Elucidating Earth’s Interior Through Advanced Teleseismic Phase Picking
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Elucidating Earth’s Interior Through Advanced Teleseismic Phase Picking

21.04.2025 TranSpread

How do scientists explore Earth's hidden interior — its crust, mantle, and core? The answer lies in earthquake waves. Like X-rays, these seismic waves travel through and reflect off internal structures, allowing scientists to visualize the planet's interior. By analyzing these waveforms, seismologists can create "B-scans" of structure or "CT scans" of physical properties.

Identifying these reflections in seismic data, however, is complex and time-consuming. Reflected phases can be distorted by structural discontinuities and local heterogeneities, making it easy to mistake noise for real signals. This challenge underscores the need for efficient and accurate automatic phase pickers to handle the vast volume of teleseismic earthquake data, whose phases often reflect off deep structures within the Earth.

A recent study published in KeAi's Artificial Intelligence in Geosciences (KeAi) introduces a new deep learning-based workflow to automatically detect and pick teleseismic phases with high efficiency and accuracy.

"To improve the workflow's performance, we divide it into three parts: phase preparation, detection, and picking," explains leadingco-author Dr. Congcong Yuan, a postdoctoral researcher at Cornell University. "We apply physical constraints during preparation to highlight potential signals. The detection step filters out low-quality data, so that the final picking step can determine arrival times more accurately and without bias."

"This approach allows fast, reliable and robust teleseismic phase processing. "It enables us to extract more meaningful data, helping us better understand the physics and dynamics deep inside the Earth," adds Yuan.

"Yuan and colleagues are collaborating with another research team in teleseismic imaging to apply this method to specific tectonic regions. "The more high-quality phase data we have, the more we can uncover about Earth's inner workings," he says.

"For decades, seismologists have faced the tedious task of processing seismic data," notes co-author Prof. Jie Zhang from the University of Science and Technology of China. "With the rise of deep learning, seismology is reaching a turning point from semi-automatic workflows to truly autonomous systems."

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References

DOI

10.1016/j.aiig.2025.100108

Original Source URL

https://doi.org/10.1016/j.aiig.2025.100108

About Artificial Intelligence in Geosciences

Artificial Intelligence in Geosciences is an open access journal providing an interdisciplinary forum where ideas and solutions related to artificial intelligence and its applications in geosciences can be shared and discussed. To support this discussion, we encourage authors to open source their code, data, and the labels used in AI.

Paper title: Applying deep learning to teleseismic phase detection and picking: PcP and PKiKP cases
Angehängte Dokumente
  • Teleseismic processing scheme is proposed to have three steps: (a) seismic phase preparation for potential signals; (b) seismic phase detection; (c) seismic phase picking.
21.04.2025 TranSpread
Regions: North America, United States
Keywords: Applied science, Artificial Intelligence, Science, Earth Sciences

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