Publication | Closed Access
The Impact of Human–Automation Collaboration in Decentralized Multiple Unmanned Vehicle Control
75
Citations
21
References
2011
Year
Artificial IntelligenceEngineeringAutonomous Agent SystemIntelligent SystemsUnmanned VehicleAutomated AgentsSystems EngineeringRobot LearningHumanartificial Intelligence CollaborationMultirobot SystemMulti-agent PlanningPath PlanningComputer ScienceMulti-robot TeamAi PlanningAutomationHuman–automation CollaborationResource AllocationRobotics
For future systems that require one or a small team of operators to supervise a network of automated agents, automated planners are critical since they are faster than humans for path planning and resource allocation in multivariate, dynamic, time-pressured environments. However, such planners can be brittle and unable to respond to emergent events. Human operators can aid such systems by bringing their knowledge-based reasoning and experience to bear. Given a decentralized task planner and a goal-based operator interface for a network of unmanned vehicles in a search, track, and neutralize mission, we demonstrate with a human-on-the-loop experiment that humans guiding these decentralized planners improved system performance by up to 50%. However, those tasks that required precise and rapid calculations were not significantly improved with human aid. Thus, there is a shared space in such complex missions for human-automation collaboration.
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