1. Deep Learning Model Size Performance Evaluation for Lightning Whistler Detection on Arase Satellite Dataset.
- Author
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Suarjaya, I Made Agus Dwi, Putri, Desy Purnami Singgih, Tanaka, Yuji, Purnama, Fajar, Bayupati, I Putu Agung, Linawati, Kasahara, Yoshiya, Matsuda, Shoya, Miyoshi, Yoshizumi, and Shinohara, Iku
- Abstract
The plasmasphere within Earth's magnetosphere plays a crucial role in space physics, with its electron density distribution being pivotal and strongly influenced by solar activity. Very Low Frequency (VLF) waves, including whistlers, provide valuable insights into this distribution, making the study of their propagation through the plasmasphere essential for predicting space weather impacts on various technologies. In this study, we evaluate the performance of different deep learning model sizes for lightning whistler detection using the YOLO (You Only Look Once) architecture. To achieve this, we transformed the entirety of raw data from the Arase (ERG) Satellite for August 2017 into 2736 images, which were then used to train the models. Our approach involves exposing the models to spectrogram diagrams—visual representations of the frequency content of signals—derived from the Arase Satellite's WFC (WaveForm Capture) subsystem, with a focus on analyzing whistler-mode plasma waves. We experimented with various model sizes, adjusting epochs, and conducted performance analysis using a partial set of labeled data. The testing phase confirmed the effectiveness of the models, with YOLOv5n emerging as the optimal choice due to its compact size (3.7 MB) and impressive detection speed, making it suitable for resource-constrained applications. Despite challenges such as image quality and the detection of smaller whistlers, YOLOv5n demonstrated commendable accuracy in identifying scenarios with simple shapes, thereby contributing to a deeper understanding of whistlers' impact on Earth's magnetosphere and fulfilling the core objectives of this study. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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