Multi-site based earthquake event classification using graph convolution networks

Gwantae Kim, Bonhwa Ku, Hanseok Ko
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引用次数: 1

Abstract

In this paper, we propose a multi-site based earthquake event classification method using graph convolution networks. In the traditional earthquake event classification methods using deep learning, they used single-site observation to estimate seismic event class. However, to achieve robust and accurate earthquake event classification on the seismic observation network, the method using the information from the multi-site observations is needed, instead of using only single-site data. Firstly, our proposed model employs convolution neural networks to extract informative embedding features from the single-site observation. Secondly, graph convolution networks are used to integrate the features from several stations. To evaluate our model, we explore the model structure and the number of stations for ablation study. Finally, our multi-site based model outperforms up to 10 % accuracy and event recall rate compared to single-site based model.
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基于图卷积网络的多点地震事件分类
本文提出了一种基于图卷积网络的多站点地震事件分类方法。在传统的基于深度学习的地震事件分类方法中,他们使用单点观测来估计地震事件的类别。然而,为了在地震观测台网上实现稳健、准确的地震事件分类,需要利用多站点观测信息的方法,而不是只利用单站点数据。首先,我们提出的模型采用卷积神经网络从单点观测中提取信息嵌入特征。其次,利用图卷积网络对多个站点的特征进行整合;为了评估我们的模型,我们探讨了模型的结构和烧蚀研究的台站数量。最后,与基于单站点的模型相比,我们基于多站点的模型的准确率和事件召回率高达10%。
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CiteScore
0.60
自引率
50.00%
发文量
1
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