A neural network-based automatic semi-variogram modeling approach for geomagnetic map construction in multi-source indoor and outdoor navigation
Chengsheng Zhan, Ping Huang, Bing Xue, Bin Lan

TL;DR
This paper introduces a deep learning method to improve geomagnetic map construction by automatically modeling semi-variograms, enhancing navigation accuracy.
Contribution
A novel neural network framework (GMAS-K) that automates semi-variogram modeling for geomagnetic mapping, reducing subjectivity and improving accuracy.
Findings
GMAS-K outperforms ordinary kriging in producing smoother and more accurate geomagnetic maps.
The integration of deep learning with geostatistical methods streamlines the mapping workflow and enhances cross-scale consistency.
Abstract
High-precision geomagnetic maps are essential for geomagnetic-assisted navigation, yet their construction is constrained by kriging interpolation’s reliance on accurately modeled semi-variogram. Conventional approaches depend heavily on geological expertise, introducing subjectivity and limiting both mapping accuracy and navigation performance. Here, we present geomagnetic map via auto-semi-variogram kriging(GMAS-K), a framework that integrates geomagnetic map via auto-semi-variogram convolutional neural network(GMAS-CNN) to automatically infer semi-variogram parameters. GMAS-CNN adopts an encoder–decoder architecture: the encoder compresses and fuses multi-scale features of geomagnetic samples to enrich semi-variance representations, while the decoder reconstructs latent feature spaces to estimate semi-variogram parameters. To further enhance cross-scale consistency, we introduce a…
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Taxonomy
TopicsGeophysical and Geoelectrical Methods · Geological Modeling and Analysis · Geomagnetism and Paleomagnetism Studies
