Japan Geoscience Union Meeting 2023

Presentation information

[J] Oral

S (Solid Earth Sciences ) » S-TT Technology & Techniques

[S-TT44] Seismic Big Data Analysis Based on the State-of-the-Art of Bayesian Statistics

Sun. May 21, 2023 10:45 AM - 12:00 PM 301B (International Conference Hall, Makuhari Messe)

convener:Hiromichi Nagao(Earthquake Research Institute, The University of Tokyo), Aitaro Kato(Earthquake Research Institute, the University of Tokyo), Keisuke Yano(The Institute of Statistical Mathematics), Takahiro Shiina(National Institute of Advanced Industrial Science and Technology), Chairperson:Hiromichi Nagao(Earthquake Research Institute, The University of Tokyo), Keisuke Yano(The Institute of Statistical Mathematics), Aitaro Kato(Earthquake Research Institute, the University of Tokyo), Takahiro Shiina(National Institute of Advanced Industrial Science and Technology)

11:45 AM - 12:00 PM

[STT44-05] Instantaneous tracking of earthquake growth with elastogravity signals

★Invited Papers

*Bertrand Rouet-Leduc1, Andrea Licciardi2, Quentin Bletery2, Kevin Juhel2, Jean-Paul Ampuero2 (1.DPRI, Kyoto University, Japan, 2.Géoazur, IRD, France)

Keywords:Earthquake early warning, Prompt elasto-gravity signals, Deep learning

Rapid and reliable estimation of large earthquake magnitude (above 8) is key to mitigating the risks associated with strong shaking and tsunamis. Standard early warning systems based on seismic waves fail to rapidly estimate the size of such large earthquakes. Geodesy-based approaches provide better estimations, but are also subject to large uncertainties and latency associated with the slowness of seismic waves. Recently discovered speed-of-light prompt elastogravity signals (PEGS) have raised hopes that these limitations may be overcome, but have not been tested for operational early warning. Here we show that PEGS can be used in real time to track earthquake growth instantaneously after the event reaches a certain magnitude. We develop a deep learning model that leverages the information carried by PEGS recorded by regional broadband seismometers in Japan before the arrival of seismic waves. After training on a database of synthetic waveforms augmented with empirical noise, we show that the algorithm can instantaneously track an earthquake source time function on real data. Our model unlocks ‘true real-time’ access to the rupture evolution of large earthquakes using a portion of seismograms that is routinely treated as noise, and can be immediately transformative for tsunami early warning.