Archive | 2021

Data Agreement Analysis And Correction of Comparative Geomagnetic Vector Observations

 
 
 
 
 

Abstract


\n Geomagnetism, similar to other areas of geophysics, is an observation-based science. Data agreement between comparative geomagnetic vector observations is one of the most important evaluation criteria for high-quality geomagnetic data. The main influencing factors affecting the agreement between comparative observational data are the attitude angle, scale factor, long-term time drift, and temperature. In this paper, we propose a method based on a genetic algorithm and linear regression to correct for these effects and use the distribution pattern of points in Bland–Altman plots with a 95% confidence interval length to qualitatively and quantitatively evaluate the agreement between the comparative observational data. In Bland–Altman plots with better agreement, that is, with the corrected data, more than 95% of the points are distributed within the 95% confidence interval and there is no obvious pattern in the distribution of the points. Meanwhile, the length of 95% confidence interval decreased significantly after the correction. The method presented here has positive effects on the vector instrumentation detection, enhancing the robustness of comparative observatory observations and reducing errors in judgments of the size and arrival time of large magnetic disturbances or rapid magnetic variations.

Volume None
Pages None
DOI 10.21203/rs.3.rs-970823/v1
Language English
Journal None

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