Machine Learning Interpretability of Outer Radiation Belt Enhancement and Depletion Events

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Abstract

We investigate the response of outer radiation belt electron fluxes to different solar wind and geomagnetic indices using an interpretable machine learning method. We reconstruct the electron flux variation during 19 enhancement and 7 depletion events and demonstrate the feature attribution analysis called SHAP (SHapley Additive exPlanations) on the superposed epoch results for the first time. We find that the intensity and duration of the substorm sequence following an initial dropout determine the overall enhancement or depletion of electron fluxes, while the solar wind pressure drives the initial dropout in both types of events. Further statistical results from a data set with 71 events confirm this and show a significant correlation between the resulting flux levels and the average AL index, indicating that the observed “depletion” event can be more accurately described as a “non-enhancement” event. Our novel SHAP-Enhanced Superposed Epoch Analysis (SHESEA) method can offer insight in various physical systems.

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Ma, D., Bortnik, J., Ma, Q., Hua, M., & Chu, X. (2024). Machine Learning Interpretability of Outer Radiation Belt Enhancement and Depletion Events. Geophysical Research Letters, 51(1). https://doi.org/10.1029/2023GL106049

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