2022
DOI: 10.3233/jcm-226015
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Automatic classification and recognition of geomagnetic interference events based on machine learning

Abstract: Geomagnetic interference events seriously affect normal analysis of geomagnetic observation data, and the existing manual identification methods are inefficient. Based on the data of China Geomagnetic Observation Network from 2010 to 2020, a sample data set including high voltage direct current transmission (HVDC) interference events, other interference events and normal events is constructed. By introducing machine learning algorithms, three geomagnetic interference event recognition models GIEC-SVM, GIEC-MLP… Show more

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Cited by 2 publications
(1 citation statement)
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“…2. With the rapid development of machine learning technology, machine learning algorithm models have been applied to different business scenarios (Cai et al 2019;Che et al 2022;Liu et al 2019;Liu et al 2022;Shan et al 2023). We will delve into the impact mechanism of human-made interference sources, relying on the interference events and a large number of manually annotated signals accumulated in the database of the Geomagnetic Network of China.…”
Section: Conclusion and Prospectmentioning
confidence: 99%
“…2. With the rapid development of machine learning technology, machine learning algorithm models have been applied to different business scenarios (Cai et al 2019;Che et al 2022;Liu et al 2019;Liu et al 2022;Shan et al 2023). We will delve into the impact mechanism of human-made interference sources, relying on the interference events and a large number of manually annotated signals accumulated in the database of the Geomagnetic Network of China.…”
Section: Conclusion and Prospectmentioning
confidence: 99%