Applying deep learning to teleseismic phase detection and picking: PcP and PKiKP cases

IF 4.2 Artificial Intelligence in Geosciences Pub Date : 2025-06-01 Epub Date: 2025-02-21 DOI:10.1016/j.aiig.2025.100108
Congcong Yuan , Jie Zhang
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Abstract

The availability of a tremendous amount of seismic data demands seismological researchers to analyze seismic phases efficiently. Recently, deep learning algorithms exhibit a powerful capability of detecting and picking on P- and S-wave phases. However, it remains a challenge to effeciently process enormous teleseismic phases, which are crucial to probe Earth's interior structures and their dynamics. In this study, we propose a scheme to detect and pick teleseismic phases, such as seismic phase that reflects off the core-mantle boundary (i.e., PcP) and that reflects off the inner-core boundary (i.e., PKiKP), from a seismic dataset in Japan. The scheme consists of three steps: 1) latent phase traces are truncated from the whole seismogram with theoretical arrival times; 2) latent phases are recognized and evaluated by convolutional neural network (CNN) models; 3) arrivals of good or fair phase are picked with another CNN models. The testing detection result on 7386 seismograms shows that the scheme recognizes 92.15% and 94.13% of PcP and PKiKP phases. The testing picking result has a mean absolute error of 0.0742 s and 0.0636 s for the PcP and PKiKP phases, respectively. These seismograms were processed in just 5 min for phase detection and picking, demonstrating the efficiency of the proposed scheme in automatic teleseismic phase analysis.
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将深度学习应用于远震相位检测和拾取:PcP和PKiKP案例
大量地震资料的可用性要求地震学研究人员高效地分析地震相。最近,深度学习算法在探测和挑选P波和s波相位方面表现出强大的能力。然而,有效地处理巨大的远震相位仍然是一个挑战,而远震相位对于探测地球内部结构及其动力学至关重要。在这项研究中,我们提出了一种从日本地震数据集中检测和提取远震相位的方案,例如从核幔边界反射的地震相位(即PcP)和从内核边界反射的地震相位(即PKiKP)。该方案包括三个步骤:1)从具有理论到达时间的整个地震记录中截断潜相迹;2)利用卷积神经网络(CNN)模型对潜在相位进行识别和评估;3)用另一个CNN模型选择好的或一般的相位到达。7386张地震图的测试检测结果表明,该方案对PcP相位和PKiKP相位的识别率分别为92.15%和94.13%。PcP期和PKiKP期的平均绝对误差分别为0.0742 s和0.0636 s。这些地震记录在5分钟内进行了相位检测和拾取,证明了该方案在自动远震相位分析中的有效性。
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