4.6 Article

Can machine learning reveal precursors of reversals of the geomagnetic axial dipole field?

期刊

GEOPHYSICAL JOURNAL INTERNATIONAL
卷 231, 期 1, 页码 520-535

出版社

OXFORD UNIV PRESS
DOI: 10.1093/gji/ggac195

关键词

Dynamo: theories and simulations; Magnetic field variations through time; Palaeointensity; Reversals: process; time scale; magnetostratigraphy; Time-series analysis

资金

  1. NASA Postdoctoral Program at Goddard Space Flight Center
  2. Summer Undergraduate Research Fellowship (SURF) - Scripps Institution of Oceanography, University of California, San Diego
  3. US Office of Naval Research (ONR) [N00014-21-1-2309]
  4. NSF [grantEAR1953778]
  5. French Agence Nationale de la Recherche [ANR-19-CE31-0019]
  6. Agence Nationale de la Recherche (ANR) [ANR-19-CE31-0019] Funding Source: Agence Nationale de la Recherche (ANR)

向作者/读者索取更多资源

This article explores the feasibility of using machine learning techniques to identify precursors of geomagnetic reversals. Through testing with different models and observational records, it is found that the current techniques are not capable of reliably identifying precursors, mainly due to limited data and low frequency resolution.
It is well known that the axial dipole part of Earth's magnetic field reverses polarity, so that the magnetic North Pole becomes the South Pole and vice versa. The timing of reversals is well documented for the past 160 Myr, but the conditions that lead to a reversal are still not well understood. It is not known if there are reliable 'precursors' of reversals (events that indicate that a reversal is upcoming) or what they might be. We investigate if machine learning (ML) techniques can reliably identify precursors of reversals based on time-series of the axial magnetic dipole field. The basic idea is to train a classifier using segments of time-series of the axial magnetic dipole. This training step requires modification of standard ML techniques to account for the fact that we are interested in rare events-a reversal is unusual, while a non-reversing field is the norm. Without our tweak, the ML classifiers lead to useless predictions. Perhaps even more importantly, the usable observational record is limited to 0-2 Ma and contains only five reversals, necessitating that we determine if the data are even sufficient to reliably train and validate an ML algorithm. To answer these questions we use several ML classifiers (linear/non-linear support vector machines and long short-term memory networks), invoke a hierarchy of numerical models (from simplified models to 3-D geodynamo simulations), and two palaeomagnetic reconstructions (PADM2M and Sint-2000). The performance of the ML classifiers varies across the models and the observational record and we provide evidence that this is not an artefact of the numerics, but rather reflects how 'predictable' a model or observational record is. Studying models of Earth's magnetic field via ML classifiers thus can help with identifying shortcomings or advantages of the various models. For Earth's magnetic field, we conclude that the ability of ML to identify precursors of reversals is limited, largely due to the small amount and low frequency resolution of data, which makes training and subsequent validation nearly impossible. Put simply: the ML techniques we tried are not currently capable of reliably identifying an axial dipole moment (ADM) precursor for geomagnetic reversals. This does not necessarily imply that such a precursor does not exist, and improvements in temporal resolution and length of ADM records may well offer better prospects in the future.

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