Publication | Closed Access
Mission planning of autonomous UAVs for urban surveillance with evolutionary algorithms
74
Citations
11
References
2013
Year
Unknown Venue
Path PlanningTrajectory PlanningAerial RoboticsUav/path PlanningAerospace EngineeringAutonomous UavsContinuous SurveillanceEngineeringField RoboticsUnmanned SystemGenetic AlgorithmSystems EngineeringEvolutionary AlgorithmsUrban SurveillanceUnmanned VehicleRoboticsUnmanned Aerial SystemsUnmanned Aerial Vehicles
In this paper, a mission planning system is presented that generates mission plans for a group of unmanned aerial vehicles (UAVs) to provide continuous surveillance over an urban area. Given the information of terrain and buildings in the target area, a two-stage approach is employed to solve the problem. In the first stage, a set of camera locations called the vantage set is generated that provides complete coverage of the target area. In the second stage, one or several UAVs are determined to collectively share the vantage set and their individual paths are generated to carry out the continuous surveillance duty. In both stages, evolutionary algorithms (genetic algorithm for vantage set generation and ant colony system for UAV/path planning) are used to search for the optimal solution. During the search, constraints such as the flying capabilities of UAVs and collision avoidance are imposed to guarantee the feasibility of the final result.
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