Smart detection of subsurface anomalies: concept, validation and applications
Naturally formed and engineering-induced subsurface anomalies (e.g., cavities and sinkholes) jeopardize infrastructure safety and hinder urban sustainability. Here we report a smart sensing method to detect subsurface anomalies based on the physical characteristics extracted from the effective signa...
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sg-ntu-dr.10356-1807082024-10-21T07:08:34Z Smart detection of subsurface anomalies: concept, validation and applications Zhang, Chao Chu, Jian Wu, Wei Poh, Teoh Yaw Lim, Zhu Liang Veeresh, Chepurthy School of Civil and Environmental Engineering Engineering Smart detection Seismic scattering Naturally formed and engineering-induced subsurface anomalies (e.g., cavities and sinkholes) jeopardize infrastructure safety and hinder urban sustainability. Here we report a smart sensing method to detect subsurface anomalies based on the physical characteristics extracted from the effective signals scattered and reflected directly from these anomalies. Potential anomalies at submeter scales can be interpreted based on a sharp variation of anomaly score relative to the background anomaly score, showing the advantage of overcoming subjective uncertainty and biases involved in the traditional geophysical methods. We find that the use of scattered and reflected waves in an intermediate frequency range is well-suited for sensing deep subsurface infrastructure at high resolutions required for civil structures. We also demonstrate that a fast and reliable detection of subsurface anomalies relies solely on the physical characteristics of seismic data in two field cases, promoting geologic hazard forecast and decision-making effectiveness. Ministry of National Development (MND) National Research Foundation (NRF) This research is supported by the Singapore Ministry of National Development and the National Research Foundation, Prime Minister’s Office, under the Cities of Tomorrow R&D Programme (Award No. COTV1-2020-5). 2024-10-21T07:08:33Z 2024-10-21T07:08:33Z 2024 Journal Article Zhang, C., Chu, J., Wu, W., Poh, T. Y., Lim, Z. L. & Veeresh, C. (2024). Smart detection of subsurface anomalies: concept, validation and applications. Tunnelling and Underground Space Technology, 154, 106107-. https://dx.doi.org/10.1016/j.tust.2024.106107 0886-7798 https://hdl.handle.net/10356/180708 10.1016/j.tust.2024.106107 2-s2.0-85204969713 154 106107 en COTV1-2020-5 Tunnelling and Underground Space Technology © 2024 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies. |
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Engineering Smart detection Seismic scattering Zhang, Chao Chu, Jian Wu, Wei Poh, Teoh Yaw Lim, Zhu Liang Veeresh, Chepurthy Smart detection of subsurface anomalies: concept, validation and applications |
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Naturally formed and engineering-induced subsurface anomalies (e.g., cavities and sinkholes) jeopardize infrastructure safety and hinder urban sustainability. Here we report a smart sensing method to detect subsurface anomalies based on the physical characteristics extracted from the effective signals scattered and reflected directly from these anomalies. Potential anomalies at submeter scales can be interpreted based on a sharp variation of anomaly score relative to the background anomaly score, showing the advantage of overcoming subjective uncertainty and biases involved in the traditional geophysical methods. We find that the use of scattered and reflected waves in an intermediate frequency range is well-suited for sensing deep subsurface infrastructure at high resolutions required for civil structures. We also demonstrate that a fast and reliable detection of subsurface anomalies relies solely on the physical characteristics of seismic data in two field cases, promoting geologic hazard forecast and decision-making effectiveness. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Zhang, Chao Chu, Jian Wu, Wei Poh, Teoh Yaw Lim, Zhu Liang Veeresh, Chepurthy |
format |
Article |
author |
Zhang, Chao Chu, Jian Wu, Wei Poh, Teoh Yaw Lim, Zhu Liang Veeresh, Chepurthy |
author_sort |
Zhang, Chao |
title |
Smart detection of subsurface anomalies: concept, validation and applications |
title_short |
Smart detection of subsurface anomalies: concept, validation and applications |
title_full |
Smart detection of subsurface anomalies: concept, validation and applications |
title_fullStr |
Smart detection of subsurface anomalies: concept, validation and applications |
title_full_unstemmed |
Smart detection of subsurface anomalies: concept, validation and applications |
title_sort |
smart detection of subsurface anomalies: concept, validation and applications |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/180708 |
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1814777789450027008 |