Enhanced Potential Field-Based Collision Avoidance in Cluttered Three-Dimensional Urban Environments
Abstract
:1. Introduction
2. Methodologies
2.1. Dynamic and Kinematic Equations
2.2. Quadcopter Control Logic
2.3. Collision Avoidance Algorithm
3. Simulation Studies
3.1. Analysis and Selection of the Key Parameters
3.2. Numerical Simulation Results in an Urban Environment
Parameter | Value | |
---|---|---|
Quacopter’s diameter | 0.6 (m) | |
Quacopter’s nominal speed | 3 (m/s) | |
Quacopter’s mass | m | 0.65 (kg) |
Quadcopter inertia | J | diag() (kg m) |
Gravity constant | g | 9.81 (m/s) |
Rotor inertia | I | (kg m) |
Distance from center to rotors 1 and 2 | l | 0.23 (m) |
Aerodynamic force constant | (N s) | |
Aerodynamic torque constant | (N ms) | |
Sensor’s sensing range | 20 (m) | |
Sensor’s horizontal FOV | 210 (deg) | |
Sensor’s vertical FOV | 70 (deg) | |
Position control gains | 2 | |
0.001 | ||
1 | ||
Attitude control gains | 0.28 | |
0.05 |
Description | Start Position (m) | Goal Position (m) | |
---|---|---|---|
Case 1 | Local minima | ||
Case 2 | GNRON | ||
Case 3 | Complex environment |
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Relative Angle | Rotation Matrix | Remark | |
---|---|---|---|
Horizontal plane | |||
Vertical plane | |||
Parameter | Value |
---|---|
Time interval, | 0.1 (s) |
Attractive gain coefficient, | 0.01 |
Repulsive gain coefficient, | 1 |
Order of relative distance term, | 2 |
Obstacle threshold, | 10 (m) |
Physical collision | 2 (m) |
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Choi, D.; Kim, D.; Lee, K. Enhanced Potential Field-Based Collision Avoidance in Cluttered Three-Dimensional Urban Environments. Appl. Sci. 2021, 11, 11003. https://doi.org/10.3390/app112211003
Choi D, Kim D, Lee K. Enhanced Potential Field-Based Collision Avoidance in Cluttered Three-Dimensional Urban Environments. Applied Sciences. 2021; 11(22):11003. https://doi.org/10.3390/app112211003
Chicago/Turabian StyleChoi, Daegyun, Donghoon Kim, and Kyuman Lee. 2021. "Enhanced Potential Field-Based Collision Avoidance in Cluttered Three-Dimensional Urban Environments" Applied Sciences 11, no. 22: 11003. https://doi.org/10.3390/app112211003
APA StyleChoi, D., Kim, D., & Lee, K. (2021). Enhanced Potential Field-Based Collision Avoidance in Cluttered Three-Dimensional Urban Environments. Applied Sciences, 11(22), 11003. https://doi.org/10.3390/app112211003