|国家科技期刊平台
首页|期刊导航|地震研究进展(英文)|Monitoring seismicity in the southern Sichuan Basin using a machine learning workflow

Monitoring seismicity in the southern Sichuan Basin using a machine learning workflowOA北大核心

Monitoring seismicity in the southern Sichuan Basin using a machine learning workflow

英文摘要

Monitoring seismicity in real time provides significant benefits for timely earthquake warning and analyses.In this study,we propose an automatic workflow based on machine learning(ML)to monitor seismicity in the southern Sichuan Basin of China.This workflow includes coherent event detection,phase picking,and earthquake location using three-component data from a seismic network.By combining PhaseNet,we develop an ML-based earthquake location model called PhaseLoc,to conduct real-time monitoring of the local seismicity.The approach allows us to use synthetic samples covering the entire study area to train PhaseLoc,addressing the problems of insufficient data samples,imbalanced data distribution,and unreliable labels when training with observed data.We apply the trained model to observed data recorded in the southern Sichuan Basin,China,between September 2018 and March 2019.The results show that the average differences in latitude,longitude,and depth are 5.7 km,6.1 km,and 2 km,respectively,compared to the reference catalog.PhaseLoc combines all available phase in-formation to make fast and reliable predictions,even if only a few phases are detected and picked.The proposed workflow may help real-time seismic monitoring in other regions as well.

Kang Wang;Jie Zhang;Ji Zhang;Zhangyu Wang;Huiyu Zhu

School of Earth and Space Sciences,University of Science and Technology of China,Hefei,230026,China

Earthquake monitoringMachine learningLocal seismicityGaussian waveformSparse stations

《地震研究进展(英文)》 2024 (001)

59-66 / 8

The authors agree to submit this research to Earthquake Research Advances.We thank the financial support of the National Key R&D Program of China(2021YFC3000701),and the China Seismic Experi-mental Site in Sichuan-Yunnan(CSES-SY)for providing data for this study.We thank Prof.Hongfeng Yang from the Chinese University of Hong Kong for his data and catalog support and thank the EarthX system for its technical support.

10.1016/j.eqrea.2023.100241

评论