New Findings from Explainable SYM-H Forecasting using Gradient Boosting Machines Journal Article uri icon

Overview

abstract

  • In this work, we develop gradient boosting machines (GBMs) for; forecasting the SYM-H index multiple hours ahead using different; combinations of solar wind and interplanetary magnetic field (IMF); parameters, derived parameters, and past SYM-H values. Using Shapley; Additive Explanation (SHAP) values to quantify the contributions from; each input to predictions of the SYM-H index from GBMs, we show that our; predictions are consistent with physical understanding while also; providing insight into the complex relationship between the solar wind; and Earth’s ring current. In particular, we found that feature; contributions vary depending on the storm phase. We also perform a; direct comparison between GBMs and neural networks presented in prior; publications for forecasting the SYM-H index by training, validating,; and testing them on the same data. We find that the GBMs have a; comparable root mean squared error as the best published black-box; neural network schemes.

publication date

  • May 11, 2022

has restriction

  • bronze

Date in CU Experts

  • May 24, 2022 11:10 AM

Full Author List

  • Iong D; Chen Y; Toth G; Zou S; Pulkkinen TI; Ren J; Camporeale E; Gombosi TII

author count

  • 8

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