movement and deformation by using geodetic theories and methods; new ways and achievements in earthquake-prediction investigation by using geodetic theories and methods; new results of crustal movement and deformation studies by using other geologic, hydrological, and geophysical theories and methods; new results of satellite gravity measurements; new development and results of space-to-ground observation technology.
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