打开APP
userphoto
未登录

开通VIP,畅享免费电子书等14项超值服

开通VIP
基于深度学习卷积神经网络的地震波形自动分类与识别
The development of efficient, high-precision, and universal automatic waveform pick-up algorithm is more and more important in the background of earthquake big data. The main challenge comes from how to adapt to the classification of different types of seismic events in different regions. In this paper, according to the seismic event-noise classification problem, a convolutional neural network method was used to train the dataset based on 13839 Wenchuan earthquake aftershocks and 8900 new Wenchuan aftershock events were used as the test data set. The training and detection accuracy rates were both over 95%. In the detection of continuous waveforms, the CNN method is superior to the traditional methods of STA/LTA and Fbpicker in precision and recall rate, and can find a large number of manually selected microseismic events that are easily missed. Finally, we use the trained optimal model to identify 8-day continuous waveform data from 441 stations nationwide. CNN detects 7016 waveforms, then we pick up 1380 pairs of P and S arrival times using an automatic picking algorithm, finally the pick-ups were successfully associated with 540 earthquake catalog events. The overall recognition accuracy of events above magnitude 1 was 54% and 80% above magnitude 2, while in some areas such as Sichuan and Xinjiang the detection rate is higher. It is shown that CNN neural network has broad application prospects in the real-time earthquake detection and location.
本站仅提供存储服务,所有内容均由用户发布,如发现有害或侵权内容,请点击举报
打开APP,阅读全文并永久保存 查看更多类似文章
猜你喜欢
类似文章
【热】打开小程序,算一算2024你的财运
Chinese mourn for Wenchuan Earthquake victims
新西兰基督堂市地震分析
英语点津:唐山5.1级地震竟是1976年大地震余震
英语作文:地震 Earthquake
地震(Earthquake)
就在刚才地震了!Earthquake!
更多类似文章 >>
生活服务
热点新闻
分享 收藏 导长图 关注 下载文章
绑定账号成功
后续可登录账号畅享VIP特权!
如果VIP功能使用有故障,
可点击这里联系客服!

联系客服