Zhang Xitong, Reichard-Flynn Will, Zhang Miao, Hirn Matthew, Lin Youzuo
Geophysics Group Earth and Environmental Sciences Division Los Alamos National Laboratory Los Alamos NM USA.
Department of Computational Mathematics, Science and Engineering Michigan State University East Lansing MI USA.
J Geophys Res Solid Earth. 2022 Nov;127(11):e2022JB024401. doi: 10.1029/2022JB024401. Epub 2022 Nov 4.
Accurate earthquake location and magnitude estimation play critical roles in seismology. Recent deep learning frameworks have produced encouraging results on various seismological tasks (e.g., earthquake detection, phase picking, seismic classification, and earthquake early warning). Many existing machine learning earthquake location methods utilize waveform information from a single station. However, multiple stations contain more complete information for earthquake source characterization. Inspired by recent successes in applying graph neural networks (GNNs) in graph-structured data, we develop a Spatiotemporal Graph Neural Network (STGNN) for estimating earthquake locations and magnitudes. Our graph neural network leverages geographical and waveform information from multiple stations to construct graphs automatically and dynamically by adaptive message passing based on graphs' edges. Using a recent graph neural network and a fully convolutional neural network as baselines, we apply STGNN to earthquakes recorded by the Southern California Seismic Network from 2000 to 2019 and earthquakes collected in Oklahoma from 2014 to 2015. STGNN yields more accurate earthquake locations than those obtained by the baseline models and performs comparably in terms of depth and magnitude prediction, though the ability to predict depth and magnitude remains weak for all tested models. Our work demonstrates the potential of using GNNs and multiple stations for better automatic estimation of earthquake epicenters.
精确的地震定位和震级估计在地震学中起着至关重要的作用。最近的深度学习框架在各种地震学任务(如地震检测、震相拾取、地震分类和地震预警)中取得了令人鼓舞的成果。许多现有的机器学习地震定位方法利用单个台站的波形信息。然而,多个台站包含用于地震源特征描述的更完整信息。受近期将图神经网络(GNN)应用于图结构数据取得成功的启发,我们开发了一种用于估计地震位置和震级的时空图神经网络(STGNN)。我们的图神经网络利用多个台站的地理和波形信息,通过基于图边的自适应消息传递自动动态地构建图。以最近的图神经网络和全卷积神经网络作为基线,我们将STGNN应用于2000年至2019年由南加州地震台网记录的地震以及2014年至2015年在俄克拉荷马州收集的地震。尽管所有测试模型预测深度和震级的能力仍然较弱,但STGNN产生的地震定位比基线模型更准确,并且在深度和震级预测方面表现相当。我们的工作展示了使用GNN和多个台站进行更好的地震震中自动估计的潜力。