A multi-task learning network based on the Transformer network for airborne electromagnetic detection imaging and denoising

Author:

Liu Yajie1,Zhang Yan2,Guo Cheng1,Zhang Song1,Kang Houqin3,Zhao Qing1

Affiliation:

1. School of Resources and Environment, University of Electronic Science and Technology of China , Chengdu 610000 , China

2. Shanghai Institute of Space Propulsion , Shanghai 201112 , China

3. State Key Laboratory of the Gas Disaster Detecting Preventing and Emergency Controlling, CCTEG Chongqing Research Institute , Chongqing 400039 , China

Abstract

Abstract As an emerging geophysical exploration technology in recent years, airborne electromagnetic exploration has the advantages of adapting to diverse terrains, wide coverage, and providing a large amount of electromagnetic data, and can be applied to the rapid collection of large amounts of data. Scenarios are often used in fields such as deep geological structures, mineral resource exploration, and environmental engineering research. However, traditional airborne electromagnetic data inversion technology usually takes a long time to process a large amount of airborne electromagnetic data, and it is difficult to remove the noise in the later signals. Therefore, this paper proposes a multi-task learning network structure based on Transformer. By constraining the two network branches of imaging and denoising, a sub-network with simultaneous denoising and imaging is established to process aeronautical electromagnetic data. The noise test set is introduced for testing. This model achieved a 582.61% signal-to-noise ratio improvement in smooth Gaussian noise denoising, and a 129.69% and 112.74% signal-to-noise ratio improvement in non-smooth Gaussian noise and random impulse noise denoising, respectively. The method proposed in this article overcomes the shortcomings of traditional inversion imaging such as slow speed and low resolution, and at the same time eliminates the influence of noise in airborne electromagnetic data. This is of great significance for the application of deep learning in the field of geophysical exploration.

Funder

National Key Research and Development Program

Publisher

Oxford University Press (OUP)

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