JSAI2023

Presentation information

General Session

General Session » GS-3 Knowledge utilization and sharing

[2B6-GS-3] Knowledge utilization and sharing

Wed. Jun 7, 2023 5:30 PM - 6:50 PM Room B (Civic hall B)

座長:大澤 正彦(日本大学) [現地]

6:10 PM - 6:30 PM

[2B6-GS-3-03] Seismic-phase detection using multiple deep learning models for global and local representations of waveforms

〇Tomoki Tokuda1, Hiromichi Nagao1,2 (1. Earthquake Research Institute, The University of Tokyo, 2. Graduate School of Information Science and Technology, The University of Tokyo)

Keywords:Seismic detection, Deep learning, Convolutional neural network

Recent advances in machine learning technologies have enabled the automatic detection of earthquakes from waveform data. In particular, various state-of-the-art deep-learning methods have been applied to this endeavor. In this study, we proposed and tested a novel phase detection method employing deep learning, which is based on a standard convolutional neural network in a new framework. The novelty of the proposed method is its separate explicit learning strategy for global and local representations of waveforms, which enhances its robustness and flexibility. Prior to modelling the proposed method, we identified local representations of the waveform by the multiple clustering of waveforms, in which the data points were optimally partitioned. Based on this result, we considered a global representation and two local representations of the waveform. Subsequently, different phase detection models were trained for each global and local representation. The overall phase probability was evaluated as a product of the phase probabilities of each model. This additional information on local representations makes the proposed method robust to noise, which is demonstrated by its application to the test data. Furthermore, an application to seismic swarm data demonstrated the robust performance of the proposed method compared with those of other deep learning methods.

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