Adaptive Workload Allocation for Multi-human Multi-robot Teams for Independent and Homogeneous Tasks
Tamzidul Mina, Shyam Sundar Kannan, Wonse Jo, Byung-Cheol Min

TL;DR
This paper introduces a real-time, adaptive workload allocation framework for multi-human multi-robot teams performing independent, homogeneous tasks, enhancing system robustness and performance amidst changing conditions.
Contribution
It presents a generalized, modular framework for adaptive workload distribution in MH-MR systems, addressing real-time processing and diverse team configurations.
Findings
Effective workload adaptation in changing conditions
Smooth workload transition prevents agent performance issues
Framework scalable to various MH-MR scenarios
Abstract
Multi-human multi-robot (MH-MR) systems have the ability to combine the potential advantages of robotic systems with those of having humans in the loop. Robotic systems contribute precision performance and long operation on repetitive tasks without tiring, while humans in the loop improve situational awareness and enhance decision-making abilities. A system's ability to adapt allocated workload to changing conditions and the performance of each individual (human and robot) during the mission is vital to maintaining overall system performance. Previous works from literature including market-based and optimization approaches have attempted to address the task/workload allocation problem with focus on maximizing the system output without regarding individual agent conditions, lacking in real-time processing and have mostly focused exclusively on multi-robot systems. Given the variety of…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Autonomous Vehicle Technology and Safety · Robotic Path Planning Algorithms
