Bonhwa KuGwantae KimJae-Kwang AhnJimin LeeHanseok Ko
This letter presents a deep convolutional neural network (CNN) with attention module that improves the performance of the classification of various earthquake events. Addressing all possible earthquake events, including not only microearthquakes and artificial-earthquakes but also large-earthquakes, requires both suitable feature expression and a classifier that can effectively discriminate seismic waveforms under adverse conditions. To robustly classify earthquake events, a deep CNN with an attention module was proposed in raw seismic waveforms. Representative experimental results show that the proposed method provides an effective structure for earthquake events classification and, with the Korean peninsula earthquake database from 2016 to 2018, outperforms previous state-of-the-art methods.
Minkyu LimDong‐Hyun LeeHosung ParkYoseb KangJun-Seok OhJeong‐Sik ParkGil‐Jin JangJi‐Hwan Kim
Xiaohong CaiMing LiHui CaoJingang MaXiaoyan WangXuqiang Zhuang
Manling TianHui DongKuanglu Yu
Yan Cheng則恵 只埜Mengzhu WangQingbao Zhang
Lei LiuWeiqi SongChao ZengXiaohui Yang