A Study of Human-Agent Collaboration for Multi-UAV Task Allocation in Dynamic Environments
Ramchurn, Sarvapali D. (University of Southampton) | Fischer, Joel E (University of Nottingham) | Ikuno, Yuki (University of Southampton) | Wu, Feng (University of Science and Technology of China) | Flann, Jack (University of Southampton) | Waldock, Antony (BAE Systems)
We consider a setting where a team of humans oversee the coordination of multiple Unmanned Aerial Vehicles (UAVs) to perform a number of search tasks in dynamic environments that may cause the UAVs to drop out. Hence, we develop a set of multi-UAV supervisory control interfaces and a multi-agent coordination algorithm to support human decision making in this setting. To elucidate the resulting interactional issues, we compare manual and mixed-initiative task allocation in both static and dynamic environments in lab studies with 40 participants and observe that our mixed-initiative system results in lower workloads and better performance in re-planning tasks than one which only involves manual task allocation. Our analysis points to new insights into the way humans appropriate flexible autonomy.
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- New Finding (0.49)
- Research Report
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