Rapid Estimation of Single-Station Earthquake Magnitudes with Machine Learning on a Global Scale

被引:0
|
作者
Dybing, Sydney N. [1 ]
Yeck, William L. [2 ]
Cole, Hank M. [2 ]
Melgar, Diego [1 ]
机构
[1] Univ Oregon, Dept Earth Sci, Eugene, OR 97403 USA
[2] US Geol Survey, Geol Hazards Sci Ctr, Golden, CO USA
基金
美国国家航空航天局; 美国国家科学基金会;
关键词
SOURCE INVERSION; NEAR-FIELD; WAVE-FORMS; DEEP;
D O I
10.1785/0120230171
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
The foundation of earthquake monitoring is the ability to rapidly detect, locate, and estimate the size of seismic sources. Earthquake magnitudes are particularly difficult to rapidly characterize because magnitude types are only applicable to specific magnitude ranges, and location errors propagate to substantial magnitude errors. We developed a method for rapid estimation of single-station earthquake magnitudes using raw three-component P waveforms observed at local to teleseismic distances, independent of prior size or location information. We used the MagNet regression model architecture (Mousavi and Beroza, 2020b), which combines convolutional and recurrent neural networks. We trained our model using similar to 2.4 million P-phase arrivals labeled by the authoritative magnitude assigned by the U.S. Geological Survey. We tested input data parameters (e.g., window length) that could affect the performance of our model in near-real-time monitoring applications. At the longest waveform window length of 114 s, our model (Artificial Intelligence Magnitude [AIMag]) is accurate (median estimated magnitude within +/- 0.5 magnitude units from catalog magnitude) between M 2.3 and 7.6. However, magnitudes above M similar to 7 are more underestimated as true magnitude increases. As the windows are shortened down to 1 s, the point at which higher magnitudes begin to be underestimated moves toward lower magnitudes, and the degree of underestimation increases. The over and underestimation of magnitudes for the smallest and largest earthquakes, respectively, are potentially related to the limited number of events in these ranges within the training data, as well as magnitude saturation effects related to not capturing the full source time function of large earthquakes. Importantly, AIMag can determine earthquake magnitudes with individual stations' waveforms without instrument response correction or knowledge of an earthquake's source-station distance. This work may enable monitoring agencies to more rapidly recognize large, potentially tsunamigenic global earthquakes from few stations, allowing for faster event processing and reporting. This is critical for timely warnings for seismic-related hazards.
引用
收藏
页码:1523 / 1538
页数:16
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