Japan Geoscience Union Meeting 2021

Presentation information

[J] Oral

S (Solid Earth Sciences ) » S-SS Seismology

[S-SS11] Strong Ground Motion and Earthquake Disaster

Sat. Jun 5, 2021 3:30 PM - 5:00 PM Ch.18 (Zoom Room 18)

convener:Kazuhiro Somei(Geo-Research Institute), Yasuhiro Matsumoto(Kozo Keikaku Engineering), Chairperson:Tomohisa Okazaki(RIKEN Center for Advanced Intelligence Project), Kentaro Emoto(Graduate School of Science, Tohokuk University)

4:45 PM - 5:00 PM

[SSS11-06] Broadband Ground Motion Synthesis Using Wasserstein Interpolation of Acceleration Envelopes

*Tomohisa Okazaki1, Hirotaka Hachiya1,2, Asako Iwaki3, Takahiro Maeda3, Hiroyuki Fujiwara3, Naonori Ueda1 (1.RIKEN Center for Advanced Intelligence Project, 2.Wakayama University, 3.National Research Institute for Earth Science and Disaster Resilience)

Hybrid approaches to broadband (BB) ground motion synthesis combine long-period (LP) and short-period (SP) waveforms calculated by two methods suitable for each period range. They have been applied in research and practice, but it is disadvantageous that simulations are independently carried out under different assumptions, which can lead to incompatible time histories and frequency properties.

This study explores an approach for maintaining consistency between LP and SP components using an empirical relationship of past observation records. We propose a machine learning method that generate SP waveforms from LP waveforms obtained using physics-based simulations. Acceleration envelopes and Fourier amplitude spectra are transformed, and they are combined to produce a broadband waveform. To effectively obtain the relationship of envelopes from limited amount of data, we formulate the problem as the conversion of probability distributions to allow the introduction Wasserstein distance, and embed pairs of LP and SP envelopes into a common latent space to improve the consistency of the entire waveform. An experimental application to the 2008 M7 off Ibaraki earthquake demonstrates that the proposed method exhibits superior performance compared to existing methods and neural network approaches. In particular, the proposed method reproduces global properties in the time domain, which confirms the effectiveness of the embedding approach and the advantage of the Wasserstein distance as a dissimilarity measure of envelopes.