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Hybrid SUSD-Based Task Allocation for Heterogeneous Multi-Robot Teams

Shengkang Chen, Tony X. Lin, Said Al‐Abri, Ronald C. Arkin, Fumin Zhang

Year
2023
Citations
9

Abstract

Effective task allocation is an essential component to the coordination of heterogeneous robots. This paper proposes a hybrid task allocation algorithm that improves upon given initial solutions, for example from the popular decentralized market-based allocation algorithm, via a derivative-free optimization strategy called Speeding-Up and Slowing-Down (SUSD). Based on the initial solutions, SUSD performs a search to find an improved task assignment. Unique to our strategy is the ability to apply a gradient-like search to solve a classical integer-programming problem. The proposed strategy outperforms other state-of-the-art algorithms in terms of total task utility and can achieve near optimal solutions in simulation. Experimental results using the Robotarium are also provided.

Keywords

Computer scienceTask (project management)Mathematical optimizationRobotComponent (thermodynamics)Integer programmingInteger (computer science)Linear programmingArtificial intelligenceAlgorithm

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