A Bootstrapping Convolutional Neural Network Technique for Optimizing Automated Detection of Equatorial Plasma Bubbles by Optical All‐Sky Imagers

dc.contributor.authorDaniel Okoh
dc.contributor.authorClaudio Cesaroni
dc.contributor.authorA. B. Rabiu
dc.contributor.authorK. Shiokawa
dc.contributor.authorYuichi Otsuka
dc.contributor.authorSamuel Ogunjo
dc.contributor.authorAderonke Obafaye
dc.contributor.authorJohn Bosco Habarulema
dc.contributor.authorB. Nava
dc.contributor.authorYenca Migoya‐Orué
dc.contributor.authorPunyawi Jamjareegulgarn
dc.contributor.authorAdeniran Seun
dc.contributor.authorOgechi Adama
dc.contributor.authorGeorge Otieno
dc.contributor.authorJames Ameh
dc.contributor.authorAdero Awuor
dc.contributor.authorPaul Baki
dc.date.accessioned2026-05-08T19:21:29Z
dc.date.issued2025-6-1
dc.description.abstractAbstract Equatorial plasma bubbles (EPBs) disrupt satellite‐based communication and navigation systems, particularly in equatorial regions. Reliable detection and classification of EPBs from all‐sky imager (ASI) images are essential for accurate space weather monitoring and forecasting. This study presents a novel bootstrapping convolutional neural network (CNN) approach to optimize automated EPB detection on ASI images for operational space weather monitoring applications, and overcoming challenges related to image variability and imbalanced data sets. Data used for CNN training were obtained from the optical mesosphere thermosphere imagers ASI installed at the Space Environment Research Laboratory, National Space Research and Development Agency, Abuja during the period from 2015 to 2020. Our method involved training three sub‐models, and aggregating their predictions. The CNN trainings were conducted on three sub‐datasets of 3,000 images each, categorized as “EPB,” “Noisy/Cloudy” or “No EPB.” Three corresponding sub‐models were developed from the CNN trainings. The three sub‐model classifications independently gave prediction accuracies of 98.67%, 98.33%, and 95.83% on a reserved test data set of 600 images. Ensemble models further improved the model prediction accuracies to 99.17% and 99.33% for methods based on the mean of sub‐model probabilities and the mode of sub‐model classifications respectively. Our results indicate that the bootstrapping CNN technique enhanced the EPB detection accuracy, providing a powerful tool for real‐time space weather monitoring applications, and implications for improving operational reliability of satellite‐based navigation and communication in the equatorial region.
dc.identifier.doi10.1029/2024ea004117
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/18071
dc.publisherEarth and Space Science
dc.subjectAtmospheric and Environmental Gas Dynamics
dc.titleA Bootstrapping Convolutional Neural Network Technique for Optimizing Automated Detection of Equatorial Plasma Bubbles by Optical All‐Sky Imagers
dc.typeArticle

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