Global Geology 2022, 25(1) 41-48 DOI:     ISSN: 1673-9736 CN: 22-1371/P

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Keywords
aeromagnetic compensation
T-L model
FOM flight simulation
ridge regression algorithm
Authors
SU Zhenning
JIAO Jian
ZHOU Shuai
YU Ping and ZHAO Xiao
PubMed
Article by Su Z
Article by Jiao J
Article by Zhou S
Article by Yu PAZX

Aeromagnetic compensation method based on ridge regression algorithm

SU Zhenning, JIAO Jian, ZHOU Shuai, YU Ping and ZHAO Xiao

College of Geo-Exploration Science and Technology, Jilin University, Changchun 130026, China

Abstract

With the development of UAV technology, UAV aerial magnetic survey plays an important role in the airborne geophysical prospecting. In the aeromagnetic survey, the magnetic field interferences generated by the magnetic components on the aircraft greatly affect the accuracy of the survey results. Therefore, it is necessary to use aeromagnetic compensation technology to eliminate the interfering magnetic field. So far, the aeromagnetic compensation methods used are mainly linear regression compensation methods based on the T-L equation. The least square is one of the most commonly used methods to solve multiple linear regressions. However, considering that the correlation between data may lead to instability of the algorithm, we use the ridge regression algorithm to solve the multicollinearity problem in the T-L equation. Subsequently this method is applied to the aeromagnetic survey data, and the standard deviation is selected as the index to evaluate the compensation effect to verify the effectiveness of the method.

Keywords aeromagnetic compensation   T-L model   FOM flight simulation   ridge regression algorithm  
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