Decreasing False Alarm Rates in ML-based Solar Flare Prediction using SDO/HMI Data
Varad Deshmukh, Natasha Flyer, Kiera Van Der Sande, Thomas Berger

TL;DR
This paper presents a two-stage machine learning system combining CNN and ERT models to significantly reduce false alarms in solar flare prediction, improving reliability for operational forecasting.
Contribution
The study introduces a novel hyperparameter tuning metric and demonstrates a hybrid architecture that reduces false positives by 48% without major loss in true positives.
Findings
False positive rate reduced by approximately 48%.
True positive rate decreased by approximately 12%.
Improved traditional classification metrics like precision and F1 score.
Abstract
A hybrid two-stage machine learning architecture that addresses the problem of excessive false positives (false alarms) in solar flare prediction systems is investigated. The first stage is a convolutional neural network (CNN) model based on the VGG-16 architecture that extracts features from a temporal stack of consecutive Solar Dynamics Observatory (SDO) Helioseismic and Magnetic Imager (HMI) magnetogram images to produce a flaring probability. The probability of flaring is added to a feature vector derived from the magnetograms to train an extremely randomized trees (ERT) model in the second stage to produce a binary deterministic prediction (flare/no flare) in a 12-hour forecast window. To tune the hyperparameters of the architecture a new evaluation metric is introduced, the "scaled True Skill Statistic". It specifically addresses the large discrepancy between the true positive…
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Taxonomy
TopicsSolar and Space Plasma Dynamics
