A fast 3-D inversion for airborne EM data using pre-conditioned stochastic gradient descent

Author:

Ren Xiuyan12,Lai Mingquan12,Wang Luyuan12,Yin Changchun12,Liu Yunhe12ORCID,Su Yang12,Zhang Bo12,Ben Fang3,Huang Wei3

Affiliation:

1. Key Laboratory of Geophysical Exploration Equipment by Ministry of Education, Jilin University , 130021 Changchun , China

2. College of Geo-Exploration Science and Technology, Jilin University , 130021 Changchun , China

3. Institute of Geophysical and Geochemical Exploration, Chinese Academy of Geological Sciences , 065000 Langfang , China

Abstract

SUMMARY Airborne electromagnetic (AEM) exploration produces large amounts of data due to its high sampling rate, so that the 3-D inversions take extremely big computation and time consumption. We present a fast 3-D inversion framework for large-scale AEM explorations using a pre-conditioned stochastic gradient descent combined with Gauss–Newton (PSG-GN) method. We adopt a compressed sensing (CS) in the 3-D forward modelling, in which a random undersampling is used to reduce the calculation, while the responses for all survey stations are obtained via a reconstruction technique. For our 3-D AEM inversions, a method of combining the stochastic gradient descent with Gauss–Newton (SG-GN) that requires only a small data set in each iteration instead of the conventional full-batch data (complete original data) inversion have been investigated. To further speed up the 3-D inversion, we develop a pre-conditioner considering the random sampling rate and gradient noise to achieve a fast convergence. We use two synthetic models to test the accuracy, convergence and efficiency of our algorithm. The results show that the conventional inversion with full-batch data and the PSG-GN method can both converge quickly, but our method can enhance the inversion efficiency up to 78 per cent. Finally, we invert a field data set acquired from a massive sulfide deposit in Ireland and obtain the results that agree well with the known geologies.

Funder

Department of Science and Technology of Jilin Province

National Natural Science Foundation of China

Jilin University

Guangxi Science and Technology Planning Project

Publisher

Oxford University Press (OUP)

Subject

Geochemistry and Petrology,Geophysics

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