Detection and classification of sunspots via deep convolutional neural network

Channabasava Chola, J V Biabl Benifa
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引用次数: 4

Abstract

Sunspots are known to be the most prominent feature of the solar photosphere. Solar activities play a vital role in Space weather which greatly affects the Earth's environment. The appearance of sunspots determines the solar activities and being observed from early eighteenth century. In this work, we have implemented a deep learning model which automatically detects sunspots from MDI and HMI image datasets. Proposed model uses Alexnet based deep convolutional networks to generate promising deep hierarchical features and proposed deep learning approach achieved excellent classification accuracies. Also, model has shown the improved result with MDI data set which is equal to 99.71%, 100%, 100%, and 100 for accuracy, precision, recall, and F-score respectively. This is to construct and build robust and reliable event recognition system to monitor solar activities which are crucial to understanding space weather and for physicists it is an aid for their research.

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基于深度卷积神经网络的太阳黑子检测与分类
太阳黑子是太阳光球层最显著的特征。太阳活动在空间天气中起着至关重要的作用,极大地影响着地球的环境。太阳黑子的出现决定了太阳的活动,并从18世纪初开始被观测到。在这项工作中,我们实现了一个深度学习模型,可以自动从MDI和HMI图像数据集中检测太阳黑子。该模型使用基于Alexnet的深度卷积网络生成有前景的深度层次特征,并且所提出的深度学习方法取得了优异的分类精度。在MDI数据集上,模型的准确率、精密度、召回率和F-score分别达到99.71%、100%、100%和100。这是为了构建和建立强大可靠的事件识别系统来监测太阳活动,这对了解空间天气至关重要,对物理学家来说是他们研究的辅助工具。
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