Analysis of Dynamic Task Allocation in Multi-Robot Systems
Kristina Lerman, Chris Jones, Aram Galstyan, Maja J Mataric

TL;DR
This paper develops a mathematical model for dynamic task allocation in multi-robot systems that operate without direct communication, analyzing how local observations influence collective behavior and system performance.
Contribution
It introduces a formal stochastic model for emergent coordination algorithms, enabling analysis of their dynamics and performance in unknown environments.
Findings
Model predictions closely match simulation results.
Number of observations significantly affects task allocation accuracy.
Choice of decision function impacts system robustness.
Abstract
Dynamic task allocation is an essential requirement for multi-robot systems operating in unknown dynamic environments. It allows robots to change their behavior in response to environmental changes or actions of other robots in order to improve overall system performance. Emergent coordination algorithms for task allocation that use only local sensing and no direct communication between robots are attractive because they are robust and scalable. However, a lack of formal analysis tools makes emergent coordination algorithms difficult to design. In this paper we present a mathematical model of a general dynamic task allocation mechanism. Robots using this mechanism have to choose between two types of task, and the goal is to achieve a desired task division in the absence of explicit communication and global knowledge. Robots estimate the state of the environment from repeated local…
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Taxonomy
TopicsAdvanced Manufacturing and Logistics Optimization · Control and Dynamics of Mobile Robots · Robotic Path Planning Algorithms
