RCC Structural Deformation and Damage Quantification Using Unmanned Aerial Vehicle Image Correlation Technique
Abstract
:1. Introduction
2. Literature Review
- (a)
- Terrestrial Cameras: terrestrial cameras are mounted on a tripod and they have the capability to continuously acquire the data for longer periods. Different sensors, such as visible range (RGB), laser, thermal and multispectral can be mounted on the same data acquisition platform. Terrestrial cameras and laser scanners to produce 3D models through point clouds can be operated even in varied climatic conditions.
- (b)
- Robot: Robotics can be operated directly on top of the bridge deck to produce high-resolution data sets using sensors, such as RGB, laser, ground penetrating radar (GPR) and multispectral. GPR has a unique capability in exploring the internal core condition of the RCC bridge deck to inspect the further serviceability of the structure.
- (c)
- Unmanned Aerial Vehicle (UAV): UAV/drone operational altitude is low and restricted to height of 400 ft (120 m) as per the guidelines issued by the Director General of Civil Aviation (DGCA), so it can be operated very near to the target object. UAV can acquire high resolution digital, multispectral and thermal imaging datasets along with laser point cloud data to inspect the bridge.
- (a)
- Unmanned/Manned aircraft: Aircraft flying range is above 1 km to 10 km and flies at supersonic speeds. The data acquired at specified speed and altitude generates coarse resolution images of the structure that can actually be used for preparing a rough estimate of a damaged structure during natural calamity. Only high-resolution visible range RGB and Multispectral imaging data acquired through aircraft is considered for damage assessment of a bridge.
- (b)
- Satellite: Satellites are operated at higher altitudes of 10–1000 km, and the revisit time on a particular location is more than 5 days, which may not be available at desired dates. Data sets obtained are of coarser resolution and may contain cloud cover that makes the bridge monitoring a hard task [27].
Objective
3. Methodology
3.1. UAVIC Studies in Laboratory Conditions
3.1.1. Specimen Preparation
3.1.2. Loading Test
3.1.3. Image Acquisition
3.1.4. Image Correlation Using Ncorr via MATLAB
3.1.5. Setting Images
3.1.6. Setting of DIC Parameters
3.1.7. DIC Analysis
3.1.8. Crack Identification and Feature Extraction
3.2. UAVIC Evaluation Studies on Bridge
3.2.1. Bridge Image Acquisition
3.2.2. UAVIC Studies
3.2.3. Damage Quantification
4. Results and Discussions
4.1. Displacements Investigations
4.2. Strain Investigations
4.3. Load-Displacement Plots
4.4. Crack Detection and Parametric Analysis on the Beam
4.5. UAVIC Investigation on Bridge
4.6. Crack Detection and Parametric Analysis on the ROB
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Beam | Length in mm | Width in mm |
---|---|---|
A | 153 | 0.937 |
B | 214 | 1.282 |
C | 178 | 1.147 |
Vehicle Passage | 1 | 2 | 3 | 4 | 5 | 6 | 7 |
---|---|---|---|---|---|---|---|
Deformation (mm) | 2.82 | 1.47 | 3.22 | 3.18 | 1.30 | 2.63 | 0.89 |
Bridge Component | Crack Width in mm | Crack Length in mm |
---|---|---|
(A) Crack in the joint and damage of beam | 1.82 | 583 |
(B) Crack in the deck of the bridge | 2.42 | 467 |
(C) Damage and crack in the pier | 0.96 | 328 |
(E) Crack in the beam and slab joint | 3.28 | 524 |
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Kumarapu, K.; Mesapam, S.; Keesara, V.R.; Shukla, A.K.; Manapragada, N.V.S.K.; Javed, B. RCC Structural Deformation and Damage Quantification Using Unmanned Aerial Vehicle Image Correlation Technique. Appl. Sci. 2022, 12, 6574. https://doi.org/10.3390/app12136574
Kumarapu K, Mesapam S, Keesara VR, Shukla AK, Manapragada NVSK, Javed B. RCC Structural Deformation and Damage Quantification Using Unmanned Aerial Vehicle Image Correlation Technique. Applied Sciences. 2022; 12(13):6574. https://doi.org/10.3390/app12136574
Chicago/Turabian StyleKumarapu, Kumar, Shashi Mesapam, Venkat Reddy Keesara, Anoop Kumar Shukla, Naga Venkata Sai Kumar Manapragada, and Babar Javed. 2022. "RCC Structural Deformation and Damage Quantification Using Unmanned Aerial Vehicle Image Correlation Technique" Applied Sciences 12, no. 13: 6574. https://doi.org/10.3390/app12136574
APA StyleKumarapu, K., Mesapam, S., Keesara, V. R., Shukla, A. K., Manapragada, N. V. S. K., & Javed, B. (2022). RCC Structural Deformation and Damage Quantification Using Unmanned Aerial Vehicle Image Correlation Technique. Applied Sciences, 12(13), 6574. https://doi.org/10.3390/app12136574