An Efficient Transfer Learning-Based OBS Seismic Phase Picker (OBSPD) Trained on Cascadia Subduction Zone Earthquake Dataset

IF 2.6 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS Seismological Research Letters Pub Date : 2023-11-03 DOI:10.1785/0220230161
Zhangbao Cheng, Yen Joe Tan, Fan Zhang, Pengcheng Zhou, Jian Lin, Jinyu Tian, Xubo Zhang, Caicai Zha
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Abstract

Abstract Earthquake monitoring and many seismological studies depend on seismic phase arrivals. Thus, detecting seismic events and picking the phase arrival times are fundamentally important. In the recent years, seismic phase picking models based on deep learning approaches have been widely developed. These deep learning models can achieve better performances than traditional phase picking methods and improve the quality of phase picking for land-based earthquake monitoring. However, these models might not perform well on data from ocean-bottom seismometers (OBSs), because they are trained exclusively using onshore seismic data and have limited out-of-distribution generalization ability. Nevertheless, there are insufficient labeled OBS phase arrivals dataset to train a deep learning model from scratch. In this study, we developed an automatic phase detection model for OBS data (OBS phase detection [OBSPD]) using the transfer learning approach based on an existing U-GPD model with pretrained weights from a generalized phase detection model feature extraction system. We developed OBSPD with a limited amount of training data (2784 three-component event waveforms) from the Cascadia subduction zone (CSZ) OBS deployments. Our results show that transfer learning can achieve lower model loss with less overfitting compared to when training a model from scratch. Our new OBSPD model outperforms four existing deep learning pickers in terms of phase detection accuracy with smaller arrival time residuals on a test OBS dataset at CSZ, especially for P phases.
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基于Cascadia俯冲带地震数据集训练的高效迁移学习OBS地震相位采集器(OBSPD
地震监测和许多地震学研究都依赖于地震相到达。因此,检测地震事件和选择相位到达时间是至关重要的。近年来,基于深度学习方法的地震相位提取模型得到了广泛的发展。这些深度学习模型比传统的相位采集方法具有更好的性能,提高了地面地震监测的相位采集质量。然而,这些模型在海底地震仪(OBSs)的数据上可能表现不佳,因为它们只使用陆上地震数据进行训练,并且具有有限的分布外泛化能力。然而,没有足够的标记OBS阶段到达数据集来从头开始训练深度学习模型。在本研究中,我们基于现有的U-GPD模型,使用广义相位检测模型特征提取系统的预训练权重,使用迁移学习方法开发了OBS数据的自动相位检测模型(OBS phase detection [OBSPD])。我们利用来自Cascadia俯冲带(CSZ)海底地震仪部署的少量训练数据(2784个三分量事件波形)开发了OBSPD。我们的结果表明,与从头开始训练模型相比,迁移学习可以实现更低的模型损失和更少的过拟合。我们的新OBSPD模型在相位检测精度方面优于现有的四种深度学习拾取器,在CSZ的测试OBS数据集上具有较小的到达时间残差,特别是对于P相位。
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来源期刊
Seismological Research Letters
Seismological Research Letters 地学-地球化学与地球物理
CiteScore
6.60
自引率
12.10%
发文量
239
审稿时长
3 months
期刊介绍: Information not localized
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