
SEOULTECH Researchers Develop Autonomous Geological Assessment Tool
To fulfill this challenge, a research team led by Professor Hyungjoon Seo of Seoul National University of Science and Technology (SEOULTECH) developed the Roughness-CANUPO-Dip-Facet (R-C-D-F) method. This ML-powered, multistep approach combines many filtration techniques to remove joint bands while preserving most joint embedment points in the data, leading to excellent accuracy when measuring dip angle and direction. Their paper was made available online on September 11, 2024, and was published in Volume 154 of the journal Tunnelling and Underground Space Technology on December 1, 2024.
The first step of the filtration process consists of a roughness analysis on an input 3D point cloud, taken directly from a rock surface. This step removes minor surface irregularities and noise from the data, preserving continuous lines on the surface but removing joint lines. The second filtration step uses the CANUPO algorithm, which classifies points based on their geometric characteristics and isolates key features, removing even more joint lines. The third filtration step eliminates connecting rock segments based on dip angles, isolating distinct rock formations. Finally, the measurement stage consists of facet segmentation to obtain the dip angle and direction of each section of the rock sample.
The researchers tested the R-C-D-F method on various real tunnel face images, achieving remarkable accuracy rates ranging from 97% to 99.4%. Notably, 100% of joint bands were successfully removed while still preserving 81% of joint embedment points. But the most attractive aspect of this technique was its fully autonomous nature, requiring no human intervention. "By automating the process of filtering and segmenting rock features, it reduces human error and computational inefficiencies, making it ideal for modern infrastructure projects that demand high accuracy and reliability," highlights Prof. Seo.
Overall, the proposed approach could find promising applications across many disciplines of structural and geological engineering. "The R-C-D-F method's integration of ML and deep learning ensures reliable and accurate geological data processing, which can directly improve the safety of large-scale engineering projects like tunnels and underground structures," notes Prof. Seo. "It could also enable the development of smarter and faster geological analysis tools, reducing costs and improving efficiency in industries reliant on subsurface exploration and infrastructure development."
Reference
Title of original paper: R-C-D-F machine learning method to measure for geological structures in 3D point cloud of rock tunnel face
Journal: Tunnelling and Underground Space Technology
DOI: href="" rel="nofollow" 1016/j.2024.10607
About the institute Seoul National University of Science and Technology (SEOULTECH)
Website:
Contact:
Eunhee Lim
82-2-970-9166
[email protected]
SOURCE Seoul National University of Science and Technology (SEOULTECH)

Legal Disclaimer:
MENAFN provides the information “as is” without warranty of any kind. We do not accept any responsibility or liability for the accuracy, content, images, videos, licenses, completeness, legality, or reliability of the information contained in this article. If you have any complaints or copyright issues related to this article, kindly contact the provider above.
Comments
No comment