Large-scale and continuous subsurface monitoring using distributed acoustic sensing in urban environments
Abstract/Contents
- Abstract
- This thesis investigates using Distributed Acoustic Sensing (DAS) as a scalable and cost-effective approach for continuous, large-scale monitoring in urban settings. DAS capitalizes on existing telecommunication infrastructure to establish high-resolution seismic recording arrays. The research specifically targets two critical domains: traffic management and near-surface monitoring. The central innovation of this work lies in leveraging moving vehicles as cost-efficient, non-specialized indicators for both traffic and seismic monitoring. This involves tackling various obstacles such as pinpointing the geographical positions of DAS channels, improving the clarity of traffic signals, and overcoming the processing constraints and diminished resolution typical of conventional ambient noise interferometry methods. I first conduct comprehensive field experiments and simulations to characterize vehicle-induced seismic signals, thus providing foundational knowledge for more sophisticated monitoring techniques. Subsequent chapters introduce scalable and precise mapping methods that utilize concurrent onboard GPS and DAS recordings. These methods have proven essential for tasks like fiber interruption localization, enhancing vehicle tracking accuracy, and near-surface characterization. To tackle the issue of degraded signal resolution in urban DAS applications for traffic monitoring, an advanced machine learning algorithm is developed, yielding improved vehicle detection and tracking. Finally, to overcome the limitations of conventional ambient noise interferometry, I present a targeted interferometry approach based on the Kalman filter algorithm. This method enables high-resolution, cost-effective, and time-sensitive characterizations of the near-surface environment, effectively capturing phenomena such as rainfall-induced soil saturation changes. In summary, this research signifies a substantial advancement in the application of DAS technology for urban monitoring, offering solutions that are both state-of-the-art and economically sustainable.
Description
Type of resource | text |
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Form | electronic resource; remote; computer; online resource |
Extent | 1 online resource. |
Place | California |
Place | [Stanford, California] |
Publisher | [Stanford University] |
Copyright date | 2023; ©2023 |
Publication date | 2023; 2023 |
Issuance | monographic |
Language | English |
Creators/Contributors
Author | Yuan, Siyuan |
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Degree supervisor | Biondi, Biondo, 1959- |
Thesis advisor | Biondi, Biondo, 1959- |
Thesis advisor | Clapp, Robert G. (Robert Graham) |
Thesis advisor | Ellsworth, William L |
Thesis advisor | Noh, Hae Young |
Degree committee member | Clapp, Robert G. (Robert Graham) |
Degree committee member | Ellsworth, William L |
Degree committee member | Noh, Hae Young |
Associated with | Stanford Doerr School of Sustainability |
Associated with | Stanford University, Department of Geophysics |
Subjects
Genre | Theses |
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Genre | Text |
Bibliographic information
Statement of responsibility | Siyuan Yuan. |
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Note | Submitted to the Department of Geophysics. |
Thesis | Thesis Ph.D. Stanford University 2023. |
Location | https://purl.stanford.edu/vw024zc4419 |
Access conditions
- Copyright
- © 2023 by Siyuan Yuan
- License
- This work is licensed under a Creative Commons Attribution Non Commercial 3.0 Unported license (CC BY-NC).
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