A deep learning framework for marine acoustic and seismic monitoring with distributed acoustic sensing
Chun Zhang, Weiqiang Zhu, Barbara A. Romanowicz, Richard M Allen, Kenichi Soga, Yuxin Wu

TL;DR
This paper introduces DASNet, a deep learning framework that automates detection, classification, and localization of diverse marine signals in DAS data, enabling scalable high-resolution marine monitoring.
Contribution
The paper presents DASNet, a semi-supervised deep learning model that processes continuous DAS data for comprehensive marine signal detection and localization, a novel approach in this field.
Findings
Detected over 500,000 marine events across three years.
Successfully identified local earthquakes and T-waves with source azimuths.
Tracked over 400,000 whale calls, revealing seasonal patterns.
Abstract
Distributed Acoustic Sensing (DAS) enables high-resolution and long-duration monitoring of marine acoustic and seismic activity by turning existing fiber-optic cables into dense sensor arrays. However, extracting diverse signals from continuous DAS data remains challenging due to the massive data volumes and signal complexity. Here, we present DASNet, a deep learning framework for automated detection, classification, and arrival-time picking of diverse marine signals in DAS data. The model is trained using a semi-supervised pipeline on continuous recordings and jointly predicts spatiotemporal bounding boxes and segmentation masks for each detected event. Applied to three years of data from the Seafloor Fiber-Optic Array in Monterey Bay (SeaFOAM), DASNet identified over 500,000 events spanning multiple signal categories. For seismic monitoring, the model detects the majority of cataloged…
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Taxonomy
TopicsSeismic Waves and Analysis · Underwater Acoustics Research · Seismology and Earthquake Studies
