通用深度学习模型,对不同地质背景下的局部距离地震和爆炸进行分类

R. Maguire, Brandon Schmandt, Ruijia Wang, Qingkai Kong, Pedro Sanchez
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引用次数: 0

摘要

虽然准确分类局部距离(小于 250 千米)的地震和爆炸信号仍然是地震台网运行的一项重要任务,但可用地震数据量的不断增加给使用传统震源判别技术的分析人员带来了挑战。近年来,深度学习模型已被证明能有效区分局部距离测量到的低震级地震和爆炸,但这些模型在不同地质环境下的泛化能力如何还不清楚。为了解决区域间的泛化问题,我们对来自美国大陆八个不同地区的三分量地震和爆炸信号的时频表示(scalograms)训练深度学习模型(卷积神经网络 [CNNs])。我们探讨了根据所有地区、个别地区或除一个地区外的所有地区的数据训练模型的情况。我们发现,虽然在单个地区训练的 CNN 模型不一定能在不同环境中很好地泛化,但在包含不同路径覆盖的多个地区训练的模型却能泛化到新的地区,对于来自未见地区的数据集,其台站级准确率高达 90% 或更高。一般来说,基于 CNN 的判别模型明显优于基于未校正 P/S 比(在 10-18 Hz 频段测量)的模型,即使 CNN 模型在完全未见区域的数据上进行测试也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalization of Deep-Learning Models for Classification of Local Distance Earthquakes and Explosions across Various Geologic Settings
Although accurately classifying signals from earthquakes and explosions at local distance (<250 km) remains an important task for seismic network operations, the growing volume of available seismic data presents a challenge for analysts using traditional source discrimination techniques. In recent years, deep-learning models have proven effective at discriminating between low-magnitude earthquakes and explosions measured at local distances, but it is not clear how well these models are capable of generalizing across different geological settings. To address the issue of generalization between regions, we train deep-learning models (convolutional neural networks [CNNs]) on time–frequency representations (scalograms) of three-component earthquake and explosion signals from eight different regions in the continental United States. We explore scenarios where models are trained on data from all regions, individual regions, or all but one region. We find that although CNN models trained on individual regions do not necessarily generalize well across different settings, models trained on multiple regions that include diverse path coverage generalize to new regions, with station-level accuracy of up to 90% or more for data sets from unseen regions. In general, CNN-based discrimination models significantly outperform models based on uncorrected P/S ratio (measured in the 10–18 Hz frequency band), even when CNN models are tested on data from entirely unseen regions.
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