A Safety Warning Algorithm Based on Axis Aligned Bounding Box Method to Prevent Onsite Accidents of Mobile Construction Machineries
Abstract
:1. Introduction
2. Literature Review
3. Research Methodology
3.1. Establishing Warning Rules
3.1.1. Determining Safety Distances
3.1.2. Classify Safety Warning States
- State 1: The head of the machine enters the warning zone
- State 2: The rear of the machine enters the warning zone
3.2. Collision Detection Method
3.2.1. The Bounding Box Methods
3.2.2. A Modified Bounding Box Method
3.3. Position Data Acquisition and Coordinate System Development
3.3.1. Position Data Acquisition
3.3.2. Coordinate System of Risk Area
3.3.3. Coordinates of the Mobile Machinery
3.4. Implementation of Safety Warning Algorithm
3.4.1. Proximity Detection/Collision Warning Analysis
3.4.2. Warning Algorithm Implementation
4. Case Simulation and Validation
4.1. Case Background
4.2. Model Development and Collision Test Results
5. Discussions and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Type | Requirement of Safety Distance | Reference |
---|---|---|
Bulldozer | Keep away from deep ditch, foundation pit or steep slope area for at least 2 m | [45] |
Towed scraper | Distance between two scrapers working together shall be no less than 2 m | [45] |
The distance from edge of new embankment slope shall be no less than 1 m | [45] | |
Wheel loader | The distance from the edge of slope, trench and pit should be more than 1.5 m when unloading | [45] |
Concrete spreader | The distance from other equipment should not be less than 0.6 m | [45] |
Others | Moving machinery from edge of foundation pit shall be no less than 2 m | [46] |
Type | Computation Cost | Compactness |
---|---|---|
AABB | 2 | 3 |
OBB | 4 | 2 |
k-DOP | 3 | 1 |
Bounding Sphere | 1 | 4 |
Tag1_x | Tag1_y | Tag2_x | Tag2_y | Tag3_x | Tag3_y | Tag4_x | Tag4_y | |
---|---|---|---|---|---|---|---|---|
Data (Moving Forward) | 36.63 | 53.92 | 34.68 | 53.58 | 36.14 | 56.70 | 34.19 | 56.36 |
36.76 | 53.18 | 34.81 | 52.84 | 36.27 | 55.96 | 34.32 | 55.62 | |
36.89 | 52.45 | 34.94 | 52.10 | 36.40 | 55.22 | 34.45 | 54.88 | |
37.02 | 51.71 | 35.07 | 51.36 | 36.53 | 54.48 | 34.58 | 54.14 | |
37.15 | 50.97 | 35.20 | 50.63 | 36.66 | 53.75 | 34.71 | 53.40 | |
37.28 | 50.23 | 35.33 | 49.89 | 36.79 | 53.01 | 34.84 | 52.66 | |
37.41 | 49.49 | 35.46 | 49.15 | 36.92 | 52.27 | 34.97 | 51.93 | |
… | … | … | … | … | … | … | … | |
Data (Moving Bacward) | 51.74 | 48.18 | 53.02 | 46.67 | 49.58 | 46.37 | 50.86 | 44.86 |
51.36 | 47.86 | 52.63 | 46.35 | 49.20 | 46.05 | 50.47 | 44.53 | |
50.98 | 47.54 | 52.25 | 46.03 | 48.82 | 45.73 | 50.09 | 44.21 | |
50.59 | 47.22 | 51.87 | 45.70 | 48.43 | 45.41 | 49.71 | 43.89 | |
50.21 | 46.90 | 51.48 | 45.38 | 48.05 | 45.09 | 49.32 | 43.57 | |
49.83 | 46.58 | 51.10 | 45.06 | 47.67 | 44.77 | 48.94 | 43.25 | |
49.45 | 46.26 | 50.72 | 44.74 | 47.29 | 44.44 | 48.56 | 42.93 | |
… | … | … | … | … | … | … |
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Wang, C.C.; Wang, M.; Sun, J.; Mojtahedi, M. A Safety Warning Algorithm Based on Axis Aligned Bounding Box Method to Prevent Onsite Accidents of Mobile Construction Machineries. Sensors 2021, 21, 7075. https://doi.org/10.3390/s21217075
Wang CC, Wang M, Sun J, Mojtahedi M. A Safety Warning Algorithm Based on Axis Aligned Bounding Box Method to Prevent Onsite Accidents of Mobile Construction Machineries. Sensors. 2021; 21(21):7075. https://doi.org/10.3390/s21217075
Chicago/Turabian StyleWang, Cynthia Changxin, Mudan Wang, Jun Sun, and Mohammad Mojtahedi. 2021. "A Safety Warning Algorithm Based on Axis Aligned Bounding Box Method to Prevent Onsite Accidents of Mobile Construction Machineries" Sensors 21, no. 21: 7075. https://doi.org/10.3390/s21217075
APA StyleWang, C. C., Wang, M., Sun, J., & Mojtahedi, M. (2021). A Safety Warning Algorithm Based on Axis Aligned Bounding Box Method to Prevent Onsite Accidents of Mobile Construction Machineries. Sensors, 21(21), 7075. https://doi.org/10.3390/s21217075