Road Condition Monitoring Utilizing UAV Photogrammetry Aligned to Principal Curve of Mine Haul Truck Path - Mining, Metallurgy & Exploration (2024)
- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 12
- File Size:
- 2604 KB
- Publication Date:
- Dec 19, 2023
Abstract
Mine haul roads degrade rapidly due to extreme loads on sub-optimal construction materials. Unmanned aerial vehicles
(UAV) are suited to quantify large-area road-network conditions, such as surface roughness, defects, and grade to optimize
remediation of poor conditions and reduce overall costs. Mine haul roads present unique challenges, such as material type
and edge characteristics, to automatic road detection that often fail, requiring manual road input. This research proposes a
new method for analysis using the road center determined by principal curve analysis of a haul truck’s Global Navigation
Satellite System (GNSS) traces; analysis grids were created from this center line. A dense point cloud from UAV photogrammetry
was generated, and multiple linear regression analysis was conducted on each individual grid. The root mean
square error in each grid indicates the surface roughness, and the change of slope between grids indicates the road grade
inconsistencies. This method was applied to 26 road sections, and the results were validated by images taken from the truck
operator’s vantage point. Critical defects were identified including excessive pothole formation, corrugation, depressions
retaining water, and narrowing of travel lane. The results demonstrate this is a valid method of road identification and quantification
of road defects at a mine site.
Citation
APA: (2023) Road Condition Monitoring Utilizing UAV Photogrammetry Aligned to Principal Curve of Mine Haul Truck Path - Mining, Metallurgy & Exploration (2024)
MLA: Road Condition Monitoring Utilizing UAV Photogrammetry Aligned to Principal Curve of Mine Haul Truck Path - Mining, Metallurgy & Exploration (2024). Society for Mining, Metallurgy & Exploration, 2023.