Improved preconditioned conjugate gradient algorithm and application in 3D inversion of gravity-gradiometry data

被引:0
|
作者
Tai-Han Wang
Da-Nian Huang
Guo-Qing Ma
Zhao-Hai Meng
Ye Li
机构
[1] Jilin University,College of Geo
[2] Tianjin Navigation Instrument Research Institute,Exploration Science and Technology
[3] Jilin Provincial Electric Power Survey and Design Institute,undefined
来源
Applied Geophysics | 2017年 / 14卷
关键词
Full Tensor Gravity Gradiometry (FTG); ICCG method; conjugate gradient algorithm; gravity-gradiometry data inversion; CPU and GPU;
D O I
暂无
中图分类号
学科分类号
摘要
With the continuous development of full tensor gradiometer (FTG) measurement techniques, three-dimensional (3D) inversion of FTG data is becoming increasingly used in oil and gas exploration. In the fast processing and interpretation of large-scale high-precision data, the use of the graphics processing unit process unit (GPU) and preconditioning methods are very important in the data inversion. In this paper, an improved preconditioned conjugate gradient algorithm is proposed by combining the symmetric successive over-relaxation (SSOR) technique and the incomplete Choleksy decomposition conjugate gradient algorithm (ICCG). Since preparing the preconditioner requires extra time, a parallel implement based on GPU is proposed. The improved method is then applied in the inversion of noisecontaminated synthetic data to prove its adaptability in the inversion of 3D FTG data. Results show that the parallel SSOR-ICCG algorithm based on NVIDIA Tesla C2050 GPU achieves a speedup of approximately 25 times that of a serial program using a 2.0 GHz Central Processing Unit (CPU). Real airborne gravity-gradiometry data from Vinton salt dome (southwest Louisiana, USA) are also considered. Good results are obtained, which verifies the efficiency and feasibility of the proposed parallel method in fast inversion of 3D FTG data.
引用
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页码:301 / 313
页数:12
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