Model file for Ishikawa et al. "Automatic Detection of Occulted Hard X-ray Flares Using Deep-Learning Methods" in Sol. Phys. (2021)

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Model file for Ishikawa et al. "Automatic Detection of Occulted Hard X-ray Flares Using Deep-Learning Methods" in Sol. Phys. (2021)

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2021

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Abstract

Deep-learning model for occulted hard X-ray flare detection was published in association with the publication Ishikawa et al. "Automatic Detection of Occulted Hard X-ray Flares Using Deep-Learning Methods" in Sol. Phys. (2021). We checked the model file with the Google Colaboratory environment (Python 3.6.9 and Tensorflow 2.4.0).

Description

The file named "model_occulted_flare_classifier.h5" is a Keras model file to detect occulated hard X-ray flares by RHESSI spectrogram data described in Ishikawa et al. 2021. The model file was created with Python 3.6.8, Tensorflow 1.14.0 and Keras 2.2.4.

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Ishikawa et al. "Automatic Detection of Occulted Hard X-ray Flares Using Deep-Learning Methods" in Sol. Phys. (2021).
http://doi.org/10.1007/s11207-021-01780-x

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Ishikawa, Shin-nosuke; Matsumura, Hideaki; Uchiyama, Yasunobu; Glesener, Lindsay. (2021). Model file for Ishikawa et al. "Automatic Detection of Occulted Hard X-ray Flares Using Deep-Learning Methods" in Sol. Phys. (2021). Retrieved from the Data Repository for the University of Minnesota (DRUM), https://doi.org/10.13020/wtbm-2258.
View/Download file
File View/OpenDescriptionSize
model_occulted_flare_classifier.h5Model File366.28 MB
input_data_sample.npyInput test file234.5 KB
readme_edited.txtDescription and Example2.42 KB

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