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Autori principali: Wang, Xinghao, Liu, Feng, Su, Rui, Wang, Zhihui, Fang, Lihua, Zhou, Lianqing, Bai, Lei, Ouyang, Wanli
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2502.19960
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author Wang, Xinghao
Liu, Feng
Su, Rui
Wang, Zhihui
Fang, Lihua
Zhou, Lianqing
Bai, Lei
Ouyang, Wanli
author_facet Wang, Xinghao
Liu, Feng
Su, Rui
Wang, Zhihui
Fang, Lihua
Zhou, Lianqing
Bai, Lei
Ouyang, Wanli
contents Recent advances in deep learning have revolutionized seismic monitoring, yet developing a foundation model that performs well across multiple complex tasks remains challenging, particularly when dealing with degraded signals or data scarcity. This work presents SeisMoLLM, the first foundation model that utilizes cross-modal transfer for seismic monitoring, to unleash the power of large-scale pre-training from a large language model without requiring direct pre-training on seismic datasets. Through elaborate waveform tokenization and fine-tuning of pre-trained GPT-2 model, SeisMoLLM achieves state-of-the-art performance on the DiTing and STEAD datasets across five critical tasks: back-azimuth estimation, epicentral distance estimation, magnitude estimation, phase picking, and first-motion polarity classification. It attains 36 best results out of 43 task metrics and 12 top scores out of 16 few-shot generalization metrics, with many relative improvements ranging from 10% to 50%. In addition to its superior performance, SeisMoLLM maintains efficiency comparable to or even better than lightweight models in both training and inference. These findings establish SeisMoLLM as a promising foundation model for practical seismic monitoring and highlight cross-modal transfer as an exciting new direction for earthquake studies, showcasing the potential of advanced deep learning techniques to propel seismology research forward.
format Preprint
id arxiv_https___arxiv_org_abs_2502_19960
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SeisMoLLM: Advancing Seismic Monitoring via Cross-modal Transfer with Pre-trained Large Language Model
Wang, Xinghao
Liu, Feng
Su, Rui
Wang, Zhihui
Fang, Lihua
Zhou, Lianqing
Bai, Lei
Ouyang, Wanli
Machine Learning
Recent advances in deep learning have revolutionized seismic monitoring, yet developing a foundation model that performs well across multiple complex tasks remains challenging, particularly when dealing with degraded signals or data scarcity. This work presents SeisMoLLM, the first foundation model that utilizes cross-modal transfer for seismic monitoring, to unleash the power of large-scale pre-training from a large language model without requiring direct pre-training on seismic datasets. Through elaborate waveform tokenization and fine-tuning of pre-trained GPT-2 model, SeisMoLLM achieves state-of-the-art performance on the DiTing and STEAD datasets across five critical tasks: back-azimuth estimation, epicentral distance estimation, magnitude estimation, phase picking, and first-motion polarity classification. It attains 36 best results out of 43 task metrics and 12 top scores out of 16 few-shot generalization metrics, with many relative improvements ranging from 10% to 50%. In addition to its superior performance, SeisMoLLM maintains efficiency comparable to or even better than lightweight models in both training and inference. These findings establish SeisMoLLM as a promising foundation model for practical seismic monitoring and highlight cross-modal transfer as an exciting new direction for earthquake studies, showcasing the potential of advanced deep learning techniques to propel seismology research forward.
title SeisMoLLM: Advancing Seismic Monitoring via Cross-modal Transfer with Pre-trained Large Language Model
topic Machine Learning
url https://arxiv.org/abs/2502.19960